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What we're learning from online education

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    Like many of you, I'm one of the lucky people.
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    I was born to a family where education was pervasive.
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    I'm a third-generation PhD, a daughter of two academics.
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    In my childhood, I played around in my father's university lab.
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    So it was taken for granted that I attend some of the best universities,
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    which in turn opened the door to a world of opportunity.
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    Unfortunately, most of the people in the world are not so lucky.
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    In some parts of the world, for example, South Africa,
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    education is just not readily accessible.
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    In South Africa, the educational system was constructed
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    in the days of apartheid for the white minority.
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    And as a consequence, today there is just not enough spots
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    for the many more people who want and deserve a high quality education.
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    That scarcity led to a crisis in January of this year
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    at the University of Johannesburg.
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    There were a handful of positions left open
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    from the standard admissions process, and the night before
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    they were supposed to open that for registration,
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    thousands of people lined up outside the gate in a line a mile long,
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    hoping to be first in line to get one of those positions.
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    When the gates opened, there was a stampede,
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    and 20 people were injured and one woman died.
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    She was a mother who gave her life
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    trying to get her son a chance at a better life.
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    But even in parts of the world like the United States
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    where education is available, it might not be within reach.
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    There has been much discussed in the last few years
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    about the rising cost of health care.
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    What might not be quite as obvious to people
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    is that during that same period the cost of higher education tuition
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    has been increasing at almost twice the rate,
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    for a total of 559 percent since 1985.
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    This makes education unaffordable for many people.
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    Finally, even for those who do manage to get the higher education,
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    the doors of opportunity might not open.
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    Only a little over half of recent college graduates
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    in the United States who get a higher education
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    actually are working in jobs that require that education.
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    This, of course, is not true for the students
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    who graduate from the top institutions,
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    but for many others, they do not get the value
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    for their time and their effort.
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    Tom Friedman, in his recent New York Times article,
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    captured, in the way that no one else could, the spirit behind our effort.
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    He said the big breakthroughs are what happen
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    when what is suddenly possible meets what is desperately necessary.
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    I've talked about what's desperately necessary.
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    Let's talk about what's suddenly possible.
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    What's suddenly possible was demonstrated by
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    three big Stanford classes,
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    each of which had an enrollment of 100,000 people or more.
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    So to understand this, let's look at one of those classes,
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    the Machine Learning class offered by my colleague
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    and cofounder Andrew Ng.
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    Andrew teaches one of the bigger Stanford classes.
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    It's a Machine Learning class,
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    and it has 400 people enrolled every time it's offered.
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    When Andrew taught the Machine Learning class to the general public,
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    it had 100,000 people registered.
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    So to put that number in perspective,
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    for Andrew to reach that same size audience
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    by teaching a Stanford class,
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    he would have to do that for 250 years.
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    Of course, he'd get really bored.
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    So, having seen the impact of this,
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    Andrew and I decided that we needed to really try and scale this up,
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    to bring the best quality education to as many people as we could.
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    So we formed Coursera,
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    whose goal is to take the best courses
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    from the best instructors at the best universities
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    and provide it to everyone around the world for free.
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    We currently have 43 courses on the platform
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    from four universities across a range of disciplines,
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    and let me show you a little bit of an overview
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    of what that looks like.
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    (Video) Robert Ghrist: Welcome to Calculus.
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    Ezekiel Emanuel: Fifty million people are uninsured.
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    Scott Page: Models help us design more effective institutions and policies.
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    We get unbelievable segregation.
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    Scott Klemmer: So Bush imagined that in the future,
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    you'd wear a camera right in the center of your head.
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    Mitchell Duneier: Mills wants the student of sociology to develop the quality of mind ...
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    RG: Hanging cable takes on the form of a hyperbolic cosine.
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    Nick Parlante: For each pixel in the image, set the red to zero.
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    Paul Offit: ... Vaccine allowed us to eliminate polio virus.
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    Dan Jurafsky: Does Lufthansa serve breakfast and San Jose? Well, that sounds funny.
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    Daphne Koller: So this is which coin you pick, and this is the two tosses.
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    Andrew Ng: So in large-scale machine learning, we'd like to come up with computational ...
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    (Applause)
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    DK: It turns out, maybe not surprisingly,
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    that students like getting the best content
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    from the best universities for free.
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    Since we opened the website in February,
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    we now have 640,000 students from 190 countries.
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    We have 1.5 million enrollments,
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    6 million quizzes in the 15 classes that have launched
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    so far have been submitted, and 14 million videos have been viewed.
