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The best stats you've ever seen

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    About 10 years ago, I took on the task to teach global development
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    to Swedish undergraduate students. That was after having spent
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    about 20 years together with African institutions studying hunger in Africa,
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    so I was sort of expected to know a little about the world.
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    And I started in our medical university, Karolinska Institute,
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    an undergraduate course called Global Health. But when you get
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    that opportunity, you get a little nervous. I thought, these students
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    coming to us actually have the highest grade you can get
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    in Swedish college systems -- so, I thought, maybe they know everything
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    I'm going to teach them about. So I did a pre-test when they came.
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    And one of the questions from which I learned a lot was this one:
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    "Which country has the highest child mortality of these five pairs?"
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    And I put them together, so that in each pair of country,
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    one has twice the child mortality of the other. And this means that
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    it's much bigger a difference than the uncertainty of the data.
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    I won't put you at a test here, but it's Turkey,
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    which is highest there, Poland, Russia, Pakistan and South Africa.
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    And these were the results of the Swedish students. I did it so I got
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    the confidence interval, which is pretty narrow, and I got happy,
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    of course: a 1.8 right answer out of five possible. That means that
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    there was a place for a professor of international health --
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    (Laughter) and for my course.
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    But one late night, when I was compiling the report
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    I really realized my discovery. I have shown
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    that Swedish top students know statistically significantly less
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    about the world than the chimpanzees.
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    (Laughter)
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    Because the chimpanzee would score half right if I gave them
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    two bananas with Sri Lanka and Turkey. They would be right half of the cases.
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    But the students are not there. The problem for me was not ignorance;
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    it was preconceived ideas.
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    I did also an unethical study of the professors of the Karolinska Institute
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    (Laughter)
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    -- that hands out the Nobel Prize in Medicine,
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    and they are on par with the chimpanzee there.
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    (Laughter)
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    This is where I realized that there was really a need to communicate,
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    because the data of what's happening in the world
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    and the child health of every country is very well aware.
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    We did this software which displays it like this: every bubble here is a country.
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    This country over here is China. This is India.
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    The size of the bubble is the population, and on this axis here I put fertility rate.
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    Because my students, what they said
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    when they looked upon the world, and I asked them,
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    "What do you really think about the world?"
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    Well, I first discovered that the textbook was Tintin, mainly.
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    (Laughter)
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    And they said, "The world is still 'we' and 'them.'
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    And we is Western world and them is Third World."
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    "And what do you mean with Western world?" I said.
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    "Well, that's long life and small family, and Third World is short life and large family."
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    So this is what I could display here. I put fertility rate here: number of children per woman:
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    one, two, three, four, up to about eight children per woman.
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    We have very good data since 1962 -- 1960 about -- on the size of families in all countries.
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    The error margin is narrow. Here I put life expectancy at birth,
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    from 30 years in some countries up to about 70 years.
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    And 1962, there was really a group of countries here
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    that was industrialized countries, and they had small families and long lives.
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    And these were the developing countries:
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    they had large families and they had relatively short lives.
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    Now what has happened since 1962? We want to see the change.
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    Are the students right? Is it still two types of countries?
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    Or have these developing countries got smaller families and they live here?
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    Or have they got longer lives and live up there?
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    Let's see. We stopped the world then. This is all U.N. statistics
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    that have been available. Here we go. Can you see there?
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    It's China there, moving against better health there, improving there.
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    All the green Latin American countries are moving towards smaller families.
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    Your yellow ones here are the Arabic countries,
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    and they get larger families, but they -- no, longer life, but not larger families.
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    The Africans are the green down here. They still remain here.
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    This is India. Indonesia's moving on pretty fast.
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    (Laughter)
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    And in the '80s here, you have Bangladesh still among the African countries there.
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    But now, Bangladesh -- it's a miracle that happens in the '80s:
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    the imams start to promote family planning.
