ABOUT THE SPEAKER
Tom Chatfield - Gaming theorist
Tom Chatfield thinks about games -- what we want from them, what we get from them, and how we might use our hard-wired desire for a gamer's reward to change the way we learn.

Why you should listen

It can be difficult to wrap one's mind around the size and the reach of modern video- and online-game culture. But gaming is not only outstripping more-traditional media in revenue (it overtook music in 2008), it's become a powerful lens to re-examine our culture at large. Tom Chatfield, a longtime gamer, is the arts and books editor at the UK current-affairs magazine Prospect. In his book Fun Inc., he argues that games, with their immersive quests and deeply satisfying (and carefully designed) virtual rewards, are a great place to test new approaches to real-world systems that need a reboot.

More than a game journalist, Chatfield is a game theorist, looking at neurological research on how games engage our pleasure centers -- and then looking at a world where millions of videogame-veteran Generation Z'ers are entering the workforce and the voters' rolls. They're good with complex rule sets; they're used to forming ad hoc groups to reach a goal; and they love to tweak and mod existing systems. What if society harnessed that energy to redefine learning? Or voting? Understanding the psychology of the videogame reward schedule, Chatfield believes, is not only important for understanding the world of our children -- it's a stepping stone to improving our world right now.

More profile about the speaker
Tom Chatfield | Speaker | TED.com
TEDGlobal 2010

Tom Chatfield: 7 ways games reward the brain

Filmed:
1,288,061 views

We're bringing gameplay into more aspects of our lives, spending countless hours -- and real money -- exploring virtual worlds for imaginary treasures. Why? As Tom Chatfield shows, games are perfectly tuned to dole out rewards that engage the brain and keep us questing for more.
- Gaming theorist
Tom Chatfield thinks about games -- what we want from them, what we get from them, and how we might use our hard-wired desire for a gamer's reward to change the way we learn. Full bio

Double-click the English transcript below to play the video.

