Skip to content
Exploring Machine Learning, AI, and Data Science

Baruch Lev and Feng Gu on Data Driven Mergers and Why Most Deals Fail

Andy Leonard and Frank La Vigne are joined by experts Baruch Lev and Feng Gu to uncover the complexities and pitfalls of mergers and acquisitions. We’ll discuss the controversial “killer acquisitions” in the pharmaceutical industry, which regulators fear stifle innovation and harm public health.

Our guests will share insights from their upcoming book, “The M&A Failure Trap,” which critiques current acquisition strategies and introduces a unique 10-factor scorecard for assessing potential success. From data analysis on 40,000 mergers over 40 years to the challenges and market trends affecting merger outcomes, we’ll explore why up to 75% of mergers fail and how decision-makers often benefit at the expense of employees and shareholders.

Whether you’re an entrepreneur looking to navigate M&As or a data enthusiast curious about the numbers behind these strategic moves, this episode offers a data-driven look at the forces shaping mergers and their real-world impacts.

Show Notes

The M&A Trap Book Link (no affiliate) https://www.amazon.com/Failure-Trap-Mergers-Acquisitions-Succeed/dp/1394204760

Highlights

00:00 Exploring data science, AI, mergers with experts.

04:43 Extensive data-driven analysis of mergers’ failures.

09:22 Investment bankers pressure companies to finalize acquisitions.

11:15 Managers get bonuses for concluding acquisition deals.

14:26 Global economy affected; star performers leave.

17:32 Mergers often lead to employee departures, layoffs.

20:24 Managed data engineering team during Unisys acquisition.

26:28 Analogies highlight misapplication of causal thinking.

28:58 Complex model reveals hidden variable impact.

31:01 Correlation can mislead; avoid single-focus traps.

37:14 Comprehensive analysis of acquisitions and their impacts.

38:39 Analyzed LinkedIn data on employee turnover trends.

41:50 Creative metric developed for private acquisition premium.

46:01 Acquisitions are widespread, impacting various industries significantly.

52:11 Unique 10-factor acquisition scorecard predicts success.

55:45 Deep dive into mergers and acquisitions data.

Speaker Bios

Baruch Lev is a professor emeritus at NYU Stern School of Business, where he has taught and conducted research on mergers and acquisitions for decades. He worked formerly at UC Berkeley and the University of Chicago. His work has been widely cited in academic and professional circles (over 63,000 Google Scholar citations), and he is a leading authority on corporate finance and valuation.

Feng Gu is a professor of accounting at the University at Buffalo and has extensive experience in analyzing the financial aspects of corporate acquisitions. His research focuses on the economic consequences of corporate decisions and has been published in top-tier academic journals.

Transcript
Speaker:

Welcome back to Data Driven, the podcast where we explore the big

Speaker:

ideas in data science, AI, and all things data

Speaker:

engineering. Today, we're diving into the complex world of

Speaker:

mergers and acquisitions where data meets corporate strategy

Speaker:

and not always in the friendliest way. With us are 2 top tier

Speaker:

experts who know this landscape inside and out, Baruch Lev,

Speaker:

professor emeritus from NYU, and Phong Gu, professor of

Speaker:

accounting at the University of Buffalo. We're going to unpack why

Speaker:

up to 75% of mergers fail and how to spot the ones

Speaker:

that succeed. Buckle up. It's data driven insight at its

Speaker:

finest.

Speaker:

Hello, and welcome to Data Driven, the podcast where we explore the

Speaker:

emerging fields of data science, artificial intelligence, and, of course, data

Speaker:

engineering. Today, we're gonna talk about a branch of, I

Speaker:

guess, applied analytics, where we analyze how

Speaker:

mergers and acquisition data, goes through. And with us, we

Speaker:

have 2 esteemed guests today. It's not every day we have 2 guests.

Speaker:

So I'm gonna read the bio of 1, and Andy will

Speaker:

read the bio of the other guest. With us today is Baruch

Speaker:

Lev, a professor emeritus at NYU Stern

Speaker:

School of Business, where he taught and conducted research on mergers and

Speaker:

acquisitions for decades. He worked formally at

Speaker:

UC Berkeley and University of Chicago. His work has been widely cited

Speaker:

in academic and professional circles,

Speaker:

and with over 63,000 Google Google Scholar

Speaker:

citations. He's a leading authority in corporate finance and valuation.

Speaker:

And also with us is Feng Gu. He's a professor

Speaker:

of accounting at the University of Buffalo and has extensive

Speaker:

experience in analyzing the financial aspects of corporate

Speaker:

acquisitions. His research focuses on the economic

Speaker:

consequences of corporate decisions and has been

Speaker:

published in top tier academic journals. Welcome

Speaker:

gents. Thank you. Thank you for having

Speaker:

us. Yeah. Thank you for the invitation.

Speaker:

Yeah. No problem. We're we're always great to to to have you here. And

Speaker:

and part of our listeners are wondering, hey, I thought this was a data science

Speaker:

podcast. And and I would say that if you are

Speaker:

having an IT career, not just a data career or any career, you are

Speaker:

gonna be impacted at some point along, by a merger and or acquisition.

Speaker:

Sure. And I don't have a lot I don't know about you, Andy.

Speaker:

I don't have a lot of fond memories of them all working out. It's

Speaker:

always been a change, and, you know, change change is always,

Speaker:

brings challenges. Yes. And I'm sure these gentlemen,

Speaker:

study those challenges and have a lot to share with our audience,

Speaker:

and us. You work for a large company in

Speaker:

IT. I own a small boutique consulting

Speaker:

company that that provides data engineering and and and

Speaker:

similar services. So I'm excited to learn what you got going

Speaker:

on. In case someone wants to acquire, my

Speaker:

company. And I'm sure you're keeping an eye on this, Frank,

Speaker:

in case someone wants to merge with yours. Well

Speaker:

and, again, I wanna be clear. The current company I work

Speaker:

for, I joined post IBM acquisition. Right? So all of these horror

Speaker:

stories are actually the worst merger I was ever privy

Speaker:

to was, as an employee, was, well, I guess I can say

Speaker:

it now, the Bankers Trust Deutsche Bank acquisition,

Speaker:

which, Deutsche Bank being a German company,

Speaker:

when they passed out and and Bankers Trust was an American company. When they passed

Speaker:

out the cards announcing the merger or celebrating the merger, the

Speaker:

I speak German, so the English sides called it a merger.