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    But it's not just about the numbers,
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    it's also about the people.
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    Whether it's Akash, who comes from a small town in India
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    and would never have access in this case
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    to a Stanford-quality course
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    and would never be able to afford it.
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    Or Jenny, who is a single mother of two
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    and wants to hone her skills
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    so that she can go back and complete her master's degree.
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    Or Ryan, who can't go to school,
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    because his immune deficient daughter
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    can't be risked to have germs come into the house,
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    so he couldn't leave the house.
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    I'm really glad to say --
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    recently, we've been in correspondence with Ryan --
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    that this story had a happy ending.
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    Baby Shannon -- you can see her on the left --
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    is doing much better now,
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    and Ryan got a job by taking some of our courses.
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    So what made these courses so different?
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    After all, online course content has been available for a while.
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    What made it different was that this was real course experience.
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    It started on a given day,
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    and then the students would watch videos on a weekly basis
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    and do homework assignments.
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    And these would be real homework assignments
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    for a real grade, with a real deadline.
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    You can see the deadlines and the usage graph.
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    These are the spikes showing
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    that procrastination is global phenomenon.
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    (Laughter)
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    At the end of the course,
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    the students got a certificate.
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    They could present that certificate
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    to a prospective employer and get a better job,
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    and we know many students who did.
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    Some students took their certificate
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    and presented this to an educational institution at which they were enrolled
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    for actual college credit.
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    So these students were really getting something meaningful
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    for their investment of time and effort.
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    Let's talk a little bit about some of the components
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    that go into these courses.
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    The first component is that when you move away
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    from the constraints of a physical classroom
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    and design content explicitly for an online format,
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    you can break away from, for example,
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    the monolithic one-hour lecture.
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    You can break up the material, for example,
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    into these short, modular units of eight to 12 minutes,
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    each of which represents a coherent concept.
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    Students can traverse this material in different ways,
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    depending on their background, their skills or their interests.
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    So, for example, some students might benefit
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    from a little bit of preparatory material
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    that other students might already have.
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    Other students might be interested in a particular
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    enrichment topic that they want to pursue individually.
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    So this format allows us to break away
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    from the one-size-fits-all model of education,
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    and allows students to follow a much more personalized curriculum.
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    Of course, we all know as educators
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    that students don't learn by sitting and passively watching videos.
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    Perhaps one of the biggest components of this effort
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    is that we need to have students
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    who practice with the material
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    in order to really understand it.
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    There's been a range of studies that demonstrate the importance of this.
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    This one that appeared in Science last year, for example,
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    demonstrates that even simple retrieval practice,
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    where students are just supposed to repeat
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    what they already learned
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    gives considerably improved results
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    on various achievement tests down the line
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    than many other educational interventions.
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    We've tried to build in retrieval practice into the platform,
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    as well as other forms of practice in many ways.
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    For example, even our videos are not just videos.
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    Every few minutes, the video pauses
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    and the students get asked a question.
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    (Video) SP: ... These four things. Prospect theory, hyperbolic discounting,
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    status quo bias, base rate bias. They're all well documented.
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    So they're all well documented deviations from rational behavior.
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    DK: So here the video pauses,
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    and the student types in the answer into the box
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    and submits. Obviously they weren't paying attention.
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    (Laughter)
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    So they get to try again,
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    and this time they got it right.
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    There's an optional explanation if they want.
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    And now the video moves on to the next part of the lecture.
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    This is a kind of simple question
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    that I as an instructor might ask in class,
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    but when I ask that kind of a question in class,
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    80 percent of the students
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    are still scribbling the last thing I said,
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    15 percent are zoned out on Facebook,
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    and then there's the smarty pants in the front row
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    who blurts out the answer
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    before anyone else has had a chance to think about it,
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    and I as the instructor am terribly gratified
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    that somebody actually knew the answer.
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    And so the lecture moves on before, really,
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    most of the students have even noticed that a question had been asked.
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    Here, every single student
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    has to engage with the material.
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    And of course these simple retrieval questions
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    are not the end of the story.
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    One needs to build in much more meaningful practice questions,
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    and one also needs to provide the students with feedback
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    on those questions.
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    Now, how do you grade the work of 100,000 students
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    if you do not have 10,000 TAs?
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    The answer is, you need to use technology
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    to do it for you.
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    Now, fortunately, technology has come a long way,
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    and we can now grade a range of interesting types of homework.
