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♪ [music] ♪
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- [Narrator] Welcome
to Nobel Conversations.
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In this episode,
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Josh Angrist and Guido Imbens
sit down with Isaiah Andrews
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to discuss how the field
of econometrics is evolving.
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- [Isaiah] So, Guido and Josh,
you're both pioneers
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in developing tools for
empirical research in economics.
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And so I'd like to explore
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where you feel like
the field is heading --
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economics, econometrics,
the whole thing.
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To start, I'd be interested to hear
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about whether you feel
the way in which
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the local average treatment
effects framework took hold
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has any lessons for how
new empirical methods in economics
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develop and spread
or how they should.
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- [Josh] That's a good question.
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You go first.
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[laughter]
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- [Guido] Yeah, so I think
the important thing
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is to come up
with good convincing cases
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where the questions are clear
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and where the methods
apply in general.
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One thing I --
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looking back
at the subsequent literature.
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So I really like the regression
discontinuity literature
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where there were clearly a bunch
of really convincing examples
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and that allowed people
to think more clearly,
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look harder
at the methodological questions.
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Do clear applications
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that then allow you
to kind of think about,
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"Wow, does this type of assumption
seem reasonable here?
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What kind of things do we not like
in the early papers?
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How can we improve things?"
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So having clear applications
motivating these literatures
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I think is very helpful.
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- I'm glad you mentioned
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the regression
discontinuity, Guido.
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I think there's a lot of
complementarity between IV and RD,
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Instrumental Variables
and Regression Discontinuity.
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A lot of the econometric
applications
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of regression discontinuity
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are what used to be called
"fuzzy" RD,
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where, you know, it's not discrete
or deterministic at the cutoff
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but just the change
in rates or intensity.
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And the LATE framework
helps us understand
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those applications
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and gives us a clear interpretation
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for something like
in my paper with Victor Lavy,
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where we use Maimonides'
rule, the class size cutoffs,
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and what are you getting there?
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Of course, you can
answer that question
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with a linear
constant effects model,
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but it turns out
we're not limited to that,
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and RD is still very powerful
and illuminating,
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even when the correlation
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between the cutoff
and the variable of interest,
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in this case class size,
is partial,
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maybe even not that strong.
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So there was definitely kind
of a parallel development.
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It's also interesting --
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nobody talked about
regression discontinuity designs
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when we were in graduate school.
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It was something that other social
scientists were interested in,
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and that grew up
alongside the LATE framework,
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and we've both done work
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on both applications
and methods there,
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and it's been very exciting
to see that develop
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and become so important.
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It's part of a general evolution,
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I think, towards credible
identification strategies,
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causal effects...
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making econometrics
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more about causal questions
than about models.
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In terms of the future,
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I think one thing that LATE
has helped facilitate
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is a move towards
more creative, randomized trials
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where there's
something of interest.
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It's not possible
or straightforward
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to simply turn it off or on,
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but you can encourage it
or discourage it.
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So you subsidize schooling
with financial aid, for example.
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So now we have a whole
framework for interpreting that,
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and it opens the doors
to randomized trials
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of things that maybe would
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not have seemed possible before.
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We've used that a lot in the work
we do on schools in our --
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in the Blueprint Lab at MIT.
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We're exploiting random assignment
in very creative ways, I think.
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- [Isaiah] Related to that,
do you see particular factors
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that make for useful research
in econometrics?
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You've alluded to
it having a clear connection
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to problems
that are actually coming up,
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and empirical practice
is often a good idea.
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- Isn't it always a good idea?
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I often find myself sitting
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in an econometrics
theory seminar,
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say the Harvard MIT seminar,
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and I'm thinking, "What problem
is this guy solving?
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Who has this problem?"
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And, you know...
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sometimes there's an
embarrassing silence if I ask
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or there might be
a fairly contrived scenario.
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I want to see
where the tool is useful.
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There are some
purely foundational tools.
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I do take the point.
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There are people who are working
on conceptual foundations of ...
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it becomes more like
mathematical statistics.
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I mean, I remember
an early example of that
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that I struggled to understand
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was the idea
of stochastic equicontinuity,
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which one of my thesis advisors,
Whitney Newey,
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was using to great effect,
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and I was trying
to understand that.
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It's really foundational.
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it's not an application
that's driving that --
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at least not immediately.
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But most things are not like that,
and so there should be a problem.
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And I think it's on the seller
of that sort of thing,
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because there's opportunity cost,
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the time and attention,
and effort to understand things.