Speaker:

The German side used the word Uber Nemen, which means

Speaker:

takeover. That's yeah. I know just enough Latin to

Speaker:

pick that up. Which was, which I thought was

Speaker:

interesting because that's basically what it was. So to when I talk about my

Speaker:

merger horror stories, I'm not talking about where I am now. This is 20 years

Speaker:

back. And, the other thing as a

Speaker:

customer, when the the the companies

Speaker:

I use have merged, I've not really been a happy customer. I think Sirius

Speaker:

XM, XM Radio was a much better

Speaker:

satellite radio provider than Sirius XM is. And that's just my

Speaker:

opinion. That's not the opinion of anyone else. My wife seems to

Speaker:

enjoy it, but it is what it is. So what really excited me about this

Speaker:

so before our listeners start, like, what the heck are we gonna talk about? These

Speaker:

guys are gonna bring data to the table, and that's why I'm excited to have

Speaker:

them there. So I'm gonna get off my soapbox because people don't wanna hear us

Speaker:

banging on. They wanna hear you guys.

Speaker:

So starting with the data side, we

Speaker:

have probably the largest sample of

Speaker:

mergers and acquisitions ever assembled.

Speaker:

We have a sample of 40,000 mergers and

Speaker:

acquisitions worldwide,

Speaker:

spending over the last 40 years. And

Speaker:

on this huge sample, we

Speaker:

have developed a quite sophisticated

Speaker:

statistical model, multivariate

Speaker:

statistical model with 43 variables

Speaker:

to identify statistically,

Speaker:

the attributes,

Speaker:

the factors that contribute to success

Speaker:

and failure of companies.

Speaker:

Excuse me, of mergers and acquisitions. So, basically,

Speaker:

the entire work that we did, which is summarized in the book, of

Speaker:

course, is heavily data

Speaker:

driven. It's also supported by

Speaker:

other study, which are always

Speaker:

data, driven large sample studies

Speaker:

of specific issues of mergers and acquisitions

Speaker:

that, we didn't examine.

Speaker:

So, we combine all of this

Speaker:

to a set of of

Speaker:

observations and recommendations of

Speaker:

why 70 to 75%

Speaker:

of all mergers fail

Speaker:

fail to achieve sales growth, fail

Speaker:

to achieve synergies in in cost

Speaker:

of sales efficiencies, failed to maintain

Speaker:

the share price of the buying,

Speaker:

companies. It's an amazing number that

Speaker:

surprises most most people who

Speaker:

see it. That that is a large

Speaker:

number, and I'm kinda shocked to learn that. I would have

Speaker:

thought that, you know, it would have been on the positive side of

Speaker:

that that 5050 mark that, that the

Speaker:

mergers and acquisitions succeeded, and there were benefits enjoyed

Speaker:

by all. But it sounds like what you're saying is no about 3

Speaker:

quarters of those fail on some or, you know, some or maybe

Speaker:

all, of those desired outcomes. Yeah. I'm

Speaker:

actually not surprised. I had heard that statistic before and kind of based on

Speaker:

based on my anecdotal kind of personal experience, I think that that sounds reasonable.

Speaker:

But the question I have is if if it if the situation is so

Speaker:

bad, a lot of questions, How do they how do these companies convince their

Speaker:

respective boards to take the buyout? Is it just a,

Speaker:

how did how do they pull that off?

Speaker:

The way to an acquisition is

Speaker:

usually a failure of the acquiring

Speaker:

company. Sales slow

Speaker:

down, earnings turn to

Speaker:

losses, market share is lost,

Speaker:

and everything gets excited,

Speaker:

particularly investors who are, of course, losing money

Speaker:

and influential investors who have a a

Speaker:

big say on company. Directors

Speaker:

are are looking, and the

Speaker:

call gets out of we have to

Speaker:

do something big. And, usually, the

Speaker:

something big is a big acquisition.

Speaker:

And that's how that's how that's the usual

Speaker:

way of getting, to this.

Speaker:

Managers, are optimists.

Speaker:

Lots of psychological studies have shown that

Speaker:

managers are much above average

Speaker:

optimists. Some of them are overoptimists.

Speaker:

They may be they may be aware that many

Speaker:

most, m and a, fail, but they

Speaker:

are convinced that they will make it.

Speaker:

And they are convincing their board of directors and

Speaker:

sometimes even shareholders to, support it.

Speaker:

Yeah. So the persuasion and

Speaker:

the pressure to acquire also come from

Speaker:

frequently, investment bankers,

Speaker:

financial analysts, and consultants. These people, of course,

Speaker:

say, you know, have obtained financial benefits

Speaker:

from, completed deals. They always pressure

Speaker:

the acquiring company to by pointing out, hey. This is a good

Speaker:

deal for you, and we can help you, you know, go through

Speaker:

this and clear all the hurdles and everything will work

Speaker:

out fine. And, so this is really the

Speaker:

best decision for you to make. They're really

Speaker:

play these consultants and investment bankers really play a very

Speaker:

important role in convincing, both sides of the

Speaker:

acquisition to complete the deal as soon as possible.

Speaker:

Gotcha. That sounds like sorry. Go ahead. I

Speaker:

just want to say in conclusion, you know,

Speaker:

some, m and a proposals are being

Speaker:

rejected. Not everything is accepted. Just

Speaker:

recently, an Israeli company

Speaker:

got, an acquisition

Speaker:

proposal from no less than Google for

Speaker:

$23,000,000,000. Goodness. After

Speaker:

after consideration, they, they rejected it. So

Speaker:

not everything is accepted. But

Speaker:

many, many acquisition strongly

Speaker:

supported by the CEO are indeed

Speaker:

accepted. Well, it

Speaker:

sounds like there's financial incentive, for the

Speaker:

people around the process for the process to

Speaker:

conclude? Because I imagine they don't get paid unless the

Speaker:

acquisition goes through. Correct? Yes. And there are

Speaker:

also there are also quite large, incentives

Speaker:

for managers for concluding the deal.

Speaker:

A recent study showed that,

Speaker:

many managers get, acquisition bonuses

Speaker:

between $5,15,000,000.

Speaker:

Got it. And that's for concluding the deal, not

Speaker:

for succeeding, but for just

Speaker:

concluding the deal. Wow. And,

Speaker:

we have we have in the book, we show statistics,

Speaker:

which I've never seen anywhere else, that,

Speaker:

serial acquirers,

Speaker:

their tenure is 4 to 5 years

Speaker:

longer than CEOs that

Speaker:

don't acquire or acquire just few companies.

Speaker:

My guess is that, directors are

Speaker:

somehow satisfied with very active CEO

Speaker:

who try to change the course of the company,

Speaker:

let them acquire our companies, and then they give them,

Speaker:

more time to to somehow

Speaker:

somehow, complete the complete the deal and complete

Speaker:

the integration. But I was,

Speaker:

someone someone just recently asked me, what surprised you most? One

Speaker:

of the things that surprised me most in researching the

Speaker:

book was this 4, 5 year,

Speaker:

10 year edge of serial

Speaker:

acquirer CEOs, irrespective

Speaker:

of the success of the mergers.