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I love video games.
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I'm also slightly in awe of them.
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I'm in awe of their power
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in terms of imagination, in terms of technology,
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in terms of concept.
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But I think, above all,
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I'm in awe at their power
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to motivate, to compel us,
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to transfix us,
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like really nothing else we've ever invented
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has quite done before.
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And I think that we can learn some pretty amazing things
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by looking at how we do this.
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And in particular, I think we can learn things
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about learning.
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Now the video games industry
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is far and away the fastest growing
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of all modern media.
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From about 10 billion in 1990,
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it's worth 50 billion dollars globally today,
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and it shows no sign of slowing down.
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In four years' time,
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it's estimated it'll be worth over 80 billion dollars.
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That's about three times the recorded music industry.
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This is pretty stunning,
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but I don't think it's the most telling statistic of all.
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The thing that really amazes me
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is that, today,
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people spend about
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eight billion real dollars a year
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buying virtual items
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that only exist
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inside video games.
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This is a screenshot from the virtual game world, Entropia Universe.
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Earlier this year,
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a virtual asteroid in it
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sold for 330,000 real dollars.
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And this
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is a Titan class ship
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in the space game, EVE Online.
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And this virtual object
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takes 200 real people
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about 56 days of real time to build,
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plus countless thousands of hours
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of effort before that.
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And yet, many of these get built.
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At the other end of the scale,
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the game Farmville that you may well have heard of,
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has 70 million players
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around the world
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and most of these players
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are playing it almost every day.
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This may all sound
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really quite alarming to some people,
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an index of something worrying
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or wrong in society.
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But we're here for the good news,
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and the good news is
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that I think we can explore
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why this very real human effort,
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this very intense generation of value, is occurring.
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And by answering that question,
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I think we can take something
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extremely powerful away.
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And I think the most interesting way
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to think about how all this is going on
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is in terms of rewards.
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And specifically, it's in terms
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of the very intense emotional rewards
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that playing games offers to people
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both individually
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and collectively.
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Now if we look at what's going on in someone's head
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when they are being engaged,
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two quite different processes are occurring.
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On the one hand, there's the wanting processes.
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This is a bit like ambition and drive -- I'm going to do that. I'm going to work hard.
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On the other hand, there's the liking processes,
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fun and affection
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and delight
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and an enormous flying beast with an orc on the back.
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It's a really great image. It's pretty cool.
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It's from the game World of Warcraft with more than 10 million players globally,
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one of whom is me, another of whom is my wife.
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And this kind of a world,
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this vast flying beast you can ride around,
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shows why games are so very good
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at doing both the wanting and the liking.
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Because it's very powerful. It's pretty awesome.
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It gives you great powers.
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Your ambition is satisfied, but it's very beautiful.
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It's a very great pleasure to fly around.
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And so these combine to form
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a very intense emotional engagement.
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But this isn't the really interesting stuff.
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The really interesting stuff about virtuality
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is what you can measure with it.
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Because what you can measure in virtuality
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is everything.
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Every single thing that every single person
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who's ever played in a game has ever done can be measured.
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The biggest games in the world today
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are measuring more than one billion points of data
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about their players, about what everybody does --
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far more detail than you'd ever get from any website.
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And this allows something very special
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to happen in games.
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It's something called the reward schedule.
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And by this, I mean looking
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at what millions upon millions of people have done
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and carefully calibrating the rate,
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the nature, the type, the intensity of rewards in games
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to keep them engaged
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over staggering amounts of time and effort.
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Now, to try and explain this
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in sort of real terms,
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I want to talk about a kind of task
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that might fall to you in so many games.
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Go and get a certain amount of a certain little game-y item.
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Let's say, for the sake of argument,
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my mission is to get 15 pies
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and I can get 15 pies
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by killing these cute, little monsters.
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Simple game quest.
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Now you can think about this, if you like,
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as a problem about boxes.
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I've got to keep opening boxes.
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I don't know what's inside them until I open them.
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And I go around opening box after box until I've got 15 pies.
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Now, if you take a game like Warcraft,
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you can think about it, if you like,
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as a great box-opening effort.
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The game's just trying to get people to open about a million boxes,
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getting better and better stuff in them.
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This sounds immensely boring
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but games are able
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to make this process
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incredibly compelling.
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And the way they do this
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is through a combination of probability and data.
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Let's think about probability.
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If we want to engage someone
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in the process of opening boxes to try and find pies,
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we want to make sure it's neither too easy,
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nor too difficult, to find a pie.
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So what do you do? Well, you look at a million people --
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no, 100 million people, 100 million box openers --
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and you work out, if you make the pie rate