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It's on the seller to say,
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"Hey, I'm solving this problem,
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and here's a set of results
that show that it's useful,
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and here's some insight
that I get."
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- [Isaiah] As you said, Josh,
there's been a move
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in the direction of thinking
more about causality
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in economics and empirical
work in economics.
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Any consequences of the --
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the spread of that view
that surprised you
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or anything that you view
as downsides
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of the way that empirical
economics has gone?
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- Sometimes I see
somebody does IV,
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and they get a result
which seems implausibly large.
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That's the usual case.
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So it might be
an extraordinarily large
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causal effect of some
relatively minor intervention,
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which was randomized
or for which you could make a case
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that there's a good design.
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And then when I see that,
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I think it's very hard
for me to believe
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that this relatively
minor intervention
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has such a large effect.
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The author will sometimes resort
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to the local average
treatment effects theorem
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and say, "Well, these compliers,
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they're special in some way."
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And they just benefit
extraordinarily
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from this intervention.
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I'm reluctant to take that
at face value.
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I think often when effects
are too big,
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it's because the exclusion
restriction is failing,
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so you don't really have the right
endogenous variable
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to scale that result.
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And so I'm not too happy to see
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a generic heterogeneity argument
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being used to excuse something
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that I think might be
a deeper problem.
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- [Guido] I think it played
somewhat of an unfortunate role
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in the discussions
between reduced form
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and structural approaches,
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where I feel
that wasn't quite right.
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The instrumental
variables assumptions
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are at the core, structural
assumptions about behavior --
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they were coming from economic...
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thinking about the economic
behavior of agents,
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and somehow it got pushed
in a direction
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that I think wasn't
really very helpful.
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I think, initially,
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we wrote things up,
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it was describing
what was happening.
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There were a set of methods
people were using.
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We clarified what
those methods were doing
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and in a way that I think
contain a fair amount of insight.
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But it somehow
got pushed into a corner
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that I don't think
was necessarily very helpful.
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- In just the language
of reduced form versus structural,
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I find kind of funny in the sense
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that the local average
treatment effect model,
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the potential outcomes model
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is a nonparametric
structural model,
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if you want to think about it,
as you suggested, Guido.
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So there's something a little funny
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about putting these
two things in opposition when --
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- [Guido] Yes.
- [Josh] That language, of course,
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comes from the simultaneous
equations framework
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that we inherited.
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It has the advantage
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that people seem to know
what you mean when you use it,
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but that might be that people
are hearing different --
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different people
are hearing different things.
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- [Guido] Yeah. I think
reduced form has become
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used in a little bit
of the pejorative way...
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- [Josh] Sometimes.
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...which is not really quite what
it was originally intended for.
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- [Isaiah] I guess something else
that strikes me in thinking about
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the effects of the local average
treatment effect framework
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is that often folks will appeal
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to a local average treatment
effects intuition
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for settings well beyond ones
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where any sort of formal result
has actually been established.
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And I'm curious, given all the work
that you guys did
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to establish LATE results
in different settings,
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I'm curious, any thoughts on that?
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- I think there's going
to be a lot of cases
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where the intuition
does get you some distance,
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but it's going to be
somewhat limited,
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and establishing
formal results there
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may be a little tricky
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and then maybe only work
in special circumstances,
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and you end up
with a lot of formality
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that may not quite
capture the intuition.
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Sometimes I'm somewhat
uneasy with them,
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and they are not necessarily
the papers I would want to write,
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but I do think intuition
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often does capture
part of the problem.
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I think, in some sense,
we were very fortunate there
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in the way that the LATE paper
got handled at the journal,
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so that, actually, the editor,
made it much shorter
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and that allowed us to focus
on very clear, crisp results.
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There's a somewhat
unfortunate tendency
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in the econometrics literature
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of having the papers
get longer and longer.
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- Well, you should be able
to fix that, man.
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- I'm trying to fix that.
[laughter]
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But I think this is an example
where it's very clear
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that having it be short
is actually --
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- You should have imposed
that no paper
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can be longer than the LATE paper.
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- That... wow! That may be great.
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- At least no theory,
no theory paper.
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- Yeah, and I think...
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I'm trying very hard to get
the papers to be shorter,
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and I think there is a lot
of value today
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because it's often
the second part of the paper
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that doesn't actually
get you much further
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in understanding things,
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and it does make things
much harder to read.
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It goes back to how I think
econometrics should be done.
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You should focus on --
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It should be reasonably
close to empirical problems.
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They should be very clear problems.
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But then often the theory
doesn't need to be quite so long.