Speaker:

Yeah. And this difference of CEO tenure by 4

Speaker:

to 5 years is obtained after we have

Speaker:

controlled for other contributors to CEO tenure, like

Speaker:

corporate performance and other important factors. So in

Speaker:

other words, our conclusion basically says with everything else equal,

Speaker:

if you make a series of acquisitions, your

Speaker:

CEO tenure is going to be extended by 4 to 5

Speaker:

years on average, which is really a

Speaker:

long, long extension. Acquisitions are almost,

Speaker:

tenure insurers or CEOs.

Speaker:

So it sounds like the, the,

Speaker:

incentives are a little bit lopsided.

Speaker:

Yeah. Definitely are from all sides. As Frank mentioned,

Speaker:

the, commission hungry, investment bankers, and

Speaker:

consultants benefit from the deal.

Speaker:

CEOs benefit from, the deal. The only

Speaker:

one who paid the price are the shareholders. And and

Speaker:

many times, employees are being fired.

Speaker:

Customers, suppliers,

Speaker:

suffer. Mergers have an

Speaker:

overall effect on the entire economy

Speaker:

on the Which I think this. Yeah. Which I think, like, begs the question,

Speaker:

like, if you play this out long enough,

Speaker:

more people lose than win. And, like, what's the effect of this in

Speaker:

the global economy? Because a lot of during times of

Speaker:

uncertainty, a lot of the star performers leave because they're not sure

Speaker:

what's gonna happen to them. Yeah. Right? Because usually

Speaker:

usually, the the acquiring company tends to keep more of their people.

Speaker:

What and and and I think that's probably a different game if, you know, if

Speaker:

a if an £800 gorilla buys a small start up. I think that's one type

Speaker:

of dynamic. But if you have kind of these 2 industry

Speaker:

titans that buy each other, right, something more

Speaker:

akin to Deutsche Bank and Bankers Trust, right,

Speaker:

there's probably a lot of because they see each one of them sees

Speaker:

sees each other well, one side sees itself as a peer and the other

Speaker:

sees it as superior itself as superior. And that's gotta lead

Speaker:

to all kinds of weird personal interdynamics.

Speaker:

Yeah. You're perfectly right. I

Speaker:

mean, acquisition of large

Speaker:

targets relative to the size of the acquiring

Speaker:

company are almost, a recipe for

Speaker:

failure. We analyze in the book the examples,

Speaker:

several years ago of Sprint acquiring

Speaker:

Nextel. That's the 3rd and the

Speaker:

5th, at the at the time. The 3rd and the 5th,

Speaker:

wireless operators. This was they

Speaker:

were about the same size. Sprint was a little

Speaker:

larger. This was an unmitigated,

Speaker:

disaster, the whole thing. They

Speaker:

they completely failed in in,

Speaker:

merging the employees.

Speaker:

They even they even kept the separate headquarters of

Speaker:

the 2 companies and the separate operating

Speaker:

systems. Customers will ask, do you want to

Speaker:

join the operating system of Nextel or

Speaker:

Sprint? I mean, huge churn,

Speaker:

huge desertion of customers,

Speaker:

and then the whole thing, collapsed.

Speaker:

Yeah. Acquisition of large

Speaker:

targets are very, very difficult to

Speaker:

integrate. And you indicated most of the reasons, with your

Speaker:

example of Deutsche Bank. Right. Right. And I'm a former

Speaker:

Nextel customer. Same. And I was not

Speaker:

I think I think the Sprint acquisition could have been worse. But if that's your

Speaker:

metric, it could have been worse as from a customer's point of view. Yeah.

Speaker:

I I suppose based on the numbers you're telling me, it could have been worse.

Speaker:

It sounds like a pretty good pretty soft pretty safe outcome.

Speaker:

I'm doing the low bar symbol. If you're watching the video, you could see that.

Speaker:

But I'm the bar is down here for could have been worse.

Speaker:

Frank, you asked about how this type of deals may

Speaker:

affect employees of the target versus the acquiring company.

Speaker:

I I think it's a great question. In the research for this

Speaker:

book, we spent a lot of time looking into how

Speaker:

acquisition deals may affect, employees.

Speaker:

And we did look at, the reaction from the target

Speaker:

company's employees, and we find that as soon as the news of

Speaker:

mergers acquisition comes out, a growing number

Speaker:

of target company's employees decide to leave the company. And

Speaker:

this happened even before the merger, gets

Speaker:

completed. So they learn from their experience

Speaker:

or maybe from your experience involved in this 2 large bank merger

Speaker:

that the target employees always get, you

Speaker:

know, relatively unfair share in the post

Speaker:

acquisition termination, for the purpose of

Speaker:

creating synergies, cost savings, and so on. So

Speaker:

on average, mergers acquisitions have not been

Speaker:

friendly to employees. We're documenting one chapter of our

Speaker:

books, the loss of job positions on

Speaker:

average is about 5 to 7%

Speaker:

of the combined entities workforce, which is a

Speaker:

significant number. Yeah. You know, it sounds a little low

Speaker:

when you put it that way. 5 to 7% doesn't sound like a lot. But

Speaker:

I can imagine, you know, in these, you know, in in Frank's

Speaker:

Bank, acquisition scenario.

Speaker:

Yeah. That's, you know, that's across thousands of

Speaker:

employees. Yeah. That can be a large number of

Speaker:

people. Well, there was also the rock stars. You know?

Speaker:

Yeah. I don't know how it is now, but back then, you know, Wall Street

Speaker:

was very aggressive about getting you know, they would basically go to the top

Speaker:

trader at, let's say, BT Bankers Trust, and say, hey.

Speaker:

We know you're feeling a bit uncertain now. Why don't you have a conversation with

Speaker:

us? Right? And you can you you'll make more you'll make,

Speaker:

like, 20% more or twice as much and bring anyone you want over

Speaker:

to. Right? So the I suspect the numbers are actually higher,

Speaker:

but the published numbers in terms of layoffs are probably 5 to

Speaker:

7%. But I think the star performers,

Speaker:

I think you kinda lose the star performers almost right away. Right?

