Hidden Brain - Putting Our Assumptions to the Test
Episode Date: March 8, 2022Do you ever stop to wonder if the way you see the world is how the world really is?  Economist Abhijit Banerjee has spent a lifetime asking himself this question. His answer: Our world views often do...n't reflect reality. The only way to get more accurate is to think like a scientist — even when you're not looking through a microscope. If you like this show, please check out our new podcast, My Unsung Hero! And if you’d like to support our work, you can do so at support.hiddenbrain.org.
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This is Hidden Brain, I'm Shankar Vedantam.
Human beings are always trying to make sense of the world.
When things happen to us, or to our communities, or in our nations,
we understand those events through the lens of culture,
through ideology, or through the prism of our own perspectives.
You see a homeless man on the street, or a tycoon getting on a yacht.
Why is one so poor and the other so rich? Many of us have already answers to these questions
because we've spent years or decades perfecting our preferred stories. But what would happen if we just stopped?
If we told ourselves, you know, I might not actually have a very good handle on the world.
My theories are just that.
Theories.
This week on Hidden Brain, the story of a kid from Calcutta, who became a Nobel Prize winner
by asking a deceptively simple question.
How do you know that's true?
In 1937, Abijit Banerjee's grandfather struck a real estate deal in Calcutta.
It turned out to be a very bad deal.
Oh my grandfather thought he was very clever when he built his house.
He thought, well, I'm getting this plot cheap, not quite getting the idea that there
might be a reason why he was getting cheap.
The plot of land turned out to be right on the edge of a slum.
But as we will see throughout this episode, things that sound like bad ideas can sometimes turn out well
and seemingly good ideas can turn out poorly.
Often, the only way to really find out how things will unfold is to watch and see what happens. I think my grandfather loved the idea of doing something dramatic and with a flourish and
this was one of his flourishes and it turned out in many ways it was a great idea but not
for the reasons he thought.
Now I can't say for sure that Abidjit Banjjee would not have won the 2019 Nobel Prize in
Economics if his grandfather had not
bought that plot of land next to a slum.
But it definitely helped.
Here's why.
When he was a child, Abijith would go out onto the flat roof of the house.
He discovered two things.
One, it was the perfect place to launch a kite.
Because we literally were the last house. And the sight lines were
for a mile. There was nothing blocking us. For flying a kite, it was the best place in the world.
Like, you know, it was open, you know, there was no place your kite would get stuck.
The second gift of the house was that precisely because it was an ideal location to launch a kite,
it became the neighborhood hangout for kids.
And not just the kids who lived in the houses up the street, but the kids who lived in the tenements down in the slum.
There were better flying kites. We would fly kites together on our terrace. There were better attated.
And since flying kites is something that is very competitive and you know you really want a strong team,
it was nice to know them.
To the middle class families who lived in the houses,
the people who lived in the slum might have sparked sympathy or perhaps judgment.
But Abijith, he regularly found himself in awe of his poorer playmates.
I was scared of playing marbles with them. I love playing marbles.
In front of our house actually, you know, you would dig a little hole in the ground and then you
would play marbles and they were so much better at it than me. For me, it was always a little bit,
like, I was half admiring of their savvy. They were more savvy than me. And they would use swear words much more.
I mean, I have a very developed vocabulary in that domain
as it turns out.
We've been coached by experts.
But these kids would use words that I wouldn't dare use.
Seeing that cool, that bravado,
Abidjith experienced a strange emotion. This was the
Huckleberry Finn moment for me. I mean, absolutely. There is a wisdom that for me was very clear
that I didn't have. I was also, for me, they were, I played cricket with them and they were
better at cricket than me. In fact, in fact, it was very interesting.
They had somehow the idea that as someone from a middle class family,
I should be better at cricket.
And I was clearly palpably worse.
And they were, they found that a little baffling in fact.
It's not like Abidjit was unaware that his friends from the slum struggled with hardship.
The contrast between his life and theirs was obvious.
And it was very clear to me and my brother that there was this other life.
The kids didn't go to school where you might be wearing a pant where it was tied together
with a rope and a shirt that was stitched together
with safety pins and you know it sort of created a sense of somehow there was there was a
other world out there and it's not that as we were 10-year-old social scientists we were we
weren't I think we took it as a given that poor people lived that way.
But as close ties with these kids meant he did not see them as objects
of pity or scorn. In the years that followed, these experiences as a child would help shape
the work that led up to his Nobel Prize. Another early insight that shape his perspective
on the world came from an incident that unfolded at his school. In what will surely be heartening news to any student
with less than stellar grades,
our future Nobel laureate turns out
to have been a really bad student.
