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Economic Rockstar

Connecting Brilliant Minds in Economics and Finance

093: Arthur Charpentier on Freakonometrics, Machine Learning and Big Data

July 7, 2016 by Frank

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093: Arthur Charpentier on Freakonometrics, Machine Learning and Big Data

Arthur Charpentier is currently Assistant Professor at the Faculty of Economics at Université de Rennes I.Arthur Charpentier Economic Rockstar

Professor Charpentier’s teaching activities include Economics of Uncertainty, Modelling Natural Catastrophes, Nonlinear Econometrics, Multivariate Data Analysis, Advanced Techniques in Portfolio Management and Probability and Statistics.

Arthur’s research interests include copula theory, extreme values with applications in finance and insurance, option pricing, actuarial science and statistics of insurance, risk measures, capital allocation and diversification.

Arthur describes his blog ‘freakonometrics’ as an open lab-notebook experiment which can be found at freakonometrics.hypotheses.org/

Arthur completed a PhD Thesis in Mathematics (Statistics) at University of Leuven and a Masters degree in Mathematics applied to economics at University Paris IX Dauphine.

Economics:

In this episode, Arthur mentions: econometrics, significance tests, t-tests, p-value, confidence level, variables, big data, in-sample tests, out 0f sample tests, copula theory, linear models, non-linear models, machine learning and artificial intelligence.

Economists:

In this episode, Arthur mentions: Josh Angrist and Steve Pischke.

Links:

  • Freakonometrics: www.freakonometrics.hypothesis.org
  • Tensorflow: www.tensorflow.org
  • Journal of Machine Learning Research: www.jmlr.org

Books:

  • Mastering ‘Metrics: The Path from Cause to Effect by Josh Angrist and Steve Pishcke
  • Mostly Harmless Econometrics by Josh Angrist and Steve Pishcke
  • Mathématiques De L’assurance Non-Vie by Arthur Charpentier
  • Computational Actuarial Science with R by Arthur Charpentier

 

Podcast Episodes:

022: Josh Angrist on Taking the Con Out of Econometrics – Kung Fu Style

Coffee

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056: Campbell Harvey on Improving Significance Tests, the Importance of Positive Skew and the Future of Blockchain

October 28, 2015 by Frank

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056: Campbell Harvey on Improving Significance Tests, the Importance of Positive Skew and the Future of Blockchain

Campbell R. Harvey is Professor of Finance at the Fuqua School of Business at Duke University and a Research Campbell HarveyAssociate of the National Bureau of Economic Research in Cambridge, Massachusetts. He served as Editor of The Journal of Finance from 2006-2012 and is President-elect of the American Finance Association.

Professor Harvey obtained his doctorate at the University of Chicago in business finance. He has served on the faculties of the Stockholm School of Economics, the Helsinki School of Economics, and the Booth School of Business at the University of Chicago. He has also been a visiting scholar at the Board of Governors of the Federal Reserve System.

Campbell received the 2014 Reader’s Choice Award for the best paper published in the Financial Analysts Journal and the 2015 prize for the best paper published in the Journal of Portfolio Management. His recent work on evaluating trading strategies has won best paper awards.

Campbell’s research interests include statistical methods, risk management, asset allocation, real assets and cryptocurrencies. He is the Investment Strategy Advisor to the Man Group plc, the world’s largest, publicly listed, global hedge fund.

Economics:

In this interview, Campbell mentions: t-statistics, significance tests, trading strategies, investment premium, beta, correlation, standard deviation, confidence interval, P-value, Bonferroni multiple testing method, Type I error, Type II error, probability, normal distribution, optimal portfolio, volatility, expected returns, portfolio, pay-off, skew, over-fitting, regularisation, Efficient Market Hypothesis, Fractal Markets, stock market anomalies, Straw Man Model, momentum effect, mis-pricing and outliers.

Economists:

In this interview, Campbell mentions: Nassim Taleb, Benoit Mandlebrot, Peter Edgar, Yan Liu and Eugene Fama.