Speaker:

Yeah. Yeah. You're you're perfectly right. That that's what

Speaker:

economists call moral hazard, which

Speaker:

means the employees employees you lose. It's not

Speaker:

just a matter of numbers. You lose the best

Speaker:

employees, those with the best alternative

Speaker:

outside, and you are left with those without

Speaker:

any or very attractive alternatives. So the

Speaker:

degradation of the work workforce is much

Speaker:

more serious than just the numbers. Yeah. Yeah. You

Speaker:

know, I have an experience like that too. I I just, for some reason,

Speaker:

it escaped me earlier, but I was a manager

Speaker:

at Unisys, and I was managing the, the data

Speaker:

engineering team. We called it the ETL for extract,

Speaker:

transform, and load, team. There were about 40 people who

Speaker:

were a combination of full time workers and

Speaker:

then an extended collection of subcontractors.

Speaker:

And we went through a merger and I'll spill the beans on this one too

Speaker:

with Molina Healthcare that was headquartered in,

Speaker:

out in California. And

Speaker:

we had some of that. In fact, my my boss who was a

Speaker:

director, he was a fantastic example of this,

Speaker:

definitely a high performer, published 5 books,

Speaker:

a known entity in the data field, and just an excellent,

Speaker:

leader in my opinion. In

Speaker:

the ramp up to the merger,

Speaker:

or it actually was an acquisition. In the ramp up to that, he

Speaker:

when he got wind of it, he began putting out feelers,

Speaker:

for, you know, making a move to another company. And eventually,

Speaker:

he did. And this was excuse me. His move, him

Speaker:

leaving was a huge hit to the company, a

Speaker:

huge loss. And he did this months before the deal

Speaker:

was concluded, like a full quarter ahead of time. And does that I'm

Speaker:

curious. Does that count in the 5 to 7%? Would his

Speaker:

leaving count in that, or would you would it be post acquisition?

Speaker:

In in some cases, it it is included. In other

Speaker:

cases, it it may not be included. It all depends on the

Speaker:

relative timing of acquisition announcement versus k. The

Speaker:

fiscal year end. Because as you probably know,

Speaker:

companies don't disclose the number of employees all the time. I

Speaker:

think right now, they, you know, provide this number once a year in

Speaker:

their annual report. So there's always some discrepancy,

Speaker:

in the number of in the exact number of employees, you know,

Speaker:

between fiscal year end and, the announcement of the

Speaker:

acquisition. Gotcha. But on average, it should be, you know,

Speaker:

around that number. You mentioned the importance of

Speaker:

losing key talent. Frank also made the key point here. We

Speaker:

completely agree with you. Actually, in one of the chapters in your

Speaker:

book, we have a graph showing, clear

Speaker:

evidence, supporting this effect of

Speaker:

losing talent. We document that after the acquisition is

Speaker:

completed, 2 to 3 years down the road, there is a

Speaker:

clear pattern of declining employee productivity.

Speaker:

So that's normally a sign of losing key talent.

Speaker:

You know, you know, you have lost the most important human capital

Speaker:

component of your combined workforce, and there's no way,

Speaker:

your workforce productivity is gonna be as strong as they used to

Speaker:

be. So that's clearly a consequence,

Speaker:

on the on the employee side after mergers, acquisitions are

Speaker:

completed. So I wanna mention we're recording this on the 18th

Speaker:

October 2024, and the book is

Speaker:

named the m and a, m ampersand a,

Speaker:

failure trap. And the subtitle is why most

Speaker:

mergers and acquisitions fail and how the few succeed.

Speaker:

And that book is due out according to Amazon today.

Speaker:

They're projecting November 15th. So a little less than a

Speaker:

month from now is when that book is due to be available. Is that accurate

Speaker:

as far as you know? Yes. Excellent.

Speaker:

Now I'm gonna buy the book. So I wanna know more.

Speaker:

Thank you. Thank you, William. Yes. We have one say

Speaker:

say 1. Yes. We

Speaker:

made it. Make it 2.

Speaker:

Your order is going to be the most special one because it's the first one.

Speaker:

And, and since you bought the book, you can all, you can

Speaker:

also give us, high recommendation.

Speaker:

Okay. As for And we'll do that. Yeah. Yeah. Well, both Frank and I, you

Speaker:

may not know this, but Frank and I are published. We've written I Frank, you've

Speaker:

written a couple. Right? Couple 3?

Speaker:

3. 3. Yeah. Mhmm. And I've been involved

Speaker:

either as the sole author or a member of a team for 14.

Speaker:

But I started way before Frank to be fair. That's a great

Speaker:

number. Well, it warms my

Speaker:

heart to hear smart people say that, but I have to share. I

Speaker:

have to share that it has way more to do with insomnia than

Speaker:

intelligence. Just just so you know.

Speaker:

That's even more incredible.

Speaker:

I I recall holding, my my youngest is

Speaker:

17 years old now. But when he was a baby, I did

Speaker:

that year. I wrote 2 at the same time. I just wrote chapters in a

Speaker:

book on a team, just a few chapters, but I'll never do that again.

Speaker:

And I haven't since. But I was holding him and had, you know,

Speaker:

my arm had his head in my arm here and holding the bottle, feeding

Speaker:

him at, like, 2 AM. And I'm typing on the laptop with

Speaker:

my other hand. True story.

Speaker:

That's quite a story. Yeah. This looks like an an amazing

Speaker:

book. I've yeah. I'm a data, you know, a data weenie, being a

Speaker:

data engineer, and I've worked around financial data of all my career.

Speaker:

What we did at Unisys was Medicaid, driven data.

Speaker:

And so you get a lot of finance in there. So we get it you

Speaker:

know, we dabbled in that part of it, and there's just so much financial

Speaker:

data out there. And I've seen so many ways to analyze it

Speaker:

and then ways to, you know, not intentionally,

Speaker:

but misanalyze it. You you look at the data,

Speaker:

an old story intentionally and intentionally. Well, I imagine there's some

Speaker:

intent. I was trying to be nice, Frank. But

Speaker:

I have an old story that I share with data engineers. It's

Speaker:

not, you know, it's not a real life story, but it's an analogy of

Speaker:

the misapplication of thinking that sometimes goes along

Speaker:

with this. It's kind of a, you know, getting the cart before the horse or

Speaker:

miss you know, misunderstanding cause and effect. And

Speaker:

the analogy that I use is, if you analyze

Speaker:

the altitudes of aircraft in flight, you

Speaker:

will find that the altitudes drop as they near

Speaker:

an output sorry, an output, an airport, and everybody says,

Speaker:

well, duh. And I'm like, so one conclusion

Speaker:

you could draw from that is in placing airports, someone

Speaker:

did an analysis of this data and said, where the craft are

Speaker:

lowest, we'll build an airport there. And we all know that's not

Speaker:

true. You know? But Yeah. Yeah. That happens. That kind of thinking

Speaker:

happens a lot in analysis. And I'm wondering if that

Speaker:

kind of mistaken analysis, if mistaken cause and effect

Speaker:

plays into some of the thinking early on. Is

Speaker:

that any of that leading to the 75%

Speaker:

failure or failure to achieve result rate?