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    In addition to multiple choice
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    and the kinds of short answer questions that you saw in the video,
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    we can also grade math, mathematical expressions
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    as well as mathematical derivations.
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    We can grade models, whether it's
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    financial models in a business class
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    or physical models in a science or engineering class
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    and we can grade some pretty sophisticated programming assignments.
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    Let me show you one that's actually pretty simple
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    but fairly visual.
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    This is from Stanford's Computer Science 101 class,
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    and the students are supposed to color-correct
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    that blurry red image.
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    They're typing their program into the browser,
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    and you can see they didn't get it quite right, Lady Liberty is still seasick.
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    And so, the student tries again, and now they got it right, and they're told that,
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    and they can move on to the next assignment.
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    This ability to interact actively with the material
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    and be told when you're right or wrong
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    is really essential to student learning.
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    Now, of course we cannot yet grade
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    the range of work that one needs for all courses.
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    Specifically, what's lacking is the kind of critical thinking work
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    that is so essential in such disciplines
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    as the humanities, the social sciences, business and others.
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    So we tried to convince, for example,
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    some of our humanities faculty
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    that multiple choice was not such a bad strategy.
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    That didn't go over really well.
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    So we had to come up with a different solution.
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    And the solution we ended up using is peer grading.
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    It turns out that previous studies show,
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    like this one by Saddler and Good,
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    that peer grading is a surprisingly effective strategy
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    for providing reproducible grades.
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    It was tried only in small classes,
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    but there it showed, for example,
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    that these student-assigned grades on the y-axis
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    are actually very well correlated
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    with the teacher-assigned grade on the x-axis.
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    What's even more surprising is that self-grades,
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    where the students grade their own work critically --
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    so long as you incentivize them properly
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    so they can't give themselves a perfect score --
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    are actually even better correlated with the teacher grades.
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    And so this is an effective strategy
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    that can be used for grading at scale,
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    and is also a useful learning strategy for the students,
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    because they actually learn from the experience.
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    So we now have the largest peer-grading pipeline ever devised,
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    where tens of thousands of students
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    are grading each other's work,
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    and quite successfully, I have to say.
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    But this is not just about students
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    sitting alone in their living room working through problems.
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    Around each one of our courses,
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    a community of students had formed,
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    a global community of people
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    around a shared intellectual endeavor.
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    What you see here is a self-generated map
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    from students in our Princeton Sociology 101 course,
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    where they have put themselves on a world map,
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    and you can really see the global reach of this kind of effort.
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    Students collaborated in these courses in a variety of different ways.
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    First of all, there was a question and answer forum,
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    where students would pose questions,
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    and other students would answer those questions.
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    And the really amazing thing is,
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    because there were so many students,
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    it means that even if a student posed a question
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    at 3 o'clock in the morning,
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    somewhere around the world,
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    there would be somebody who was awake
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    and working on the same problem.
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    And so, in many of our courses,
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    the median response time for a question
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    on the question and answer forum was 22 minutes.
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    Which is not a level of service I have ever offered to my Stanford students.
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    (Laughter)
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    And you can see from the student testimonials
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    that students actually find
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    that because of this large online community,
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    they got to interact with each other in many ways
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    that were deeper than they did in the context of the physical classroom.
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    Students also self-assembled,
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    without any kind of intervention from us,
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    into small study groups.
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    Some of these were physical study groups
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    along geographical constraints
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    and met on a weekly basis to work through problem sets.
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    This is the San Francisco study group,
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    but there were ones all over the world.
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    Others were virtual study groups,
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    sometimes along language lines or along cultural lines,
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    and on the bottom left there,
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    you see our multicultural universal study group
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    where people explicitly wanted to connect
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    with people from other cultures.
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    There are some tremendous opportunities
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    to be had from this kind of framework.
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    The first is that it has the potential of giving us
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    a completely unprecedented look
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    into understanding human learning.
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    Because the data that we can collect here is unique.
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    You can collect every click, every homework submission,
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    every forum post from tens of thousands of students.
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    So you can turn the study of human learning
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    from the hypothesis-driven mode
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    to the data-driven mode, a transformation that,
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    for example, has revolutionized biology.
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    You can use these data to understand fundamental questions
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    like, what are good learning strategies
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    that are effective versus ones that are not?
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    And in the context of particular courses,
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    you can ask questions
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    like, what are some of the misconceptions that are more common
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    and how do we help students fix them?
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    So here's an example of that,
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    also from Andrew's Machine Learning class.
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    This is a distribution of wrong answers
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    to one of Andrew's assignments.
