Title: Prediction Markets and the Wisdom of Crowds
1Prediction Markets and the Wisdom of Crowds
- David Pennock
- Yahoo! Research NYC
2Outline
- Prediction Markets Survey
- What is a prediction market?
- Examples
- Some research findings
- The Wisdom of CrowdsA Story
3Bet Credible Opinion
Hillary Clinton will win the election
I bet 100 Hillary will win at 1 to 2 odds
- Which is more believable?More Informative?
- Betting intermediaries
- Las Vegas, Wall Street, Betfair, Intrade,...
- Prices stable consensus of a large number of
quantitative, credible opinions - Excellent empirical track record
4Example March Madness
5More Socially Redeemable Example
http//intrade.com
Screen capture 2007/05/18
6A Prediction Market
- Take a random variable, e.g.
- Turn it into a financial instrument payoff
realized value of variable
Bird Flu Outbreak US 2007?(Y/N)
I am entitled to
Bird FluUS 07
Bird FluUS 07
1 if
0 if
7Why?
- Get information
- price ? probability of uncertain event(in
theory, in the lab, in the field, ...more later) - Is there some future event youd like to
forecast?A prediction market can probably help
8A Prediction Market
- Take a random variable, e.g.
- Turn it into a financial instrument payoff
realized value of variable
US08Pres Dem?
2008 CAEarthquake?
9Aside Terminology
- Key aspect payout is uncertain
- Called variously asset, security, contingent
claim, derivative (future, option), stock,
prediction market, information market, gamble,
bet, wager, lottery - Historically mixed reputation
- Esp. gambling aspect
- A time when options were frowned upon
- But when regulated serve important social roles...
10Getting Information
- Non-market approach ask an expert
- How much would you pay for this?
- A 5/36 ? 0.1389
- caveat expert is knowledgeable
- caveat expert is truthful
- caveat expert is risk neutral, or RN for 1
- caveat expert has no significant outside stakes
11Getting Information
- Non-market approach pay an expert
- Ask the expert for his report r of the
probability P( ) - Offer to pay the expert
- 100 log r if
- 100 log (1-r) if
- It so happens that the expert maximizes expected
profit by reporting r truthfully - caveat expert is knowledgeable
- caveat expert is truthful
- caveat expert is risk neutral, or RN
- caveat expert has no significant outside stakes
logarithmic scoring rule, a proper scoring
rule
12Getting Information
- Market approach ask the publicexperts
non-experts alikeby opening a market - Let any person i submit a bid order an offer to
buy qi units at price pi - Let any person j submit an ask order an offer
to sell qj units at price pj(if you sell 1 unit,
you agree to pay 1 if ) - Match up agreeable trades (many poss. mechs...)
13Non-Market Alternatives vs. Markets
- Opinion poll
- Sampling
- No incentive to be truthful
- Equally weighted information
- Hard to be real-time
- Ask Experts
- Identifying experts can be hard
- Incentives
- Combining opinions can be difficult
- Prediction Markets
- Self-selection
- Monetary incentive and more
- Money-weighted information
- Real-time
- Self-organizing
14Non-Market Alternatives vs. Markets
- Machine learning/Statistics
- Historical data
- Past and future are related
- Hard to incorporate recent new information
- Prediction Markets
- No need for data
- No assumption on past and future
- Immediately incorporate new information
15Function of Markets 2 Risk Management
- If is bad for me,
- I buy a bunch of
- If my house is struck by lightening, I am
compensated.