So I did badly.
I was a everything.
I was a uniform.
I was simply not, I mean, I was so not engaged
with the whole school business that it was not,
it didn't for several years, I was made to sit with the whole school business that it was not, it didn't, for several
years I was made to sit at the teacher's table because otherwise I would be looking
out of the window and paying no attention.
I was really, it was an extreme case of someone who had no interest in the school system.
Abidet's teachers were puzzled.
He was the son of two accomplished economists.
What could explain his underperformance?
If you think this is a child of two professors, he has to be talented.
Therefore, the explanation for my deficiency was talent, that I'm so bored with what's
being taught in class that I needed to be promoted.
So instead of demoting me, I was promoted one grade in the middle of the year.
I was taken from one grade and put in the next higher grade with the theory that once
I'm stimulated enough, I'll do well.
There was no reason to think that.
But given that my parents were academics, their theory was that I must be able to do better.
And so I was placed in this more advanced class,
I did equally badly there,
that in a sense they were right.
It was almost unrelated to which of a class they put me in,
I would do equally badly.
The teachers who thought Abhijith should be doing better academically were doing something
we all do all the time.
When we look out of the world, we draw inferences from the events we see.
We connect dots that may or may not be connected.
We tell stories.
These stories are powerful because they are often generated unconsciously.
The fact that the kid of two smart parents was doing badly in school didn't make sense
to Abidjit's teachers, so they developed a theory to get the pieces to fit together.
It was a story that satisfied Abidjit's parents, even as it did very little, to change the
trajectory of his schooling.
In time, Abhijith came to sense that such stories obscure the truth, even as they reassure
us that we understand the world.
This pension for connecting the dots, for storytelling, abounded among the well-educated friends
who came by his parents' home.
Calcutta, or Kolkata as it's called today, is in a region of India called West Bengal.
It's known for the passion with which people debate big ideas.
Bengal is at least in that era where famous for armchair theorizing.
And I often would have this reaction, yeah, but how do you know that? How do you maybe just being surrounded by people
who are extremely generous with their intuitions
and conclusions was a way to be a little more skeptical.
I think it was mostly reacting to my very
voluble, emphatic environment I grew up in.
People were very talkative and they all had strong views.
The Khakata of Abijit's youth was a hard-bared of political arguments.
By the time he was a teenager, Abijit found himself pushing back against the sweeping theories
of his friends and neighbors.
I think the one strong influence on me was actually a reaction to, I think,
left-wing ideology of a particularly Marxist kind. And I hit that very early. This is Calcutta
in the 1960s and 70s. Marxist ideologies everywhere. And it's sort of the dominant ideological framework. And people had such quick answers to questions.
And I must say, I think of myself very much as a leftist, but I did find that the speed
at which people jumped to conclusions and sort of assumed that something was the result
of some capitalist conspiracy or something, I found that very unsatisfying.
When his fellow Bengalis came up with stories about why the world was the way it was,
or why things worked the way they did, Abijith often asked them to slow down.
How did they know their theories were true?
What was the evidence that backed up their claims?
I think that was one thing that made me more empirical, I would say.
I like the idea of how things actually work at a more granular level.
I think it's also a good antidote against very broad sweep theorizing.
So I remember arguing with people when I was 15 or 16 and we were
discussing social issues and for me I understand things and yes you tell me this happened but
how did that capitalist make that conspiracy work? How did they implement it?
Later in his career, after he became an economist at MIT, Abhijit would describe what he came
to do as the academic equivalent of plumbing, where an architect might be interested in the
broad sweep of a building, how the overall design comes together, a plumber is interested
in whether the pipes are connected and the joints have leaks.
Abhijit was always less interested in the big conclusion
than in how things worked at a granular level.
As a teenager, he came to be known among his friends
as the guy who asked irritating questions.
It was a very common trope of our conversations,
me saying, why do you assume there is a reason for everything? I remember
saying that sentence a lot. The fact that things happen doesn't mean there's a good reason
for it. And with these sort of interjections received warmly, were you sort of seen as
being the fly in the ointment here of basically asking people, you know, how they came to the conclusions they did. I think I was seen as being slightly annoying.
Sometimes people would have this exasperated look of
he's making that point again.
Abijad decided to follow his parents' career path and became an economist.