In this episode you will learn:

  • why it’s important to use t-statistics and significance tests and how it can be improved.
  • about the very simple idea Professor Campbell Harvey applies to his statistical modelling to improve the robustness of his tests.
  • why it’s wrong to use 2 standard deviations to have 95% confidence when running many tests.
  • about ‘Significant’, the XKCD cartoon that illustrates the vulnerability of statistical significance testing.
  • do green jelly beans really cause acne? How significance tests can mislead with a fluke.
  • how a trading strategy based upon picking a portfolio of shares based upon the first letter of a ticker symbol showed that those tickers that began with the letter A outperformed other stocks.
  • how testing multiple times is effectively data mining and what should be done about it.
  • about the meaning of 95% confidence and 5% level of significance.
  • what a p-value is and why we ant it to be as small as possible.
  • if it’s important for the finance and economics profession to look at how other sciences are applying testing methods?
  • whether we need a tougher standard to lower the possibility of false discoveries?
  • if there is a chance of a fluke finding and why we should apply the Bonferroni multiple testing method solve this?
  • about the decay signature of the Higgs Boson and whether it is just background noise.
  • whether the findings of many published academic peer-reviewed papers are wrong.
  • about Type I and Type II errors and their trade-off.
  • about All Trials’ mission to make all randomised control trials made public.
  • the problems when measuring and using volatility in asset returns.
  • why the level of skew in a distribution must play more of an important role in risk management and portfolio selection.
  • why Taleb’s Black Swan only looks at one side of the distribution – the negative side, and why we must also look at the positive side.
  • how applying ‘regularization’ to portfolio selection avoids ‘over-fitting’ the data so that unexpected future outcomes can be considered.
  • about the efficient market hypothesis and the 316 anomalies that have been published to refute this hypothesis.
  • why the best traders are in Asia and how insider activity makes them so.
  • about the rise of crypto currencies and Bitcoin and why schools across US universities are introducing modules on it.
  • what is blockchain and why its is safe.
  • about the bank’s idea of creating a permission blockchain.

The Problem with Significance Testing and How to Solve It

If you’re trying to see if a variable Y is associated with a variable in a significant way, we usually think of looking at that correlation and determining whether you’re 95% confident that you’ve got it right. Usually what that means is that you’re 2 standard deviations away from zero. So, zero would be there’s no relation.

It turns out that that is perfectly acceptable if we’re looking at one correlation between Y and X. However, if it’s not X, it’s X1 you try. You try X2. You try X3, you try … X100. You try 100 different things. Then the criteria of using 2 standard deviations to have 95% confidence is just plain wrong.

The reason why this is wrong, is that when you’re running 100 tests, there is going to be a high probability that something will turn up that’s 2 standard deviations from zero just by chance.

The ‘Jelly Bean’ cartoon by XKCD called ‘Significant’ illustrates how testing a hypothesis can become misleading when conducting a significance test. The hypothesis being tested here is whether jelly beans causes acne.

A randomised control trial is ‘conducted’ by scientists. This is done where, say we have 50 people with jelly beans and 50 people with no jelly beans and we count the acne. And what basically happens is that there is no significance. So the scientists don’t achieve the 95% and conclude that there is no relation between jelly beans and acne.

However, the cartoon further illustrates what happens when the color of each jelly bean is tested to see if a particular color causes acne. 20 additional randomised control trials are conducted. The cartoon shows that the link between the Red Jelly Bean and acne is insignificant. Blue Jelly Bean – insignificant. Until you get to the last jelly bean, the 20th, which is the Green Jelly Bean. They find that there is a significant relation between Green Jelly Beans and acne. The final frame in the cartoon is a headline saying ‘Green Jelly Beans Linked to Acne’.

So, if you do 20 trials, one of those is likely to show up as significant using the standard criteria and it’s a fluke.

“The idea of my research is that we need to raise the bar that 2 standard deviations is no longer – that 2 sigma is no longer – something that should be considered. We need to go much higher.” – Professor Campbell Harvey

http://imgs.xkcd.com/comics/significant.png

The Bonferroni Multiple Testing Method

When we say that there is 95% confidence, we are saying that there is a 5% chance that the finding is a fluke. The 5% is called the p-value. What you would like is for that p-value to be as small as possible. You want as small as possible probability that the finding is a fluke. So the usual p-value for a single test with just X and Y for 5%, would imply 2 standard deviations. When you do multiple tests, you need more than 2 standard deviations from zero. If there is a chance of a fluke finding, then we should apply the Bonferroni multiple testing method solve this.

What the Bonferroni does is a simple correction. What it says is ‘you discover a p-value which is, say, 0.004 and you multiply by the number of things or X’s you’ve tried, which is, say, X1 to X100. All of a sudden, your p-value transforms to 0.4 or 40%. That means there is a 40% chance that in repeated trials that this thing you’ve identified, say X57, is a fluke. So when you use this adjustment, you discard that variable.

Quotes by Professor Campbell Harvey in Episode 56 of the Economic Rockstar Podcast:

In the practice of finance, some investment manager goes to a client and shows a great strategy and looks amazing. But they don’t tell the client or potential client that they tried 499 other possibilities and this is the only one out of 500 that worked – Professor Campbell Harvey. 