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    They move up into that corner. And in '90s, we have the terrible HIV epidemic
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    that takes down the life expectancy of the African countries
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    and all the rest of them move up into the corner,
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    where we have long lives and small family, and we have a completely new world.
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    (Applause)
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    Let me make a comparison directly between the United States of America and Vietnam.
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    1964: America had small families and long life;
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    Vietnam had large families and short lives. And this is what happens:
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    the data during the war indicate that even with all the death,
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    there was an improvement of life expectancy. By the end of the year,
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    the family planning started in Vietnam and they went for smaller families.
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    And the United States up there is getting for longer life,
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    keeping family size. And in the '80s now,
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    they give up communist planning and they go for market economy,
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    and it moves faster even than social life. And today, we have
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    in Vietnam the same life expectancy and the same family size
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    here in Vietnam, 2003, as in United States, 1974, by the end of the war.
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    I think we all -- if we don't look in the data --
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    we underestimate the tremendous change in Asia, which was
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    in social change before we saw the economical change.
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    Let's move over to another way here in which we could display
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    the distribution in the world of the income. This is the world distribution of income of people.
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    One dollar, 10 dollars or 100 dollars per day.
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    There's no gap between rich and poor any longer. This is a myth.
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    There's a little hump here. But there are people all the way.
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    And if we look where the income ends up -- the income --
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    this is 100 percent the world's annual income. And the richest 20 percent,
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    they take out of that about 74 percent. And the poorest 20 percent,
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    they take about two percent. And this shows that the concept
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    of developing countries is extremely doubtful. We think about aid, like
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    these people here giving aid to these people here. But in the middle,
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    we have most the world population, and they have now 24 percent of the income.
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    We heard it in other forms. And who are these?
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    Where are the different countries? I can show you Africa.
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    This is Africa. 10 percent the world population, most in poverty.
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    This is OECD. The rich country. The country club of the U.N.
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    And they are over here on this side. Quite an overlap between Africa and OECD.
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    And this is Latin America. It has everything on this Earth,
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    from the poorest to the richest, in Latin America.
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    And on top of that, we can put East Europe, we can put East Asia,
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    and we put South Asia. And how did it look like if we go back in time,
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    to about 1970? Then there was more of a hump.
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    And we have most who lived in absolute poverty were Asians.
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    The problem in the world was the poverty in Asia. And if I now let the world move forward,
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    you will see that while population increase, there are
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    hundreds of millions in Asia getting out of poverty and some others
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    getting into poverty, and this is the pattern we have today.
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    And the best projection from the World Bank is that this will happen,
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    and we will not have a divided world. We'll have most people in the middle.
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    Of course it's a logarithmic scale here,
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    but our concept of economy is growth with percent. We look upon it
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    as a possibility of percentile increase. If I change this, and I take
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    GDP per capita instead of family income, and I turn these
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    individual data into regional data of gross domestic product,
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    and I take the regions down here, the size of the bubble is still the population.
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    And you have the OECD there, and you have sub-Saharan Africa there,
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    and we take off the Arab states there,
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    coming both from Africa and from Asia, and we put them separately,
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    and we can expand this axis, and I can give it a new dimension here,
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    by adding the social values there, child survival.
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    Now I have money on that axis, and I have the possibility of children to survive there.
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    In some countries, 99.7 percent of children survive to five years of age;
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    others, only 70. And here it seems there is a gap
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    between OECD, Latin America, East Europe, East Asia,
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    Arab states, South Asia and sub-Saharan Africa.
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    The linearity is very strong between child survival and money.
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    But let me split sub-Saharan Africa. Health is there and better health is up there.
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    I can go here and I can split sub-Saharan Africa into its countries.
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    And when it burst, the size of its country bubble is the size of the population.
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    Sierra Leone down there. Mauritius is up there. Mauritius was the first country
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    to get away with trade barriers, and they could sell their sugar --
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    they could sell their textiles -- on equal terms as the people in Europe and North America.