As he pursued his training, he found that many people in the field Abidjid decided to follow his parents' career path and became an economist.
As he pursued his training, he found that many people in the field shared the same tendencies
as the valuable Bengali neighbors of his youth.
People spent a lot of time arguing about different theories.
Liberal economists clashed with conservative economists.
Labor economists had models of why the economy worked the way it did and they clashed with other
economists whose frame was the market or monetary policy. Experts disagreed about how the world worked
and what policies made the most sense. Theory was so powerful even when I was a graduate student,
theory was king. This is in the 1918s and I indeed followed the her and studied theory as a result of that.
It was very much the idea that we know how what the fundamentals of human behaviour are.
So if you put them together, you get the answer.
The empirical work was often shallow and shallow for the reason that doing experiments was seen as too challenging.
But also because
people thought, look, you know, it's a waste of time. I think there was a lot of confidence in the theory.
Despite his natural predilection to be wary of sweeping theories, Abhijith fell in line with his
peers. For years, he followed the norms of his field. He too spent time
coming up with intricate models of how the world worked, models that involved complex mathematics,
and very little by way of field experiments.
The Royal Swedish Academy of Sciences has today decided to award the various Riksbank Prize in Economic Sciences in Memory of Alfred Nobel
for 2019 jointly to Abidjit Banerjee, East of the Floor and Michael Kramer for their
experimental approach to alleviating global poverty. When we come back, how Abhijith found his way back to being the annoying teenager of his youth,
and discovered his real calling.
You're listening to Hidden Brain, I'm Shankar Vedanta.
In the field of economics, as in many other academic disciplines, researchers spend a lot
of time theorizing about why the world works the way it does.
A libertarian economist, for example, might locate the roots of poverty in excessive
government regulations that shackle entrepreneurs. A Marxist economist, on the other hand, might
locate the roots of poverty in an unequal capitalist playing field.
If you set the libertarian and the Marxist economists down in a room to chat, they'll
argue for hours about which theory is right.
You see the same love of theorizing an argument outside of academia too.
If you turn on cable TV any night of the week, you'll see progressive and conservative commentators explaining why the world works the way it does,
and how their model offers the best path to fixing problems.
Abidjit Banjit began his career as an economist developing and refining intricate theories.
That's what you did if you were smart.
Job security and accolades usually followed.
Right from the start though, Abidjith worry that many competing theories were just stories.
They connected the dots often in superficial ways, much like his elementary school teachers
who assumed he was failing as a student because he was actually an excellent student.
His frustrations were particularly acute when it came to questions of poverty.
Why are some people poor while others are not?
I never found it honestly very easy to have a clear cut theory of poverty. So it was always a little
bit opaque to me and that's part of why maybe I found the economics particularly in that domain,
particularly unsatisfying. It seemed to me that it was a theory that really had very little in it.
It was just either it was the kind theory which is that the poor don't have enough to eat.
So they are the handicapped. And we should think of them as being handicapped people who
therefore won't be able to do very much for themselves. And the less kind theory, which is that people get what they deserve, then unproductive
people are poor.
And that's a very straightforward application of economics 101, which is that that's why
they are poor.
I never found that particularly satisfying.
And I figured that the idea that it should come down to either
not enough food or bad genes or whatever, it seems to me to be extraordinary shallow.
There's a sense in which growing up, observing, you know, the talents of this set of people
who I was playing with, did inform me.
Abhijit kept asking quietly at first and then increasingly more loudly, the question he
had asked his Bengali neighbors as a youth.
How do you know that's true?
Neither liberal nor conservative theory swirling among economists captured the complexity of
the kids Abijith knew from the slum.
I mean, I did feel that they were often
smart, interesting, funny people with
gifts of their own.
And I think that sense maybe is important.
As Abijith pondered the disconnect
between theories of poverty and his own
experiences in Calcutta, he reflected
that there might be lessons to learn
from another academic discipline.
Medicine had experienced something
of a revolution over the previous 150 years. For a long time, medicine had been the domain
of theoreticians. People in different countries developed theories about why people felt
sick and how to cure illness. Aristotle came up with a notion that the body had four
humors or bodily fluids that needed to be kept in balance.
When they were out of balance, people felt sick.
You know, the way medicine was often made was people would have a broad theory of how the body functions.
And the, you know, for example, humors and then we are going to counteract the humor. If it's heat, I'm going to counteract the heat.
And so it was often based on very analogic reasoning, and the theory was often pretty shallow.