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about 25 percent --
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that's neither too frustrating, nor too easy.
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It keeps people engaged.
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But of course, that's not all you do -- there's 15 pies.
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Now, I could make a game called Piecraft,
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where all you had to do was get a million pies
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or a thousand pies.
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That would be very boring.
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Fifteen is a pretty optimal number.
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You find that -- you know, between five and 20
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is about the right number for keeping people going.
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But we don't just have pies in the boxes.
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There's 100 percent up here.
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And what we do is make sure that every time a box is opened,
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there's something in it, some little reward
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that keeps people progressing and engaged.
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In most adventure games,
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it's a little bit in-game currency, a little bit experience.
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But we don't just do that either.
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We also say there's going to be loads of other items
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of varying qualities and levels of excitement.
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There's going to be a 10 percent chance you get a pretty good item.
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There's going to be a 0.1 percent chance
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you get an absolutely awesome item.
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And each of these rewards is carefully calibrated to the item.
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And also, we say,
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"Well, how many monsters? Should I have the entire world full of a billion monsters?"
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No, we want one or two monsters on the screen at any one time.
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So I'm drawn on. It's not too easy, not too difficult.
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So all this is very powerful.
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But we're in virtuality. These aren't real boxes.
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So we can do
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some rather amazing things.
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We notice, looking at all these people opening boxes,
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that when people get to about 13 out of 15 pies,
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their perception shifts, they start to get a bit bored, a bit testy.
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They're not rational about probability.
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They think this game is unfair.
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It's not giving me my last two pies. I'm going to give up.
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If they're real boxes, there's not much we can do,
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but in a game we can just say, "Right, well.
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When you get to 13 pies, you've got 75 percent chance of getting a pie now."
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Keep you engaged. Look at what people do --
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adjust the world to match their expectation.
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Our games don't always do this.
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And one thing they certainly do at the moment
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is if you got a 0.1 percent awesome item,
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they make very sure another one doesn't appear for a certain length of time
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to keep the value, to keep it special.
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And the point is really
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that we evolved to be satisfied by the world
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in particular ways.
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Over tens and hundreds of thousands of years,
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we evolved to find certain things stimulating,
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and as very intelligent, civilized beings,
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we're enormously stimulated by problem solving and learning.
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But now, we can reverse engineer that
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and build worlds
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that expressly tick our evolutionary boxes.
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So what does all this mean in practice?
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Well, I've come up
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with seven things
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that, I think, show
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how you can take these lessons from games
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and use them outside of games.
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The first one is very simple:
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experience bars measuring progress --
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something that's been talked about brilliantly
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by people like Jesse Schell earlier this year.
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It's already been done at the University of Indiana in the States, among other places.
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It's the simple idea that instead of grading people incrementally
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in little bits and pieces,
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you give them one profile character avatar
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which is constantly progressing
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in tiny, tiny, tiny little increments which they feel are their own.
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And everything comes towards that,
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and they watch it creeping up, and they own that as it goes along.
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Second, multiple long and short-term aims --
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5,000 pies, boring,
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15 pies, interesting.
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So, you give people
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lots and lots of different tasks.
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You say, it's about
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doing 10 of these questions,
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but another task
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is turning up to 20 classes on time,
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but another task is collaborating with other people,
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another task is showing you're working five times,
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another task is hitting this particular target.
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You break things down into these calibrated slices
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that people can choose and do in parallel
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to keep them engaged
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and that you can use to point them
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towards individually beneficial activities.
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Third, you reward effort.
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It's your 100 percent factor. Games are brilliant at this.
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Every time you do something, you get credit; you get a credit for trying.
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You don't punish failure. You reward every little bit of effort --
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a little bit of gold, a little bit of credit. You've done 20 questions -- tick.
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It all feeds in as minute reinforcement.
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Fourth, feedback.
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This is absolutely crucial,
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and virtuality is dazzling at delivering this.
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If you look at some of the most intractable problems in the world today
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that we've been hearing amazing things about,
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it's very, very hard for people to learn
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if they cannot link consequences to actions.
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Pollution, global warming, these things --
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the consequences are distant in time and space.
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It's very hard to learn, to feel a lesson.
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But if you can model things for people,
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if you can give things to people that they can manipulate
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and play with and where the feedback comes,
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then they can learn a lesson, they can see,
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they can move on, they can understand.
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And fifth,
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the element of uncertainty.
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Now this is the neurological goldmine,
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if you like,
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because a known reward
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excites people,
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but what really gets them going
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is the uncertain reward,
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the reward pitched at the right level of uncertainty,
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that they didn't quite know whether they were going to get it or not.
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The 25 percent. This lights the brain up.
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And if you think about
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using this in testing,
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in just introducing control elements of randomness
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in all forms of testing and training,
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you can transform the levels of people's engagement
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by tapping into this very powerful
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evolutionary mechanism.
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When we don't quite predict something perfectly,
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we get really excited about it.
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We just want to go back and find out more.
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As you probably know, the neurotransmitter
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associated with learning is called dopamine.
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It's associated with reward-seeking behavior.