Speaker:

There are lots of studies that are done by particularly done by,

Speaker:

consultants, and they are based on,

Speaker:

simple correlations. For example,

Speaker:

companies, high on the ranking of,

Speaker:

ESG, made it through the COVID

Speaker:

disaster better than, others. Gotcha.

Speaker:

I, with a group of, other researchers,

Speaker:

rather than looking at just the correlation between

Speaker:

ESG and success, we used a big

Speaker:

model that looked at, that had

Speaker:

representation of the industry, other

Speaker:

variables there. Turns out that,

Speaker:

most of these high up on the ranking of,

Speaker:

ESG, were high-tech companies.

Speaker:

They were extreme they were extremely successful as we

Speaker:

know, many of them. Yeah. And this,

Speaker:

of course, was reflected in share prices and profits

Speaker:

and others. And they also had the means

Speaker:

to contribute to the community and do other things

Speaker:

that those who rank companies on on ESG

Speaker:

like. So this is a this is a

Speaker:

clear example in statistics of the

Speaker:

missing correlated variable. The variable

Speaker:

that that really went in was the

Speaker:

industry of, of, this. And and and these

Speaker:

these, people who just ran the simple correlation,

Speaker:

missed it. That's why we built we built a

Speaker:

humongous model of 43 variables

Speaker:

that attempts to take everything into account.

Speaker:

And then when when one variable

Speaker:

indicates success or failure, for example, in your

Speaker:

case of Deutsche Bank, we have a variable

Speaker:

of foreign acquisition. This variable

Speaker:

comes out after the estimation with a negative

Speaker:

coefficient, meaning it detracts. All the

Speaker:

all other things equal, it detracts from the acquisition,

Speaker:

success. So we can say with with,

Speaker:

fair certainty that,

Speaker:

this is indeed a contributing factor because we accounted

Speaker:

for, for most of the others. Yeah.

Speaker:

Yeah. Brooke is absolutely right about, the special care we

Speaker:

take to ensure that we're not just documenting simple

Speaker:

correlation. We're actually, you know, the identifying

Speaker:

the cause and effect relationship, In most

Speaker:

of all performance related variables, we

Speaker:

make very careful adjustment for industry average

Speaker:

performance, at the same time. So this removes a

Speaker:

lot of confounding factors from our analysis and gives

Speaker:

us a lot of confidence in the validity of our results.

Speaker:

That makes perfect sense. And I can see, and

Speaker:

you've got the word trap in the title of your book. I can see the

Speaker:

trap of, you know, making

Speaker:

a correlation, which is a valid thing. It's a valid point in my example

Speaker:

about the planes and the airports. It's a valid example.

Speaker:

Apparently, you know, what you're sharing with me is you're seeing this, and somebody just

Speaker:

picking up and focusing on a single correlation

Speaker:

and making that the driving metric. And

Speaker:

that that makes perfect sense. And I as you were explaining that,

Speaker:

both of you, I thought of, books I've read

Speaker:

about Warren Buffett's, and his partner, and I can't

Speaker:

nobody remembers his well, it's Charlie. Charlie Munger. Charlie Munger. Right.

Speaker:

Him and Charlie work together, and they look at the fundamentals. And they

Speaker:

just over and over again, they just pour through probably all

Speaker:

of the things that y'all are recommending, you know, for

Speaker:

people who are interested in a merger or an acquisition. You probably recommended

Speaker:

the same stuff. It's, you know, the fundamentals of

Speaker:

what makes a business, you know, stable. And as you

Speaker:

mentioned, Baruch, about, Deutsche Bank, that

Speaker:

foreign acquisitions number, that's not something I would have thought of. But,

Speaker:

you know, if it's stored in a data table somewhere, then I'd I'd look at

Speaker:

the data, of course. Mhmm. But it's not I'm not a business mind.

Speaker:

I am a I'm an engineer, for better or worse. As someone who

Speaker:

lived through it, like, there definitely was a lot of disconnect between American business

Speaker:

culture and German business culture. Like, it was a very That makes sense. It was

Speaker:

I mean, it was a massive disconnect. You know? Yeah. The joke we had at

Speaker:

the time, I think Chrysler was bought by Mercedes or Daimler Group that year.

Speaker:

Daimler. Around that same time. And the joke was, thank God that that happened

Speaker:

because we would be the biggest cross Atlantic disaster.

Speaker:

You know, everybody was so focused on we were a distant

Speaker:

second compared to what's going on there. And that, I mean, if you Chrysler's never

Speaker:

really recovered from that. Well, the the joke I heard about that

Speaker:

is, you know, how do they pronounce Daimler Chrysler in Germany?

Speaker:

And it was they call it Daimler. Yeah. It's slightly Chrysler is slightly

Speaker:

yeah. It's true, though. Like and, you know, one card says take over, and the

Speaker:

other side of the card in English says merger. Right? Like, it's it's it's,

Speaker:

you know, a lot of people had a good laugh at

Speaker:

that, but I mean, there was a lot of truth to that. And also too,

Speaker:

like, there's a funny meme going around about this, where it was a

Speaker:

professor basically saying a 100% of the people who don't understand

Speaker:

the difference between causation and correlation will die.

Speaker:

That's a good meme. Yes. I'll have to dig it up and and reshare

Speaker:

it. This was this was,

Speaker:

many, many years ago, and I took it to University of

Speaker:

Chicago, a statistics course. One of the

Speaker:

first example in the first class was,

Speaker:

the instructor showing a very high correlation between

Speaker:

lung cancer and living in,

Speaker:

Arizona. No way. Of course of

Speaker:

course, the correlation is there, but that's not the causation.

Speaker:

Arizona's weather is very good for the lungs. And that's

Speaker:

why lung patients are going to a

Speaker:

result. Oh. So, the causation is

Speaker:

exactly the opposite direction than what the

Speaker:

correlation seems to show. Yeah. His his next

Speaker:

example is that more people die in hospitals than at

Speaker:

home, which means that which means that hospitals

Speaker:

are extremely dangerous to people. I have to try to

Speaker:

avoid try to avoid them. That's those are

Speaker:

really good examples. And I I one of the examples I read a

Speaker:

long time ago, I was gonna say it was from the it may have been

Speaker:

from World War 2, but I'm not a 100% positive of that.