16Risk Management Examples
- Insurance
- I buy car insurance to hedge the risk of accident
- Futures
- Farmers sell soybean futures to hedge the risk of
price drop - Options
- Investors buy options to hedge the risk of stock
price changes
17Financial Markets vs. Prediction Markets
Financial Markets Prediction Markets
Primary Social welfare (trade)Hedging risk Information aggregation
Secondary Information aggregation Social welfare (trade)Hedging risk
18Giving/Getting Information
- What you can say/learn chance that
- Hillary wins
- GOP wins Texas
- YHOO stock gt 30
- Duke wins tourney
- Oil prices fall
- Heat index rises
- Hurricane hits Florida
- Rains at place/time
- Where
- IEM, Intrade.com
- Intrade.com
- Stock options market
- Las Vegas, Betfair
- Futures market
- Weather derivatives
- Insurance company
- Weatherbill.com
19http//tradesports.com
http//intrade.com
Screen capture 2007/05/18
20Intrade Election Coverage
21http//www.biz.uiowa.edu/iem
22http//www.wsex.com/
http//www.hedgestreet.com/
Screen capture 2007/05/18
Screen capture 2007/05/18
23Play moneyReal predictions
http//www.hsx.com/
24http//us.newsfutures.com/
http//www.ideosphere.com
Cancercuredby 2010
Machine Gochampionby 2020
25Yahoo!/OReilly Tech Buzz Game
http//buzz.research.yahoo.com/
26An Incomplete List of Prediction Markets
- Real Money
- Iowa Electronic Markets (IEM), http//www.biz.uiow
a.edu/iem/ - TradeSports, http//www.tradesports.com
- InTrade, http//www.intrade.com
- Betfair, http//www.betfair.com/
- Gambling markets? sports betting, horse racetrack
- Play Money
- Hollywood Stock Exchange (HXS),
http//www.hsx.com/ - NewsFutures, http//www.newsfutures.com
- Yahoo!/OREILLY Tech Buzz Game,
http//buzz.research.yahoo.com - World Sports Exchange (WSE), http//www.wsex.com/
- Foresight Exchange, http//www.ideosphere.com/
- Inkling Markets http//inklingmarkets.com/
- Internal Prediction Markets
- HP, Google, Microsoft, Eli-Lilly, Corning
27More Prediction Market Games
- BizPredict.com
- CasualObserver.net
- FTPredict.com
- InklingMarkets.com
- ProTrade.com
- StorageMarkets.com
- TheSimExchange.com
- TheWSX.com
- Alexadex, Celebdaq, Cenimar, BetBubble,
Betocracy, CrowdIQ, MediaMammon,Owise,
PublicGyan, RIMDEX, Smarkets, Trendio, TwoCrowds - http//www.chrisfmasse.com/3/3/markets/Play-Money
_Prediction_Markets
28Catalysts
- Markets have long history of predictive accuracy
why catching on now as tool? - No press is bad press Policy Analysis Market
(terror futures) - Surowiecki's Wisdom of Crowds
- Companies
- Google, Microsoft, Yahoo! CrowdIQ, HSX,
InklingMarkets, NewsFutures - Press BusinessWeek, CBS News, Economist,
NYTimes, Time, WSJ, ...http//us.newsfutures.com/
home/articles.html
29Does it work?
- Yes, evidence from real markets, laboratory
experiments, and theory - Racetrack odds beat track experts Figlewski
1979 - Orange Juice futures improve weather forecast
Roll 1984 - I.E.M. beat political polls 451/596 Forsythe
1992, 1999Oliven 1995Rietz 1998Berg
2001Pennock 2002 - HP market beat sales forecast 6/8 Plott 2000
- Sports betting markets provide accurate forecasts
of game outcomes Gandar 1998Thaler
1988Debnath EC03Schmidt 2002 - Market games work Servan-Schreiber 2004Pennock
2001 - Laboratory experiments confirm information
aggregationPlott 198219881997Forsythe
1990Chen, EC01 - Theory rational expectations Grossman
1981Lucas 1972 - More later
30Does it work?Yes...
- Evidence from real markets, laboratory
experiments, and theory indicate that markets are
good at gathering information from many sources
and combining it appropriately e.g. - Markets like the Iowa Electronic Market predict
election outcomes better than pollsForsythe
1992, 1999Oliven 1995Rietz 1998Berg
2001Pennock 2002 - Futures and options markets rapidly incorporate
information, providing accurate forecasts of
their underlying commodities/securitiesSherrick
1996Jackwerth 1996Figlewski 1979Roll
1984Hayek 1945 - Sports betting markets provide accurate forecasts
of game outcomes Gandar 1998Thaler
1988Debnath EC03Schmidt 2002
31Does it work?Yes...