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    There's a huge difference between Africa. And Ghana is here in the middle.
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    In Sierra Leone, humanitarian aid.
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    Here in Uganda, development aid. Here, time to invest; there,
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    you can go for a holiday. It's a tremendous variation
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    within Africa which we rarely often make -- that it's equal everything.
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    I can split South Asia here. India's the big bubble in the middle.
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    But a huge difference between Afghanistan and Sri Lanka.
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    I can split Arab states. How are they? Same climate, same culture,
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    same religion -- huge difference. Even between neighbors.
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    Yemen, civil war. United Arab Emirate, money which was quite equally and well used.
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    Not as the myth is. And that includes all the children of the foreign workers who are in the country.
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    Data is often better than you think. Many people say data is bad.
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    There is an uncertainty margin, but we can see the difference here:
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    Cambodia, Singapore. The differences are much bigger
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    than the weakness of the data. East Europe:
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    Soviet economy for a long time, but they come out after 10 years
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    very, very differently. And there is Latin America.
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    Today, we don't have to go to Cuba to find a healthy country in Latin America.
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    Chile will have a lower child mortality than Cuba within some few years from now.
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    And here we have high-income countries in the OECD.
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    And we get the whole pattern here of the world,
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    which is more or less like this. And if we look at it,
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    how it looks -- the world, in 1960, it starts to move. 1960.
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    This is Mao Tse-tung. He brought health to China. And then he died.
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    And then Deng Xiaoping came and brought money to China, and brought them into the mainstream again.
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    And we have seen how countries move in different directions like this,
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    so it's sort of difficult to get
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    an example country which shows the pattern of the world.
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    But I would like to bring you back to about here at 1960.
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    I would like to compare South Korea, which is this one, with Brazil,
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    which is this one. The label went away for me here. And I would like to compare Uganda,
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    which is there. And I can run it forward, like this.
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    And you can see how South Korea is making a very, very fast advancement,
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    whereas Brazil is much slower.
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    And if we move back again, here, and we put on trails on them, like this,
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    you can see again that the speed of development
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    is very, very different, and the countries are moving more or less
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    in the same rate as money and health, but it seems you can move
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    much faster if you are healthy first than if you are wealthy first.
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    And to show that, you can put on the way of United Arab Emirate.
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    They came from here, a mineral country. They cached all the oil;
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    they got all the money; but health cannot be bought at the supermarket.
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    You have to invest in health. You have to get kids into schooling.
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    You have to train health staff. You have to educate the population.
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    And Sheikh Sayed did that in a fairly good way.
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    In spite of falling oil prices, he brought this country up here.
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    So we've got a much more mainstream appearance of the world,
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    where all countries tend to use their money
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    better than they used in the past. Now, this is, more or less,
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    if you look at the average data of the countries -- they are like this.
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    Now that's dangerous, to use average data, because there is such a lot
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    of difference within countries. So if I go and look here, we can see
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    that Uganda today is where South Korea was 1960. If I split Uganda,
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    there's quite a difference within Uganda. These are the quintiles of Uganda.
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    The richest 20 percent of Ugandans are there.
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    The poorest are down there. If I split South Africa, it's like this.
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    And if I go down and look at Niger, where there was such a terrible famine,
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    lastly, it's like this. The 20 percent poorest of Niger is out here,
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    and the 20 percent richest of South Africa is there,
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    and yet we tend to discuss on what solutions there should be in Africa.
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    Everything in this world exists in Africa. And you can't
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    discuss universal access to HIV [medicine] for that quintile up here
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    with the same strategy as down here. The improvement of the world
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    must be highly contextualized, and it's not relevant to have it
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    on regional level. We must be much more detailed.
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    We find that students get very excited when they can use this.
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    And even more policy makers and the corporate sectors would like to see
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    how the world is changing. Now, why doesn't this take place?