“Over half of what’s published in empirical asset pricing is probably incorrect” – Professor Campbell Harvey

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“The problem with volatility is that it is a symmetric measure, that if you’re way above the average that contributes to the same volatility as if you’re way below the average” – Professor Campbell Harvey

“I’ve being pushing for the last 15 years to reform the way that we do our portfolio analysis, our standard models, to have the skew play a role.” – Professor Campbell Harvey

“It’s also a fact that it’s really hard to find any asset return that adheres to a normal distribution. If it does, it is very unusual.” – Professor Campbell Harvey

“What we want in economics and finance is repeatability.” – Professor Campbell Harvey

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“I believe, just as Gene Fama believes, that markets are inefficient.” – Professor Campbell Harvey

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“Blockchain provides a way to give unprecedented security. You’re immune effectively from this hacking.”

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Books:

  • The New York Times Dictionary of Money and Investing: The Essential A-to-Z Guide to the Language of the New Market by Campbell Harvey and Gretchen Morgenson
  • The Black Swan by Nassim Taleb
  • The Ascent of Money by Neil Ferguson

Papers:

  • Evaluating Trading Strategies. by Campbell Harvey and Yan Lui
  • Where are the World’s Best Analysts? Campbell Harvey, Sam Radnor, Khalil Mohammed and William Ferreira
  • Conditional Skewness in Asset Pricing Tests. Campbell Harvey and Akhtar Siddique, Journal of Finance 55, (2000): 1263-1295. (P56)

Other Resources:

  • Garden of Econ podcast
  • Hypertextual Finance Glossary – Over 8,000 Entries and 18,000 Hyperlinks: The largest financial glossary on the Internet
  • The New York Times Dictionary of Money and Investing: The Essential A-to-Z Guide to the Language of the New Market by Campbell Harvey and Gretchen Morgenson

Websites:

  • www.alltrials.net

Where to Find Campbell: 

Website: Duke University

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022: Josh Angrist on Taking the Con Out of Econometrics – Kung Fu Style

March 5, 2015 by Frank

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022: Josh Angrist on Taking the Con Out of Econometrics – Kung Fu Style

Master Joshway, better known as Josh Angrist, is the Ford Professor of Economics at MIT and a ResearchAssociate in the NBER’s programs on Children, Education, and Labor Studies. Josh received his B.A. from Oberlin College, spent time as an undergraduate studying at the London School of Economics and as a Masters student at Hebrew University. He completed his Ph.D. in Economics at Princeton.

Angrist’s research interests include the effects of school inputs and school organization on student achievement; the impact of education and social programs on the labor market; the effects of immigration, labor market regulation and institutions; and econometric methods for program and policy evaluation.

Josh is a Fellow of the American Academy of Arts and Sciences, The Econometric Society, and has served on many editorial boards and as a Co-editor of the Journal of Labor Economics.

Josh is the author (with Steve Pischke) of Mostly Harmless Econometrics as well as Mastering ‘Metrics.

Find out in this episode how Josh went from High School drop-out to Professor of Economics at MIT.

Never forget that, at the most, the teacher can give you fifteen percent of the art. The rest you have to get for yourself through practice and hard work. I can show you the path but I can not walk it for you – Kung Fu Master Tan Soh Tin

Economic Themes:

In this interview, Josh mentions and discusses: econometrics, clinical trials, randomized trials, instrumental variables, regression, health insurance, longitudinal studies, selection bias, fairness, human capital, the quantity-quality trade-off, specification testing, robustness, time series, BLUE, Gauss-Markov, labor economics, regression, reverse causality, spurious correlation and data mining.

Economists:

In this interview, Josh mentions: Gary Becker, Shoshana Grossbard, Marina Adshade, Steve Pischke, Chris Blattman, Matt Holian, Christopher Sims, Russell Roberts, Greg Mankiw, Amy Finkelstein, Nancy Qian, Erlich, Ed Leamer, Steven D. Levitt, Stephen J. Dubner, Phil Oriopolis, Alan Kreuger, Orley Ashenfelter, David Card, Whitney Newey, Guido Imbens, Gary Chamberlain, Allan Meltzer, Scott Richard and Daniel Hamermesh.

On Mastering ‘Metrics: The intersection of the highway is a metaphor for causality. This is the theme of the book – ‘you’re facing a choice you’ll never know what the counterfactual was. You can imagine it’. The goal of econometrics is to reveal that in some way through statistical methods or experimentation. – Josh Angrist.

Josh and Steve’s book, Mastering ‘Metrics, is Kung Fu themed and they use that as a vehicle for humour.