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And something very exciting is just beginning to happen
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in places like the University of Bristol in the U.K.,
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where we are beginning to be able to model mathematically
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dopamine levels in the brain.
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And what this means is we can predict learning,
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we can predict enhanced engagement,
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these windows, these windows of time,
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in which the learning is taking place at an enhanced level.
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And two things really flow from this.
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The first has to do with memory,
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that we can find these moments.
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When someone is more likely to remember,
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we can give them a nugget in a window.
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And the second thing is confidence,
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that we can see how game-playing and reward structures
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make people braver, make them more willing to take risks,
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more willing to take on difficulty,
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harder to discourage.
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This can all seem very sinister.
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But you know, sort of "our brains have been manipulated; we're all addicts."
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The word "addiction" is thrown around.
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There are real concerns there.
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But the biggest neurological turn-on for people
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is other people.
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This is what really excites us.
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In reward terms, it's not money;
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it's not being given cash -- that's nice --
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it's doing stuff with our peers,
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watching us, collaborating with us.
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And I want to tell you a quick story about 1999 --
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a video game called EverQuest.
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And in this video game,
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there were two really big dragons, and you had to team up to kill them --
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42 people, up to 42 to kill these big dragons.
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That's a problem
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because they dropped two or three decent items.
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So players addressed this problem
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by spontaneously coming up with a system
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to motivate each other,
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fairly and transparently.
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What happened was, they paid each other a virtual currency
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they called "dragon kill points."
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And every time you turned up to go on a mission,
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you got paid in dragon kill points.
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They tracked these on a separate website.
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So they tracked their own private currency,
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and then players could bid afterwards
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for cool items they wanted --
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all organized by the players themselves.
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Now the staggering system, not just that this worked in EverQuest,
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but that today, a decade on,
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every single video game in the world with this kind of task
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uses a version of this system --
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tens of millions of people.
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And the success rate
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is at close to 100 percent.
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This is a player-developed,
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self-enforcing, voluntary currency,
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and it's incredibly sophisticated
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player behavior.
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And I just want to end by suggesting
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a few ways in which these principles
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could fan out into the world.
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Let's start with business.
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I mean, we're beginning to see some of the big problems
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around something like business are
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recycling and energy conservation.
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We're beginning to see the emergence of wonderful technologies
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like real-time energy meters.
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And I just look at this, and I think, yes,
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we could take that so much further
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by allowing people to set targets
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by setting calibrated targets,
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by using elements of uncertainty,
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by using these multiple targets,
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by using a grand, underlying reward and incentive system,
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by setting people up
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to collaborate in terms of groups, in terms of streets
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to collaborate and compete,
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to use these very sophisticated
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group and motivational mechanics we see.
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In terms of education,
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perhaps most obviously of all,
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we can transform how we engage people.
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We can offer people the grand continuity
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of experience and personal investment.
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We can break things down
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into highly calibrated small tasks.
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We can use calculated randomness.
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We can reward effort consistently
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as everything fields together.
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And we can use the kind of group behaviors
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that we see evolving when people are at play together,
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these really quite unprecedentedly complex
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cooperative mechanisms.
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Government, well, one thing that comes to mind
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is the U.S. government, among others,
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is literally starting to pay people
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to lose weight.
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So we're seeing financial reward being used
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to tackle the great issue of obesity.
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But again, those rewards
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could be calibrated so precisely
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if we were able to use the vast expertise
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of gaming systems to just jack up that appeal,
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to take the data, to take the observations,
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of millions of human hours
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and plow that feedback
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into increasing engagement.
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And in the end, it's this word, "engagement,"
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that I want to leave you with.
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It's about how individual engagement
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can be transformed
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by the psychological and the neurological lessons
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we can learn from watching people that are playing games.
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But it's also about collective engagement
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and about the unprecedented laboratory
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for observing what makes people tick
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and work and play and engage
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on a grand scale in games.
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And if we can look at these things and learn from them
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and see how to turn them outwards,
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then I really think we have something quite revolutionary on our hands.
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Thank you very much.
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(Applause)
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ABOUT THE SPEAKER
Tom Chatfield - Gaming theorist
Tom Chatfield thinks about games -- what we want from them, what we get from them, and how we might use our hard-wired desire for a gamer's reward to change the way we learn.

Why you should listen

It can be difficult to wrap one's mind around the size and the reach of modern video- and online-game culture. But gaming is not only outstripping more-traditional media in revenue (it overtook music in 2008), it's become a powerful lens to re-examine our culture at large. Tom Chatfield, a longtime gamer, is the arts and books editor at the UK current-affairs magazine Prospect. In his book Fun Inc., he argues that games, with their immersive quests and deeply satisfying (and carefully designed) virtual rewards, are a great place to test new approaches to real-world systems that need a reboot.

More than a game journalist, Chatfield is a game theorist, looking at neurological research on how games engage our pleasure centers -- and then looking at a world where millions of videogame-veteran Generation Z'ers are entering the workforce and the voters' rolls. They're good with complex rule sets; they're used to forming ad hoc groups to reach a goal; and they love to tweak and mod existing systems. What if society harnessed that energy to redefine learning? Or voting? Understanding the psychology of the videogame reward schedule, Chatfield believes, is not only important for understanding the world of our children -- it's a stepping stone to improving our world right now.

More profile about the speaker
Tom Chatfield | Speaker | TED.com

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