Speaker:

But there were aircraft engaged in combat,

Speaker:

and they wanted to reinforce aircraft to make them survive, you

Speaker:

know, the engagements better. And since they were

Speaker:

pointing out, the bullet holes are showing up in these patterns, and they

Speaker:

noticed that, you know, there's some here and there's some that we need to reinforce

Speaker:

those areas. And someone thankfully pointed out that, wait, these planes

Speaker:

are making it back. We need to put the reinforcement where

Speaker:

the where the bullet holes are not. You know? So

Speaker:

yeah. Survivor bias. Right? I think that's That's yeah. Yeah. That's

Speaker:

it. That's true. But, yeah, great examples.

Speaker:

So you have to be careful with analyzing data,

Speaker:

particularly in our case, and that's

Speaker:

straight, into the topic of your,

Speaker:

of your, podcast. Mhmm.

Speaker:

I let I let, Feng briefly

Speaker:

describe the many databases sources

Speaker:

that we use and converge,

Speaker:

to get this kind of a sample and statistical model.

Speaker:

Yeah. Yeah. So this is, really, the most

Speaker:

important part about how we did our research to write this

Speaker:

book. Everything, as Brooke mentioned earlier, is data driven.

Speaker:

Our main conclusions are supported by, you know,

Speaker:

analysis using large sample, not just a couple of,

Speaker:

case studies, some anecdotal evidence. No. To reach

Speaker:

that level, we pull data

Speaker:

from a large number of sources starting

Speaker:

from a mainstream mergers acquisition database,

Speaker:

which gives a lot of details about both the acquiring company and

Speaker:

a target company, the time of the announcement,

Speaker:

the terms of the deal, and other interesting

Speaker:

details like exactly what the the acquiring company CEO

Speaker:

said about, his or her expectations

Speaker:

for the forthcoming acquisition and so on. So we

Speaker:

use that as the starting point to,

Speaker:

collect as much data as needed. As Brooke mentioned,

Speaker:

you know, we try to avoid simple correlation kind

Speaker:

of scenario. So, in addition to industry,

Speaker:

level adjustment, we also look at entire

Speaker:

history of the acquiring company and the target company, you know,

Speaker:

3 to 5 years before they get to the point of making a

Speaker:

deal. Try to understand the circumstances of the acquisition.

Speaker:

And then that is completed by

Speaker:

using financial statement data, which is obtained

Speaker:

from the company's financial statements, across multiple

Speaker:

years, both before the acquisition and after the acquisition.

Speaker:

Of course, stock price, information plays a huge role in

Speaker:

understanding, both investors' immediate

Speaker:

reaction to the acquisition news, and the performance

Speaker:

of the combined entity after the acquisition is

Speaker:

completed over several years down the road. Not just a couple of

Speaker:

months, not just 1 year. We actually track, 3 to 4

Speaker:

years after the acquisition is completed in

Speaker:

order to obtain, a more robust and a

Speaker:

consistent view of how the value of the company has been

Speaker:

affected by the acquisition, is that value creation or

Speaker:

value destruction? Alright. I also mentioned earlier

Speaker:

about, you know, employee turnover. You asked you

Speaker:

made a lot of good points about how mergers acquisition may

Speaker:

affect, employees, not just everyday employee, but also

Speaker:

key talent, of each organization. So

Speaker:

we obtained very detailed employee turnover data

Speaker:

from a database that is, I think, based

Speaker:

on LinkedIn, information. So the original source is

Speaker:

LinkedIn, which is probably, the most

Speaker:

comprehensive database nowadays on employee

Speaker:

turnover, very detailed real time employee turnover, not

Speaker:

just, you know, once a quarter, once a year kind of information.

Speaker:

So, we had very detailed,

Speaker:

you know, in details a very detailed data

Speaker:

on the trend of employee turnover. We look at it month by

Speaker:

month to see exactly, how employees

Speaker:

decide to stay or leave, once

Speaker:

the merger news, comes out. So that gives

Speaker:

you a snapshot of, the variety of databases we

Speaker:

use, to, you know, conduct our analysis

Speaker:

and then to provide our evidence. It's it's really a very,

Speaker:

very comprehensive process. But you mentioned

Speaker:

LinkedIn, and, I'm pretty sure the grain

Speaker:

of their, to and from dates of employment, That

Speaker:

that is a monthly drain that that they store that data in. That's

Speaker:

something a data engineer would pick up on. But I I

Speaker:

love the way you're describing how you acquired your data

Speaker:

and, you know, in that it was a very

Speaker:

macro process. You were looking at as many companies as you could

Speaker:

find. I like that part of it. I like the time span that

Speaker:

you applied going 3 to 4 years after the merger acquisition

Speaker:

occurred. It it really reminds me I mean, I'm more excited about

Speaker:

reading the book now because it reminds me of the business books that

Speaker:

I learned the most from. And I I won't mention the other books,

Speaker:

but there's only a handful of them that take that approach.

Speaker:

And I I think it bodes well for the success of your book.

Speaker:

So I'm I'm curious how, if how

Speaker:

and if you, encountered data

Speaker:

that you either decided was out of bounds?

Speaker:

Did you did you have limits on that? Did you run into

Speaker:

any data quality issues?

Speaker:

Yeah. In some cases, because we require the post

Speaker:

acquisition performance information to be available for

Speaker:

3 to 4 years after the acquisition. You know,

Speaker:

some companies don't survive that long. Actually, we have seen

Speaker:

cases where the acquiring company later on, became

Speaker:

too weak and eventually being acquired by other company.

Speaker:

So those cases were probably not fully captured.

Speaker:

We also don't have full information on some of the

Speaker:

private targets. We don't know everything about their

Speaker:

performance, before the acquisition like sales,

Speaker:

profitability, and so on. And, of course, these private targets

Speaker:

don't even have stock price information. So you

Speaker:

can't see how investors react, the investor of the

Speaker:

target company reacts to the news of acquisition. You can't even

Speaker:

measure, this frequently used metric called,

Speaker:

acquisition premium. You know, in in case of, a publicly

Speaker:

traded company acquiring another publicly traded company, you

Speaker:

can easily measure this acquisition premium

Speaker:

by comparing the stock price of the target before

Speaker:

the acquisition use, with the deal,

Speaker:

the the the acquisition price that the acquiring company decides to pay.

Speaker:

But in the case of a private target, you really cannot do that

Speaker:

because, you know, they don't have stock treated, on the open

Speaker:

market. So we had to be creative. Brooke

Speaker:

and I developed a measure relating the acquisition price

Speaker:

to the sales number of the target, which

Speaker:

is actually very useful information because this

Speaker:

allows us to get around this private target issue and

Speaker:

make the metric much more comparable. And we

Speaker:

actually developed a lot of insights from using this, different

Speaker:

measure of acquisition premium. Cool.