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- [Josh] Yeah.
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- I think things have gone
a little off track.
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- [Isaiah] A relatively
recent change
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has been a seeming
big increase in demand
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for people with econometrics
causal effect estimation skills
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in the tech sector.
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I'm interested,
do either of you have thoughts
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of how that's going to interact
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with the development
of empirical methods
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or empirical research
in economics going forward?
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- [Josh] Well, there's
sort of a meta point,
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which is, there's this new
kind of employer,
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the Amazons and the Uber,
and the TripAdvisor world,
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and I think that's great.
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I like to tell my students
about that.
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At MIT we have a lot
of computer science majors --
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that's our biggest major.
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I try to seduce some of those folks
into economics by saying
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you can go work for these companies
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that people
are very keen to work for
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because the work seems exciting,
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that the skills
that you get in econometrics
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are as good or better
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than any competing
discipline has to offer.
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So you should at least
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take some econ, take some
econometrics, and some econ.
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I did a fun project with Uber
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on labor supply of Uber drivers,
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and it was very, very exciting
to be part of that.
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Plus I got to drive
for Uber for a while,
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and I thought that was fun too.
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I did not make enough
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that I was tempted
to give up my MIT job,
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but I enjoyed the experience.
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I see a potential challenge
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to our model
of graduate education here,
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which is, if we're training people
to go work at Amazon,
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it's not clear why
we should be paying
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graduate stipends for that.
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Why should the taxpayer
effectively be subsidizing that.
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Our graduate education
in the US Is generously subsidized,
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even in private universities,
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it's ultimately -- there's a lot of
public money there,
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and I think the traditional
rationale for that is,
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we were training
educators and scholars,
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and there's a great externality
from the work that we do,
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it's either
the research externality,
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or a teaching externality.
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But if many of our students
are going to work
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in the private sector --
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that's fine,
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but maybe their employers
should pay for that.
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- For me, it's [just] so different
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from people working
for consulting firms.
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It's not clear to me
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that the number of jobs
in academics has changed.
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- I feel like this is
a growing sector,
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whereas consulting --
you're right to raise that,
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it might be the same
for consulting.
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I'm placing more and more
students in these businesses,
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so it's on my mind, in a way,
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that I've not been attentive
to consulting jobs.
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Consulting was always important,
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and I think also
there's some movement
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from consulting back
into research --
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it's a little more fluid.
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A lot of the work in both domains,
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I have to say,
it's not really different
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but people who are working
in the tech sector
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are doing things that are
potentially of scientific interest,
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but mostly it's hidden.
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Then you really have to say
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why is the government
paying for this?
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I mean to Guido's point,
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I guess there's
a data question here of,
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has the total [no-neck] say
for-profit sector employment
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of econ Ph.D. program
graduates increased
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or has it just been
a substitution from finance
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and consulting towards tech?
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- I may be reacting to something
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that's not really happening.
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- I've actually done some work
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with some of these tech companies.
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I don't disagree with Josh's point
that we need to think
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a little bit about
the funding model
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who is, in the end, paying
for the graduate education.
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But from a scientific perspective,
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not only do these places
have great data
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and nowadays they tend to be
very careful with that
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for privacy reasons,
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but they also have great questions.
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I find it very inspiring to listen
to the people there
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and see what kind
of questions they have,
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and often they're questions
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that also come up
outside of these companies.
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I have a couple of papers
with Raj Chetty and Susan Athey,
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where we look at ways
of combining experimental data
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and observational data.
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Raj Chetty was interested
in what is the effect
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of early childhood programs
on outcomes later in life,
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not just kind on test scores
but on earnings and stuff,
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and we kind of developed methods
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that would help you shed light
on that under some --
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in some settings,
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and the same problems came up
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in these tech company settings.
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And so, from my perspective,
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it's the same kind of --
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I was talking to people
doing empirical work.
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I tried to kind of look
at these specific problems
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and then try to come up
with more general problems,
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reformulating the problems
at a higher level,
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so that I can think about solutions
that work in a range of settings.
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And so from that perspective,
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the interactions
with the tech companies
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are just very valuable
and very useful.
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We do have students now
doing internships there
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and then coming back
and writing more interesting theses
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as a result of
their experiences there.
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- [Narrator] If you'd like to watch
more Nobel Conversations,
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click here.
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Or if you'd like to learn
more about econometrics,
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check out Josh's
"Mastering Econometrics" series.
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If you'd like to learn more
about Guido, Josh, and Isaiah,
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check out the links
in the description.
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