But the driver of a lot of medical care was often not particularly well-founded theory
of how the body works and therefore how one counteracts it.
And I think the big revolution comes basically people start to do observational studies.
I think the famous one is cholera.
And you start to see that in figuring out the roots of cholera or malaria, both of those
to figure out that malaria is caused by mosquitoes and colores cause by water.
Both of those were I think deep insights. Ronald Ross won the Nobel Prize for figuring
that out. He didn't even calculate that. Figure out how malaria gets transmitted. Those were
still observational studies, but they meant that you started to keep track of data, and
you tried to make sure that the data wasn't contaminated by other things.
About 100 years ago, some medical scientists came up with an even more radical idea.
Instead of arguing over which theory of disease was correct, why not simply run experiments
to determine the truth?
And in starting in the 1920s, basically, there's a set of bio statisticians who start to
argue that you can just do experiments. If you want to see whether the medicine works
or not, pick people at random, give some of the medicine, others not the medicine, and
you'll see whether it works or not. That As simple as that. Once that idea was there, it was hard to challenge it. And it changes the
nature of medicine. Take for example, the development of an effective treatment for AIDS.
It involved combining several different drugs into a single cocktail.
The AIDS cocktail was in a sense just off the cuff reasoning.
It was not deeply theorized.
It was like a set of things that might work.
People put them together and they tried it and it worked.
And it saved millions of lives.
The idea that we won't be able to theorize something, but we might be able to solve the
problem nonetheless.
We became very powerful in medicine.
And that's just the idea that, you know, we try it,
it works, it's great, if it doesn't, we'll try something else.
And it's often guided by relatively little theory.
Where doctors with different models of human illness
may once have argued for years about
which theory was right, the new approach said, spend less time arguing about why things
work the way they do, and more time studying the granular details of how things work, less
architecting, more plumbing.
You want to know if vaccine A works? Test it. You want to find out if acupuncture is effective against diabetes? Run an experiment.
Instead of arguing about whether bad parenting causes mental illness, give people different forms of psychotherapy or medication, and compare which one makes patients better. Abidjit started to ask himself what would happen if he were to bring the same insight
to economics.
Instead of putting grand theories on a pedestal, what if he ran controlled experiments and
looked at the results?
He found a partner, an NGO, working in a remote district in northern India, and he decided
to study a question that had an obviously correct answer.
The goal in this first experiment
was not to generate any new insights,
but to simply understand
how to run a field experiment.
And so I wasn't trying to do anything deep.
The idea was, take the obvious.
The obvious is, the educational theory was very clear.
Teachers, student, ratios matter. This was,
you know, if you, you know, how schools advertise themselves, we have seven students per teacher
or whatever, they talk of not just of economics, education specialists was very much that. So we,
we were all completely confident that if you double the number of
teachers, we'll get better test scores.
Abijith found the simplest setting for the experiment. In a rural area in the state of
Rajasthan, many poor schools had just one teacher. Abijith took a set of 40 schools. In
20 of them, picked at random, he doubled the number of teachers to two.
And the other 20, nothing was changed. We went from one teacher's schools to two teacher's schools.
If you increase the number of teachers, but 10 percent, that's a big intervention. It's expensive.
We had doubled it. So we thought this would be a slam dunk. Then the results came in.
slam dunk. Then the results came in. In schools with two teachers, test scores of students changed by Nada. Nothing. There was zero effect. I think our first reaction was we're doing
something wrong. Let's go measure better. And so we did I think extremely expensive and painful measurement and
found nothing and at that point for both for the NGO and us it was really this
aha moment okay something strange happening we have we have to sort of go
back to the drawing board understand what's missing in that story because it's
it's a common sense of both economics and education that this will work if not anything works this will work and so it
really changed my life because it in fact there were nuances there which none of
which matter which were you know there there was an attempt to hire a woman
teacher the idea was that that would be the girls would benefit more and so we
look for all those things.
I mean, we had the theory, which is that woman teacher
good for girls.
We had all the nice hypothesis, which we laid out.
And then it was just that.
Did you find out what actually was happening?
Even now, I'm Gopps Mac that this didn't have the effect that it should have had. I mean, doubling the number of
teachers in a school by definition almost, I think, should make sense. I mean, even if
you ask me today, I will tell you, of course, it's going to improve the test courses.
Students, did you ever figure out why the result turned out the way it did?