Speaker:

That's interesting. That's interesting. I like the fact that you take a data

Speaker:

driven approach to this. Right? Because you listen to Bloomberg or whatever, they always

Speaker:

show the rah rah. Look how great this merger is

Speaker:

gonna be. It makes sense in this point of view. And if you're lucky,

Speaker:

maybe they'll spend 10 seconds on, like, the detractors of it and things like that.

Speaker:

But, you know, looking at this data all up, like,

Speaker:

it it seems that and also think, too, the other thing to

Speaker:

double click on is, if it's a private company, it's probably

Speaker:

going to be way smaller. So I think a bigger fish eating a smaller fish

Speaker:

is less likely to have indigestion, so to speak.

Speaker:

Whereas if 2 big fish eat each other,

Speaker:

there there's a lot of territorial fighting.

Speaker:

Yeah. That's that's exactly, what Brooke mentioned earlier.

Speaker:

Acquisition of a larger target is much more difficult to succeed

Speaker:

because the integration process can become very contentious.

Speaker:

Fight of egos and, a lot of, you

Speaker:

know, emotional issues can get into the way to

Speaker:

prevent the integration to be fully successful.

Speaker:

Right. That Right. That makes sense. And it it gives me hope as a,

Speaker:

you know, as a smaller company that maybe one day someone will come

Speaker:

along. And I keep up with a touch of newsletters on this, not

Speaker:

not a lot. I really didn't start looking into it until we started approaching,

Speaker:

the 10 year mark. And one of the things that

Speaker:

shocked me was the size of of companies.

Speaker:

And and when I talk about the size, I mean, how small

Speaker:

companies are, revenue wise. I mean,

Speaker:

I I saw one newsletter that was talking that a

Speaker:

I don't know how big of a segment this is for targets of

Speaker:

acquisition, but they were half a1000000 to a1000000 and a half in gross

Speaker:

sales. And that was shocking to me. I was like, I would be thinking they

Speaker:

were looking at 10, 20,000,000, you know, size companies.

Speaker:

But according to this one newsletter, it

Speaker:

was a hot thing, you know, going after companies that that size

Speaker:

in revenue. And I was shocked. Can you

Speaker:

still hear me? Yeah. I can still hear you. No problem. We you

Speaker:

disappeared a little on the video, but Yeah. Because I I I got the

Speaker:

phone call. No. I wonder. But if you if you can hear

Speaker:

me, that's that's okay. Yeah. That's good. We can hear you. Strong.

Speaker:

Yeah. Yeah. Yeah. So so speaking of small

Speaker:

acquisitions, what you said is exactly chewing

Speaker:

some specialty sectors. Like, in our book, we mentioned

Speaker:

large pharmaceutical companies acquiring much, much

Speaker:

smaller, biotech firms in order to beef up their

Speaker:

product pipeline. You know, the smaller size of

Speaker:

this target is really misleading, you know, when you mentioned

Speaker:

sales because, these are basically start up companies

Speaker:

and they focus on developing technology.

Speaker:

Especially if you look at the earnings, many of them don't have profit for

Speaker:

decades. But that doesn't mean they're not valuable. We

Speaker:

actually have some cases showing that a large pharmaceutical

Speaker:

companies are often willing to pay a very high premium to

Speaker:

acquire these, startup biotech firms because they see the value

Speaker:

there. So, you know, acquisitions coming all color

Speaker:

and shades. It's it's a huge phenomenon no matter

Speaker:

what type of industry you look at, not just in tech industries. If you

Speaker:

look at some of the highly matured industry like food,

Speaker:

energy, Every year, you see large and small

Speaker:

deals all the time. So that's that's what really, you know,

Speaker:

interest Brooke and I when we decide to,

Speaker:

write a book on this topic because it's ubiquitous

Speaker:

and affects everybody, not just shareholders, affects

Speaker:

employees. In some cases, affects consumers,

Speaker:

customers as well because, you know, a merged company

Speaker:

may decide to increase price in order to show,

Speaker:

the value of the acquisition. Right? Or decrease their

Speaker:

services or downgrade their services. Move one

Speaker:

of the levers on the seesaw there. Yeah. Yeah.

Speaker:

Yeah. We have we have, on this point, we have

Speaker:

a a brief chapter in the book, titled

Speaker:

killer acquisitions. And these are the cases.

Speaker:

Yeah. And we give examples. These are the cases in which

Speaker:

the acquisition is made, basically,

Speaker:

to kill the target in this case too. I've heard of

Speaker:

that. Yeah. Yeah. The most the most probably the most

Speaker:

the most famous case is Visa,

Speaker:

trying to acquire Visa Visa debit,

Speaker:

not Visa credit. Visa debit, which has

Speaker:

a huge market share. I think they have 70% of,

Speaker:

all the all the US market in this case. And here

Speaker:

comes, a small start up, which

Speaker:

is much more efficient in obtaining data,

Speaker:

linking to customers and things like this. Mhmm.

Speaker:

And they, they try to, they try to

Speaker:

acquire this company, with the with

Speaker:

the clear it was. It it came out in an email from the

Speaker:

CEO with a clear intention to basically,

Speaker:

terminate the, the product. The whole

Speaker:

thing the whole thing was litigated by Department of

Speaker:

Justice and then Visa retreated.

Speaker:

But, we quote a study on the pharmaceutical

Speaker:

industry, a very, very in-depth,

Speaker:

study that, that

Speaker:

track the products of the acquired company

Speaker:

match with the products of the buying,

Speaker:

company, they concluded about 70%

Speaker:

of acquisition in the pharmaceutical industry,

Speaker:

killer acquisitions. Because if you look after

Speaker:

the acquisition, all of a sudden, you see that the product

Speaker:

of the of the target disappears.

Speaker:

And Gotcha. What are what are regulators' thoughts on that?

Speaker:

Like, I imagine that Very, very negative.

Speaker:

Very negative. In this case, of course, of pharmaceuticals, it

Speaker:

affects health of people. Right. Yeah. It

Speaker:

it harms it harms, innovation.

Speaker:

And, this this is this is an interesting chapter.

Speaker:

Killer acquisitions. I'm so looking forward on

Speaker:

its own. Right? I'm I'm definitely looking forward to this.

Speaker:

November 18th, you say? It's 15th. 15th. 15th, 15th. November

Speaker:

15th, according to Amazon. Oh, no. Actually, now it just changed.