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    Why are we not using the data we have? We have data in the United Nations,
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    in the national statistical agencies
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    and in universities and other non-governmental organizations.
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    Because the data is hidden down in the databases.
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    And the public is there, and the Internet is there, but we have still not used it effectively.
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    All that information we saw changing in the world
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    does not include publicly-funded statistics. There are some web pages
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    like this, you know, but they take some nourishment down from the databases,
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    but people put prices on them, stupid passwords and boring statistics.
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    (Laughter) (Applause)
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    And this won't work. So what is needed? We have the databases.
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    It's not the new database you need. We have wonderful design tools,
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    and more and more are added up here. So we started
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    a nonprofit venture which we called -- linking data to design --
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    we call it Gapminder, from the London underground, where they warn you,
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    "mind the gap." So we thought Gapminder was appropriate.
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    And we started to write software which could link the data like this.
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    And it wasn't that difficult. It took some person years, and we have produced animations.
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    You can take a data set and put it there.
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    We are liberating U.N. data, some few U.N. organization.
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    Some countries accept that their databases can go out on the world,
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    but what we really need is, of course, a search function.
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    A search function where we can copy the data up to a searchable format
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    and get it out in the world. And what do we hear when we go around?
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    I've done anthropology on the main statistical units. Everyone says,
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    "It's impossible. This can't be done. Our information is so peculiar
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    in detail, so that cannot be searched as others can be searched.
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    We cannot give the data free to the students, free to the entrepreneurs of the world."
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    But this is what we would like to see, isn't it?
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    The publicly-funded data is down here.
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    And we would like flowers to grow out on the Net.
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    And one of the crucial points is to make them searchable, and then people can use
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    the different design tool to animate it there.
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    And I have a pretty good news for you. I have a good news that the present,
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    new Head of U.N. Statistics, he doesn't say it's impossible.
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    He only says, "We can't do it."
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    (Laughter)
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    And that's a quite clever guy, huh?
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    (Laughter)
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    So we can see a lot happening in data in the coming years.
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    We will be able to look at income distributions in completely new ways.
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    This is the income distribution of China, 1970.
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    the income distribution of the United States, 1970.
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    Almost no overlap. Almost no overlap. And what has happened?
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    What has happened is this: that China is growing, it's not so equal any longer,
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    and it's appearing here, overlooking the United States.
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    Almost like a ghost, isn't it, huh?
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    (Laughter)
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    It's pretty scary. But I think it's very important to have all this information.
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    We need really to see it. And instead of looking at this,
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    I would like to end up by showing the Internet users per 1,000.
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    In this software, we access about 500 variables from all the countries quite easily.
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    It takes some time to change for this,
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    but on the axises, you can quite easily get any variable you would like to have.
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    And the thing would be to get up the databases free,
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    to get them searchable, and with a second click, to get them
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    into the graphic formats, where you can instantly understand them.
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    Now, statisticians doesn't like it, because they say that this
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    will not show the reality; we have to have statistical, analytical methods.
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    But this is hypothesis-generating.
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    I end now with the world. There, the Internet is coming.
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    The number of Internet users are going up like this. This is the GDP per capita.
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    And it's a new technology coming in, but then amazingly, how well
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    it fits to the economy of the countries. That's why the 100 dollar
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    computer will be so important. But it's a nice tendency.
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    It's as if the world is flattening off, isn't it? These countries
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    are lifting more than the economy and will be very interesting
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    to follow this over the year, as I would like you to be able to do
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    with all the publicly funded data. Thank you very much.
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    (Applause)
Title:
The best stats you've ever seen
Speaker:
Hans Rosling
Description:

You've never seen data presented like this. With the drama and urgency of a sportscaster, statistics guru Hans Rosling debunks myths about the so-called "developing world."

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Video Language:
English
Team:
closed TED
Project:
TEDTalks
Duration:
19:33

English subtitles

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