We did the same thing in Mumbai, in a later experiment, in the early 2000s, where we cut the class size from 40 to 20,
and it had no effects on the test score. So I think we are pretty convinced it was right, and then
eventually I think we came up with a story, I can't tell you that it's necessarily right, but it fits with many other
things. And the story is very simple. The way the Indian education system constructed, the idea is
there is content that needs to be delivered to the child every day. There's a syllabus, you follow
that. And then that's the best you can do. The fact that the child
may or may not get it, these are among the poorest people in India. These are female literacy in this
area was 2%. So it's really an extremely underprivileged area. Parents were in no position to support
their children often. So if the children fall behind, they fall behind.
And so I think what's happening is that the teacher was just teaching any child who managed to stay
with the teacher, but the rest of the children were behind and it really wasn't. There was no
mechanism for integrating them. You know, today's material is, we'll learn these kinds of what?
If you don't follow, that's too bad for you.
We have actually lots of evidence suggesting
that that's right explanation.
So therefore, it doesn't matter how many,
that if you double the number of teachers,
you know, there are only two or three children
in that whole group who were able to follow the rest of them were lost in any case
They were bewildered
Looking at their hands. I could see that physically. I could see what was wrong
Which is that the kids were often just you know
so
Shelf shock by the whole process that they weren't really even trying to engage. They were just staring into space.
I mean, one of the things that sort of jumps out at me is,
of course, you know, when we have these models in our heads
about how the world is supposed to work,
and then somebody comes along and provides you with data
showing that the world doesn't work that way.
You know, our first reaction might be to dismiss the data,
but our second reaction would actually be to double down
on the model.
I mean, in some ways, when I'm thinking about the experience
that you had as a small child where you did badly in class
and you got promoted, one conclusion you could draw from that
is, all right, so he's still disengaged in this class,
this higher class.
That must mean that he is still bored,
because this new class is also not up to par with how smart young Abijith is.
Let's promote him to the next class.
So in other words, when you rely on sort of your intuitions about how the world works,
you can make the same mistake over and over again because you can interpret the results you're seeing in a way that conform to your model.
I think you're exactly right. People could have said that this just
means that these kids are untieiable. I remember being in one conversation, I won't name the
organization a different one, where they said that you know, basically, you know, these
kids are so untieiable that you have to start at the beginning and reconstruct them in a sense to be able to learn.
And I remember saying, no, these kids are just being taught badly.
And if they were taught better, they'll learn.
And I think the experience of the next 20 years of our work on education has been entirely
that, which is that if you actually focus on teaching the kids they want to learn in two
months, they make more progress than they make over the previous two years.
And that's very much the conclusion.
But you could have easily taken an essentialist understanding, which is, you know, these
kids is hopeless.
Yeah.
Or you could have said, you know, yes, we increase the size of the class, the teachers
by 100%. But what you really had to do size of the class, the teachers by 100%.
But what you really had to do was you actually had to increase it
by 200%, or 400%, or 800%,
that you could have doubled down on the same approach
because your fundamental model is, that model is correct.
That's also true.
But that was too expensive.
So that one didn't come up.
The one that did come up is, how do you know these kids can be taught?
Maybe they are so malnutrinated
that the brain has collapsed or something.
This is something that keeps coming back, sadly.
So in another set of studies that you did,
you looked at the effectiveness of different strategies
in getting small children vaccinated.
And if I remember correctly, in this particular area
that you were working in, the vaccination rates were very low.
They were like 2% or something.
And there was sort of competing theories
about why the vaccination rates were so low.
And the NGOs and the government had sort of different theories
about what had happened.
Paint me a picture of where this was, when this was, and what the different theories were
for the very low vaccination rate.
This was also in rural, their poor district.
The NGO we were working with was the same one.
When the vaccination conversation started, they convened a meeting of local NGOs.
And it was interesting, the local NGOs had the view
that this is because the government supply system
doesn't work.
The, you know, the government is incompetent
and you know, when you want to get vaccinated,
you can't get vaccinated.
The government, of course, at the opposite view,
which is that these people,
they're primitive, they have traditional beliefs and therefore you can't get them to get vaccinated
because they don't want to get vaccinated. And our, so the NGOs interest was, in a sense, the one
we were working with, they were also interested primarily in showing that if you could have reliable
supply of vaccines
that you can get vaccinated in a predictable way, then that's going to solve the problem.
So the first intervention we had was exactly that.
This NGO worked with the government, the government gave them the vaccines and they announced
a day on which they would show up in each village and on that day they did arrive extremely punctually and the vaccines got delivered.