Speaker:

I am not making this up. 13th is what I'm seeing now. It's nice. Oh,

Speaker:

nice. Okay. 3 to 6. I maybe I misread it before. I thought you said

Speaker:

13, but it says 13 now. That's the, the date given by the

Speaker:

publisher. Yeah. So the the book is now being,

Speaker:

I believe, produced in the last, phase of

Speaker:

production. And then at the end of the month, we'll leave the warehouse. And

Speaker:

around 13th November, it will be available for shipping. Yeah.

Speaker:

Very cool. And then What I'll do what I'll do is I

Speaker:

will put the link to the Amazon, page for

Speaker:

the book. I'll put that on a calendar note and schedule it for, like, 5

Speaker:

AM or something on 13th. And so I can go over and buy it right

Speaker:

away. You you you really wanna be the first one to order. I

Speaker:

well, I won't order it, but I'll buy it first once it's once it's released.

Speaker:

I would I don't do the preorder so often because and what I'll do is

Speaker:

I'll check probably on 10th to see if it's available by Kindle because I

Speaker:

know sometimes they send those out a little earlier. Oh, yeah. That's true. And, yeah,

Speaker:

I'll grab it then for sure. But, yeah, those If you're going to buy

Speaker:

it, what are you going to do with the baby? No. That's true.

Speaker:

That's a good thought. I don't I don't think the baby's a baby anymore.

Speaker:

No. He's he's driving now. So

Speaker:

that's a good good point, though, Baruch. Thanks. Thanks for reminding me. I need

Speaker:

to stay on top of that sort of stuff, and I need all the help

Speaker:

I could get. Yeah. We think we

Speaker:

ran out of time for questions, but that's fine. I think this was an exciting

Speaker:

conversation that I think explains a lot of what we're seeing in in

Speaker:

our careers where we we start one company. You're also starting to see a

Speaker:

pattern of, you know, let's say Microsoft buying LinkedIn. LinkedIn has

Speaker:

largely been left alone. Yeah. Yeah. Yeah.

Speaker:

Well, they were doing a lot right to start with. Right. Right. Right.

Speaker:

Right. I think that's that's an interesting thing is that, you know,

Speaker:

smart companies, they know if it's if it's big enough and it's doing the right

Speaker:

thing on its own Mhmm. Leave them alone. Yeah. That's that's

Speaker:

that's the story of Google and YouTube. Yeah.

Speaker:

Yeah. Yeah. Yeah. Yeah. I'm here in the country. I I live out in

Speaker:

the woods in Virginia, and we say if it ain't broke, don't fix it.

Speaker:

Yeah. But on on the other hand May I may I

Speaker:

mention one thing that, didn't come up with, in

Speaker:

the discussion? We developed in this

Speaker:

book and with about a large chapter to

Speaker:

it something which I think is really unique,

Speaker:

and that's a a 10 factor

Speaker:

scorecard for acquisitions. Nice.

Speaker:

Everyone knows that, lending decisions, credit

Speaker:

card decisions, largely made by looking at

Speaker:

at, the credit scores of people,

Speaker:

we developed, based on the 10 most

Speaker:

influential variables of our model,

Speaker:

we developed a very easy to use,

Speaker:

friendly to use scorecard that, you

Speaker:

can you can before the acquisition, you

Speaker:

can get a a a the likelihood

Speaker:

of success of this acquisition, a percentage,

Speaker:

which will indicate the likelihood of success.

Speaker:

I guess that this would be very useful, both

Speaker:

to managers in somehow early

Speaker:

screening of several acquisition candidates

Speaker:

and to, investors who are

Speaker:

often asked to vote on acquisitions without

Speaker:

any information. Mhmm. So this

Speaker:

this, acquisition scope, is something

Speaker:

which is, really unique to our book. Yeah.

Speaker:

Yeah. And I would say as a entrepreneur who, you know, wouldn't

Speaker:

mind somebody sweeping in and acquiring the company, this could

Speaker:

help me improve my score. Yes. You know, make me a more

Speaker:

attractive target for acquisition. Yep. You know, I'm not not saying

Speaker:

any of my customers listen. I'm not selling. Yeah. But,

Speaker:

well, we'll let you know if that happens. But the, but,

Speaker:

yeah, I mean, it's a an I think all around, that's just great.

Speaker:

And I look again, one more reason to look forward to the book coming out.

Speaker:

Awesome. Cool. Well, this has been a great yeah. Yeah. This is

Speaker:

great. I'm I'm really glad we got into this, and you've answered a lot of

Speaker:

my questions about how acquisitions get

Speaker:

approved, who wins, and who loses. Usually, it's the employees and the

Speaker:

customers, and and who wins. And turns

Speaker:

out that the people calling the shots are the winners. Funny how that works. I

Speaker:

know it technically speaking, it's a correlation. But

Speaker:

I see what you did there, Frank. You see what I did there? Where can

Speaker:

people find out more about the book? Do you have a does the web the

Speaker:

book have a website, or do you guys have LinkedIn

Speaker:

or anything? Not yet. Maybe maybe

Speaker:

maybe we should, create it. Okay. Yeah. Amazon

Speaker:

Amazon gives, a short

Speaker:

description of the book. Okay. Mhmm.

Speaker:

And and the endorsement. We have some great endorsement,

Speaker:

about this book. And, yeah. But may maybe the

Speaker:

first, place to go is really Amazon and get

Speaker:

the description of the book. Awesome. It is the

Speaker:

m ampersandamanda failure trap.

Speaker:

That's Got it. We'll make sure to put a link in the show notes.

Speaker:

And anything else, Andy? No, sir.

Speaker:

Alright. Well, with that, well, let's And that's a wrap for today's episode

Speaker:

of data driven. We hope you enjoyed this deep dive into the

Speaker:

data behind mergers and acquisitions, whether it's a friendly merger or

Speaker:

an Uber name and take over. A huge thank you to our

Speaker:

guests, Baruch Lev and Foam Gu, for their fascinating

Speaker:

insights. If you've ever wondered why so many mergers

Speaker:

fail, now you know data doesn't lie. Be sure to check out

Speaker:

their upcoming book, the m and a failure trap, for even more

Speaker:

data driven revelations. As always, thanks for tuning

Speaker:

in. Don't forget to subscribe, leave a review, and

Speaker:

join us next time for more data centric discussions.

Speaker:

Cheers.

About the author, Frank

Frank La Vigne is a software engineer and UX geek who saw the light about Data Science at an internal Microsoft Data Science Summit in 2016. Now, he wants to share his passion for the Data Arts with the world.

He blogs regularly at FranksWorld.com and has a YouTube channel called Frank's World TV. (www.FranksWorld.TV). Frank has extensive experience in web and application development. He is also an expert in mobile and tablet engineering. You can find him on Twitter at @tableteer.