MasterJoshwayMasterStevefu

Find out:

  • about Master Joshway and Master Steveway – the Kung Fu Economists.
  • how Josh went from working in a mental hospital to working in MIT.
  • why and how the Kung Fu theme was adopted by Josh and Steve.
  • where the names Master Joshway and Master SteveFu came from.
  • why Josh is a critic of macroeconomics.
  • the difference between traditional applied micro and applied micro today.
  • Josh’s views on using assumptions in microeconomics.
  • how to design an microeconomics experiment using randomized trials.
  • about health insurance in the US.
  • about Obama Care or the Affordable Care Act.
  • the Oregon Health Experiment where health insurance was offered as a lottery.
  • about Ireland’s upcoming health insurance policy change.
  • about the ‘Furious Five’ – not Kung Fu Panda – but the core research methods.
  • what’s a good economics experiment for family size.
  • where babies come from – Storks?
  • what are the chances of US married couples having a 3rd child if the first two are the same gender.
  • if people who come from large family sizes have worse outcomes?
  • about Gary Becker’s quantity-quality trade-off and how it relates to family size in China.
  • if capital punishment deters homicide.
  • why and how econometrics and specification tests are better today than they were in the past.
  • why Freakonomics is a must read for students or potential students of economics.
  • why being born later in the year is good for your educational attainment.
  • about Josh’s lucky breaks in life.
  • why Josh dropped out of school at 16 and about his army sergeant stripes.
  • about Josh’s hyper Jim Kramer-like teaching style.
  • about an amazing list of economists that have personally influenced Josh.
  • what helps Josh clear his head and keep in shape.

Macro v Micro

“Macro is a very theory-driven, model-driven field. They don’t run enough regressions or collect enough data and look for good experiments” – Josh Angrist.

“There’s nothing wrong with assumptions. That’s a misguided criticism. We have to simplify the world to learn anything about it. Otherwise you’re lost in the details.” – Josh Angrist.

“Every research project begins with the question. I have to convince my students of this and sometimes my colleagues – it isn’t let data come first, even though we’re very data-driven people. The first step is the question where it’s likely to lead me to a good research design.”

“In US census data, if you take married two-parent families who’d have at least two children, , the probability of having a 3rd child when they have a mixed sex is 0.37, and that goes to 0.43 or 0.44 when they either have two boys or two girls.”

“Ed Leamer in his paper, Let’s Take the Con Out of Econometrics, stated that nobody takes anybody else’s data analysis seriously. Nobody believes anything anybody else does.” Steve Pischke and Josh Angrist, in their paper, argue that that’s no longer true.

“The purpose of our book is to try to bring the way econometrics is taught in line with the way applied micro, at least, is done.” – Josh Angrist.

The traditional econometrics canon is built around a heavy mathematical framework that focuses on technical concerns, assumptions and many issues that are second-order statistics concerns, like heteroskedasticity or whether the model is really linear, that makes little sense and has nothing to do with modern empirical practice.

Recommended Books:

  • Mastering ‘Metrics: The Path from Cause to Effect by Josh Angrist and Steve Pishcke
  • Mostly Harmless Econometrics by Josh Angrist and Steve Pishcke
  • The Hitch-Hiker’s Guide to the Galaxy by Douglas Adams
  • Freakonomics:  A Rogue Economist Explores the Hidden Side of Everything by Steven D. Levitt and Stephen J. Dubner

Josh Angrist on Freakonomics: “ It’s so engaging and well written and covers such interesting questions that I think it wins us a lot of converts to studying economics. My daughter got interested in economics by reading Freakonomics and she majored in economics.”

Papers:

  • The Credibility Revolution in Empirical Economics: How Better Research Design is Taking the Con out of Econometrics by Josh Angrist and Steve Pischke.
  • Let’s Take the Con out of Econometrics (1983) by Ed Leamer 
  • Does Compulsory School Attendance Affect Schooling and Earnings? (1991) by Josh Angrist and Alan Kreuger. 

Datasets:

  • RAND Health Insurance Experiment
  • The Oregon Health Insurance Experiment

Blog Posts:

  • Kung Fu ‘Metrics by Chris Blattman
  • Econometrics and Kung Fu by Matt Holian

Podcast Episodes:

  • 093: Arthur Charpentier on Freakonometrics, Machine Learning and Big Data

Where To Find Josh Angrist:

  • Website: www.masteringmetrics.com
  • Facebook: Mastering ‘Metrics

Resources Used in the Episode:

www.incompetech.com Cartoon Battle Kevin McLeod Far East

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