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    The answers happen to be pairs of numbers,
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    so you can draw them on this two-dimensional plot.
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    Each of the little crosses that you see is a different wrong answer.
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    The big cross at the top left
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    is where 2,000 students
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    gave the exact same wrong answer.
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    Now, if two students in a class of 100
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    give the same wrong answer,
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    you would never notice.
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    But when 2,000 students give the same wrong answer,
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    it's kind of hard to miss.
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    So Andrew and his students went in,
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    looked at some of those assignments,
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    understood the root cause of the misconception,
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    and then they produced a targeted error message
  • 15:24 - 15:27
    that would be provided to every student
  • 15:27 - 15:29
    whose answer fell into that bucket,
  • 15:29 - 15:31
    which means that students who made that same mistake
  • 15:31 - 15:33
    would now get personalized feedback
  • 15:33 - 15:37
    telling them how to fix their misconception much more effectively.
  • 15:37 - 15:41
    So this personalization is something that one can then build
  • 15:41 - 15:44
    by having the virtue of large numbers.
  • 15:44 - 15:46
    Personalization is perhaps
  • 15:46 - 15:49
    one of the biggest opportunities here as well,
  • 15:49 - 15:51
    because it provides us with the potential
  • 15:51 - 15:54
    of solving a 30-year-old problem.
  • 15:54 - 15:57
    Educational researcher Benjamin Bloom, in 1984,
  • 15:57 - 16:00
    posed what's called the 2 sigma problem,
  • 16:00 - 16:03
    which he observed by studying three populations.
  • 16:03 - 16:06
    The first is the population that studied in a lecture-based classroom.
  • 16:06 - 16:09
    The second is a population of students that studied
  • 16:09 - 16:11
    using a standard lecture-based classroom,
  • 16:11 - 16:13
    but with a mastery-based approach,
  • 16:13 - 16:15
    so the students couldn't move on to the next topic
  • 16:15 - 16:18
    before demonstrating mastery of the previous one.
  • 16:18 - 16:20
    And finally, there was a population of students
  • 16:20 - 16:25
    that were taught in a one-on-one instruction using a tutor.
  • 16:25 - 16:28
    The mastery-based population was a full standard deviation,
  • 16:28 - 16:30
    or sigma, in achievement scores better
  • 16:30 - 16:33
    than the standard lecture-based class,
  • 16:33 - 16:35
    and the individual tutoring gives you 2 sigma
  • 16:35 - 16:37
    improvement in performance.
  • 16:37 - 16:38
    To understand what that means,
  • 16:38 - 16:40
    let's look at the lecture-based classroom,
  • 16:40 - 16:43
    and let's pick the median performance as a threshold.
  • 16:43 - 16:44
    So in a lecture-based class,
  • 16:44 - 16:48
    half the students are above that level and half are below.
  • 16:48 - 16:50
    In the individual tutoring instruction,
  • 16:50 - 16:55
    98 percent of the students are going to be above that threshold.
  • 16:55 - 16:59
    Imagine if we could teach so that 98 percent of our students
  • 16:59 - 17:01
    would be above average.
  • 17:01 - 17:05
    Hence, the 2 sigma problem.
  • 17:05 - 17:07
    Because we cannot afford, as a society,
  • 17:07 - 17:10
    to provide every student with an individual human tutor.
  • 17:10 - 17:12
    But maybe we can afford to provide each student
  • 17:12 - 17:14
    with a computer or a smartphone.
  • 17:14 - 17:17
    So the question is, how can we use technology
  • 17:17 - 17:20
    to push from the left side of the graph, from the blue curve,
  • 17:20 - 17:23
    to the right side with the green curve?
  • 17:23 - 17:25
    Mastery is easy to achieve using a computer,
  • 17:25 - 17:26
    because a computer doesn't get tired
  • 17:26 - 17:30
    of showing you the same video five times.
  • 17:30 - 17:33
    And it doesn't even get tired of grading the same work multiple times,
  • 17:33 - 17:36
    we've seen that in many of the examples that I've shown you.
  • 17:36 - 17:38
    And even personalization
  • 17:38 - 17:40
    is something that we're starting to see the beginnings of,
  • 17:40 - 17:43
    whether it's via the personalized trajectory through the curriculum
  • 17:43 - 17:46
    or some of the personalized feedback that we've shown you.
  • 17:46 - 17:49
    So the goal here is to try and push,
  • 17:49 - 17:52
    and see how far we can get towards the green curve.