Anybody who came could get vaccinated.
So everything on the supply side worked.
That raised it to eventually there were 6% in the play villages which had the status quo. It went to 17% not to 100%. Now what we had done
partly just out of again just to see let's see if it works not particularly because I had a strong
intuition interval is to say okay why don't we give them a small reward for getting vaccinated? And it was really one kilo of lentils, two and a half pounds of lentils.
And that was, people's view was this is useless.
But it was really very much the idea that this is some, you know, strange thing that academics
think of, but, you know, turned out that that raised the vaccination rate to 36%. So that has had an
enormous effect. And I think we've repeated that particular exercise many times and every time
we find the same thing, which is a small payment that makes the occasion memorable is very important
in getting people to get vaccinated.
Otherwise, they just get drowned in,
there's so many things happening in their lives,
there's so many challenges in being poor.
That is easy to get distracted and forget to get vaccinated.
So, one of the points that you've made in this study is that,
you can call it an incentive, you can call it a bribe,
you can call it a nudge.
You're basically giving people something that's unrelated to the vaccine, the benefit
of the vaccine, you're giving them something unrelated to get them to take the vaccine.
And you've made the point that in some ways the reason that this is actually attractive
to people, given that the gift is actually so small, is it changes what people are thinking
about perhaps on the day of the vaccination.
What do you mean by that?
You could always say, I'll do it next month.
You're busy, you have another child, he's four and he needs to be taken care of.
If you want to go get the young child vaccinated, you have to bring him and he's going to not
particularly want to be sitting there. he's going to not particularly want
to be sitting there, he's going to run around
and a lot of chairs after him.
This is just all kinds of good reasons
to want to postpone.
What the lentil does is it just says, okay, fine.
Okay, but if I do it, get it done today.
I'm going to get that nice thing
and that's going to be, you know,
a little bit of sweetness in my life. I really think that
that's the right psychology. I mean I talked to some of these people who came for it. It's not
that they would get rich because they got the lentils. It's just that it sort of makes that
moment. When you are deciding between many compulsions, it's one compulsion that is very well defined.
I could go next month, but next month maybe I wouldn't get this.
It's right now I'm going to get the lentils.
Notice that the intervention that had the biggest effect on vaccination rates
was not shaped by some grand theory about why poor people don't get vaccinated.
It wasn't driven by the belief that incompetent government officials was not shaped by some grand theory about why poor people don't get vaccinated.
It wasn't driven by the belief that incompetent government officials and unreliable supply chains were the source of the problem. It also wasn't connected with the even broader theory
that poor people in rural Uthaipur district had such primitive beliefs that they would refuse
to get vaccinated. It was just an experiment. Let's try this and see if it works.
It was plumbing. The faucet has a leak. Let's install a new washer and see if it fixes the problem.
In other work along the same lines, for example, Abijith and his colleagues have found that cash transfers to poor people
do not prompt them to become lazy or drop out of the workforce
as many models in economics might predict.
Many people use the money to live more comfortably.
But Abhijith has also found that when you focus on the mundane and the practical, something
surprising happens.
Once you discover that a new washer fixes the leak in the faucet. The solution tells you what your problem was.
Once you see that increasing the number of teachers
doesn't automatically increase test scores,
it allows you to come up with a new theory.
Some kids are being left behind in class,
and to help them, you have to change the way you teach.
Once you see that two pounds of lentils
can dramatically increase your vaccination rate,
you're less likely to reach for path explanations about incompetent governments and primitive villagers.
This is exactly what has happened in medicine.
The experimental evidence of what works and what doesn't work has turned out to be a powerful engine
to improve our understanding of how the body functions.
The experiments improve the theories.
When we come back, more of our budgets forays into controlled experiments
and what the debate between theory and experiment can teach us
about the human capacity for insight and humility.
You're listening to Hidden Brain, I'm Shankar Vedanta.
This is Hidden Brain, I'm Shankar Vedantam. In 2019, Abhijit Banerjee, Esther DuFlow and Michael Kremmer were awarded the Nobel Prize
in Economics for their experimental approach to alleviating global poverty.
Over the past two decades, they have not only come up with a number of discoveries, they
have revolutionized the practice of economics itself.
Abidjit now works with teams in dozens of countries.
He and his colleagues have now run hundreds of experiments and inspired thousands more.
Increasingly, policy makers are taking a leaf from Abidjit's book.
Instead of falling back on path ideological answers to questions of public policy, smart
leaders are saying, want to know which policy is the best policy in a given state or country?