- E.g. (contd)
- Laboratory experiments confirm information
aggregationPlott 198219881997Forsythe
1990Chen, EC-2001 - And field tests Plott 2002
- Theoretical underpinnings rational
expectationsGrossman 1981Lucas 1972 - Procedural explanation agents learn from
pricesHanson 1998Mckelvey 1986Mckelvey
1990Nielsen 1990 - Proposals to use information markets to help
science Hanson 1995, policymakers, decision
makers Hanson 1999, government Hanson 2002,
military DARPA FutureMAP, PAM - Even market games work! Servan-Schreiber
2004Pennock 2001
32Example IEM 1992
Source Berg, DARPA Workshop, 2002
33Example IEM
Source Berg, DARPA Workshop, 2002
34Example IEM
Source Berg, DARPA Workshop, 2002
35Example IEM
Source Berg, DARPA Workshop, 2002
36Example IEM
Source Berg, DARPA Workshop, 2002
37Speed TradeSports
Source Wolfers 2004
Contract Pays 100 if Cubs win game 6 (NLCS)
Price of contract (Probability that Cubs win)
Fan reaches over and spoils Alous catch. Still
1 out.
Cubs are winning 3-0 top of the 8th1 out.
The Marlins proceed to hit 8 runs in the 8th
inning
Time (in Ireland)
38Does money matter? Play vs real, head to head
- Experiment
- 2003 NFL Season
- ProbabilitySports.com Online football forecasting
competition - Contestants assess probabilities for each game
- Quadratic scoring rule
- 2,000 experts, plus
- NewsFutures (play )
- Tradesports (real )
- Used last trade prices
- Results
- Play money and real money performed similarly
- 6th and 8th respectively
- Markets beat most of the 2,000 contestants
- Average of experts came 39th (caveat)
Electronic Markets, Emile Servan-Schreiber,
Justin Wolfers, David Pennock and Brian Galebach
39(No Transcript)
40Does money matter? Play vs real, head to head
StatisticallyTS NFNF gtgt Avg TS gt Avg
41Real marketsvs. market games
IEM
HSX
averagelog score
arbitrageclosure
42Real marketsvs. market games
HSX
FX, F1P6
forecast source avg log score F1P6 linear
scoring -1.84 F1P6 F1-style scoring -1.82 betting
odds -1.86 F1P6 flat scoring -2.03 F1P6 winner
scoring -2.32
expectedvalueforecasts489 movies
43A Wisdom of Crowds Story
Story
1/7
Survey
Research
Opinion
- ProbabilitySports.com
- Thousands of probability judgments for sporting
events - Alice Jets 67 chance to beat Patriots
- Bob Jets 48 chance to beat Patriots
- Carol, Don, Ellen, Frank, ...
- Reward Quadratic scoring ruleBest probability
judgments maximize expected score
44Individuals
- Most individuals are poor predictors
- 2005 NFL Season
- Best 3747 points
- Average -944 Median -275
- 1,298 out of 2,231 scored below zero(takes
work!)
45Individuals
- Poorly calibrated (too extreme)
- Teams given lt 20 chance actually won 30 of the
time - Teams given gt 80 chance actually won 60 of the
time
46The Crowd
- Create a crowd predictor by simply averaging
everyones probabilities - Crowd 1/n(Alice Bob Carol ... )
- 2005 Crowd scored 3371 points(7th out of 2231)
! - Wisdom of fools Create a predictor by averaging
everyone who scored below zero - 2717 points (62nd place) !
- (the best fool finished in 934th place)
47The Crowd How Big?
Morehttp//blog.oddhead.com/2007/01/04/the-wisdo
m-of-the-probabilitysports-crowd/http//www.overc
omingbias.com/2007/02/how_and_when_to.html
48Can We Do Better? ML/Stats
Dani et al. UAI 2006
- Maybe Not
- CS experts algorithms
- Other expert weights
- Calibrated experts
- Other averaging fns (geo mean, RMS, power means,
mean of odds, ...) - Machine learning (NB, SVM, LR, DT, ...)
- Maybe So
- Bayesian modeling EM
- Nearest neighbor (multi-year)
49Can we do better? Markets