  • 17:52 - 17:58
    So, if this is so great, are universities now obsolete?
  • 17:58 - 18:01
    Well, Mark Twain certainly thought so.
  • 18:01 - 18:03
    He said that, "College is a place where a professor's lecture notes
  • 18:03 - 18:05
    go straight to the students' lecture notes,
  • 18:05 - 18:07
    without passing through the brains of either."
  • 18:07 - 18:11
    (Laughter)
  • 18:11 - 18:14
    I beg to differ with Mark Twain, though.
  • 18:14 - 18:17
    I think what he was complaining about is not
  • 18:17 - 18:19
    universities but rather the lecture-based format
  • 18:19 - 18:22
    that so many universities spend so much time on.
  • 18:22 - 18:25
    So let's go back even further, to Plutarch,
  • 18:25 - 18:28
    who said that, "The mind is not a vessel that needs filling,
  • 18:28 - 18:30
    but wood that needs igniting."
  • 18:30 - 18:32
    And maybe we should spend less time at universities
  • 18:32 - 18:34
    filling our students' minds with content
  • 18:34 - 18:38
    by lecturing at them, and more time igniting their creativity,
  • 18:38 - 18:41
    their imagination and their problem-solving skills
  • 18:41 - 18:44
    by actually talking with them.
  • 18:44 - 18:45
    So how do we do that?
  • 18:45 - 18:49
    We do that by doing active learning in the classroom.
  • 18:49 - 18:51
    So there's been many studies, including this one,
  • 18:51 - 18:53
    that show that if you use active learning,
  • 18:53 - 18:56
    interacting with your students in the classroom,
  • 18:56 - 18:58
    performance improves on every single metric --
  • 18:58 - 19:01
    on attendance, on engagement and on learning
  • 19:01 - 19:03
    as measured by a standardized test.
  • 19:03 - 19:05
    You can see, for example, that the achievement score
  • 19:05 - 19:08
    almost doubles in this particular experiment.
  • 19:08 - 19:12
    So maybe this is how we should spend our time at universities.
  • 19:12 - 19:17
    So to summarize, if we could offer a top quality education
  • 19:17 - 19:18
    to everyone around the world for free,
  • 19:18 - 19:21
    what would that do? Three things.
  • 19:21 - 19:25
    First it would establish education as a fundamental human right,
  • 19:25 - 19:26
    where anyone around the world
  • 19:26 - 19:28
    with the ability and the motivation
  • 19:28 - 19:30
    could get the skills that they need
  • 19:30 - 19:31
    to make a better life for themselves,
  • 19:31 - 19:34
    their families and their communities.
  • 19:34 - 19:36
    Second, it would enable lifelong learning.
  • 19:36 - 19:38
    It's a shame that for so many people,
  • 19:38 - 19:41
    learning stops when we finish high school or when we finish college.
  • 19:41 - 19:44
    By having this amazing content be available,
  • 19:44 - 19:47
    we would be able to learn something new
  • 19:47 - 19:48
    every time we wanted,
  • 19:48 - 19:49
    whether it's just to expand our minds
  • 19:49 - 19:51
    or it's to change our lives.
  • 19:51 - 19:54
    And finally, this would enable a wave of innovation,
  • 19:54 - 19:57
    because amazing talent can be found anywhere.
  • 19:57 - 20:00
    Maybe the next Albert Einstein or the next Steve Jobs
  • 20:00 - 20:03
    is living somewhere in a remote village in Africa.
  • 20:03 - 20:06
    And if we could offer that person an education,
  • 20:06 - 20:08
    they would be able to come up with the next big idea
  • 20:08 - 20:10
    and make the world a better place for all of us.
  • 20:10 - 20:11
    Thank you very much.
  • 20:11 - 20:19
    (Applause)
Title:
What we're learning from online education
Speaker:
Daphne Koller
Description:

Daphne Koller is enticing top universities to put their most intriguing courses online for free -- not just as a service, but as a way to research how people learn. Each keystroke, comprehension quiz, peer-to-peer forum discussion and self-graded assignment builds an unprecedented pool of data on how knowledge is processed and, most importantly, absorbed.

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Video Language:
English
Team:
closed TED
Project:
TEDTalks
Duration:
20:40
Thu-Huong Ha edited English subtitles for What we're learning from online education
Thu-Huong Ha approved English subtitles for What we're learning from online education
Thu-Huong Ha accepted English subtitles for What we're learning from online education
Thu-Huong Ha edited English subtitles for What we're learning from online education
Morton Bast added a translation

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