Don't argue about it on cable TV, just run an experiment, and find out what works best.
Take the question of how to fight malaria in poor countries. Everyone knew that when people in areas infested with
malaria use bed nets, fewer people fall sick, fewer kids die. The question policy makers confronted
was, should you just give away bed nets for free? Would people value the nets less if they
were free? Would they start using bed nets as fishing nets. The debate was, in some ways, classic economics.
In the sense that on one side, yes, there were people who were saying,
look, you know, if you signal to people that these things are free,
they won't value them.
So even if you think it's entirely appropriate to give them free, don't give it free.
So it was a debate between people, nobody really wanted to charge the full price.
I think they were crazy as who did, but this was a debate among people who were all willing
to subsidize it. But just some people thought that if you make it fully free, then people won't
value it. Now, you could spend hours arguing the question.
You could make a case for why charging a nominal amount
for bed nets would actually increase usage and save lives.
You could also make a case for why giving them away
for free would save the most lives.
Some of our budget colleagues ran an experiment
where different groups of people received either free bed nets
or cheap bed nets.
The researchers then carefully tracked their use.
The result?
There was no correlation between how much someone paid for the net and whether they used
it.
And then I think now essentially everybody is giving away bed nets free.
And I think that's a great thing, but it came out, I think, till
that moment where the evidence showed that the usage was unaffected by the price, I think everybody
had that doubt. You know, there are all these stories about condoms that were used as balloons
and the bed nets being used as fishing nets, and those stories keep coming back.
use as fishing nets and those stories you keep coming back. I think anecdotes were trumping evidence still at that point. The evidence really shut down the anecdotes. I think that
was critical. So I just want to stay with this idea for a second because of course when
we see anecdotes in the world, when we come by information about somebody who's using
their malaria fighting bed net as a fishing net or using a condom as a balloon.
It does lend itself to you are coming up with a story. I mean, this is what we do when we look at
events in the real world, we're constantly coming up with stories to explain why the events are the
way they are. So it's not as if the people coming up with the stories are necessarily malicious or they're trying to draw the wrong conclusions about the world. Many of
them, in fact, are deeply well-intentioned and want the best things for everyone else. It's just
that the act of storytelling itself runs the risk that you're extrapolating from too little data
to sweeping a conclusion.
sweeping a conclusion. It's even worse than that, I think. I think the act of story telling
really pivots on narratives like these. They're wonderful, no? When you say, you know, see, there was this program and then the kids were playing with the strange balloons and when you look
at it, they were just condom, little kids playing with condoms filled with water.
That just sounds such a great story.
So in fact, it's even better,
even more seductive than just,
we need to have a narrative.
These are wonderful narratives.
And therefore, they're particularly compelling.
We keep passing them on because, after all,
if the story was that they didn't play
with the condom, that's not an interesting story to tell. So, you know, in a sense, these
extreme examples are very, very seductive and they tend to over inform us all the time.
You know, I'm thinking about a sort of an underrated study for a second just to compliment what you are saying.
The state of California at one point decided to make salaries of state employees public.
And this was partly designed to, with the view of basically saying sunshine and transparency are always good things.
And one of the things they were trying to combat was the gender wage gap.
And they basically said by making salaries, public and transparent,
we can reduce paid disparities between men and women.
This is a fundamentally good thing to do.
The economist Immanuel Sayes basically analyzed employees
of the University of California system.
And he found that as a result of this paid transparency,
some 20% to 40% of people working for the University of California
system were now thinking of leaving
their jobs because now they looked over their shoulders. They saw that people who were doing work
that was similar to theirs were now being paid more than them. And now instead of being an
engine for equity and transparency, it became an engine for resentment and frustration and people
wanting to leave. And again, I think it's an example of how the stories that we tell about the
world sometimes have unintended consequences. And again, I think it's just an example of how the stories that we tell about the world
sometimes have unintended consequences.
And sometimes, no matter how many unintended consequences we see, we can't help but constantly
keep coming up with stories.
Again, I think that's exactly right, but in particular, I think the words like transparency,
how could you be against it?
It's transparent, it's clear. There is a valorization
that's built into these words and I think that's extremely compelling often for. And so,
I think to say that I'm against transparency makes me sound sleazy, but in fact I am against
the transparency. And that's a critical problem in bureaucracy.
People want to have a paper trail.
And that's often the reason why we're happy
to say bureaucracies are inefficient.
But in fact, bureaucracy is often inefficient precisely
because we want them to be transparent.
And that turns out to be one of the drivers
of a lot of red tape.
So I'm often skeptical of transparency.
Our values can be a powerful driver of storytelling
that obscures the truth.
Of course, increasing the ratio of teachers to students
is going to improve test scores.
Of course, transparency is always
a good thing. Another driver of this sort of storytelling? Partisanship. It's so easy
for us to see that the theories of our opponents are fanciful and misguided. It's so much
harder to be skeptical of our own stories. As guilty as anyone, I'm seduced by my own stories. That's why I think the
methodologies are useful. They're useful because in some sense, while privately I
hold on to many theories, I think the fact that we are now in a place where
people are able to challenge you and say, do you have any evidence for it? I think
it does change it. I don't
know that we'll ever be not seduced by stories, but I think the insistence of what sometimes
called the credibility revolution in economics. I think that's the discipline of saying, well,
you have no evidence for it. I think that does help the public conversation. I think we are in a better
place now. So let's just stay with this idea for just a second because it's an important point.
It is the case that randomized controlled trials can tell you something about the world that you
didn't know. It is true that the data can challenge your preconceived notions.
But as you point out, there is a way of doing randomized control trials, and in some ways
predetermines the answers that you actually want to get, or in some ways figures out how
you're conducting the experiment to guide the experiment in a certain direction.
So the point that I'm trying to make is that the mere act of conducting an experiment,
in some ways does not produce, necessarily, or automatically produce,
the skepticism that you need to combat theories. In some ways, it requires a certain honesty in terms of actually approaching the experiment with an open mind with some humility
in order to be able to generate those answers. Because if you actually, again, if you allow your preconceived notions and theories to guide how you're setting up the experiment in the first place,
you could very easily set up the experiments that you always find eventually what you want to find.
Or at least find the wrong answer.
Even if you don't find the, you may limit the set of possibilities so that you still learn something,
but you'll often learn in a very limited way. And I think I
don't think there is any obvious good antidote as the one you said, which is ask yourself,
why do you believe that this is the right set of possibilities? And I think we try, but it's hard
because again, it's easy to be seduced by your own narratives as you said before.
Again, it's easy to be seduced by your own narrative as you said before. I'm wondering as someone who's won the Nobel Prize in economics,
you are widely seen as an expert and people must defer to your opinions in a variety of settings,
academic settings, social settings, community settings.
Do you sometimes feel like you are at risk yourself of falling prey to some of the models that you have challenged
because now people sort of say, well, you know, Abidjit Banerjee, Nobel Prize winner, clearly
he must know the correct answer.
Yeah, yeah, yeah, I call it the, the oracular status.
Yeah, you're the oracle.
No, you can just speak.
You know, I absolutely, it's extremely dangerous and tempting sometimes, because, you know, in the end, on some things, I feel that, okay, I have an opinion, I might
as well say it, and I can't say that I always resist. I do try very hard to tell myself,
I need to resist, shut up, shut up, shut up, shut up. Do I always manage? No.
We've sort of circled around the same question,
I think, multiple times, which is sort of the importance
of sort of humility, sort of what I think I'm hearing
over and over again, and sort of this trajectory
of your life's work.
Richard Feynman said, the first rule
is that you must not fool yourself
and you are the easiest person to fool.
So I mean, we've known this for a very long time,
but it feels like in practice, this is actually really hard to do. And it is really hard to do partly
because I think the idea that most answers come with enormous uncertainty is very hard to
convey. Uncertainty is very hard to convey. You can say, I think my specific belief is
seven, but it could be 11 or three.
And then people don't hear the 11 or three, they just hear the seven.
It's very hard to convey uncertainty.
When I speak, should I be silent, therefore, that's a very hard dilemma.
I don't know that we, any of us, know our way around it,
because we know that it'll be overinterpreted.
If I say anything is going will be overinterpreted. If I say anything is going to be
overinterpreted. Now that I have a Nobel Prize, even more overbre way interpreted. So you sort of
hold back and say, well, should I shut up? But then is it okay to shut up in a context where
you know, lives are a stake? It's really, and I don't know that there is a good resolution to that, but you're right in saying that it's extremely fundamental tension in the economics life, I think.
In my next question.
Abijith Banerjee is an economist at MIT. Along with Esther DuFlow and Michael Kramer, he was awarded the 2019 Nobel Prize in Economics. I bid you thank you for joining me today on Hidden Brain.
Thank you very much for having me.
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