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Prediction Markets: Tapping the Wisdom of Crowds

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Title: Prediction Markets: Tapping the Wisdom of Crowds


1
Prediction Markets Tapping the Wisdom of Crowds
  • Yiling Chen
  • Yahoo! Research
  • February 3, 2008

2
Outline
  • Introduction to prediction markets
  • What is a prediction market?
  • Functions of markets
  • Contracts and mechanisms
  • Prediction market examples
  • Iowa Electronic Markets
  • Yahoo! Tech Buzz Game
  • Looking forward
  • Decision markets
  • Combinatorial markets

3
Events of Interest
  • Will Giants win the Super Bowl?
  • Will Hillary Clinton win the Democratic Primary
    race?
  • Will Democratic party win the Presidential
    election?
  • Will (Should) Microsoft and Yahoo merge?
  • Will US economy go into recession during 2008?
  • Will there be a cure for cancer by 2015?
  • Will sales value exceed 200k in April?

4
Bet Credible Opinion
  • Q Will Giants win the Super Bowl?
  • Betting intermediaries
  • Las Vegas, Wall Street, Betfair, Intrade,...

5
Prediction Markets
  • A prediction market is a financial market that is
    designed for information aggregation and
    prediction.
  • Payoffs of the traded item is associated with
    outcomes of future events.

6
Prediction Markets
  • A prediction market is a financial market that is
    designed for information aggregation and
    prediction.
  • Payoffs of the traded item is associated with
    outcomes of future events.

7
Prediction Markets
  • A prediction market is a financial market that is
    designed for information aggregation and
    prediction.
  • Payoffs of the traded item is associated with
    outcomes of future events.

1Percentage of Vote Share That Clinton Wins
8
Prediction Markets
  • A prediction market is a financial market that is
    designed for information aggregation and
    prediction.
  • Payoffs of the traded item is associated with
    outcomes of future events.

1Percentage of Vote Share That Clinton Wins
9
Prediction Markets
  • A prediction market is a financial market that is
    designed for information aggregation and
    prediction.
  • Payoffs of the traded item is associated with
    outcomes of future events.

1Percentage of Vote Share That Clinton Wins
f(x)
10
Prediction Market 1, 2, 3
  • Turn an uncertain event of interest into a random
    variable
  • Hillary Clinton wins election? (Y/N) gt 1/0
    random variable.
  • Create a financial contract, payoff value of
    the random variable
  • Open a market in the financial contract and
    attract traders to wager and speculate

11
Terminology
  • Contract, security, contingent claim, stock,
    derivatives (futures, options), bet, gamble,
    wager, lottery
  • Key aspect payoff is uncertain
  • Prediction markets, information markets, virtual
    stock markets, decision markets, betting markets,
    contingent claim markets
  • Historically mixed reputation, but can serve
    important social roles

12
Bird Flu Market
http//intrade.com
Screen capture 2008/02/02
13
Search Engine Market Shares
http//intrade.com
Screen capture 2008/02/02
14
Super Bowl Markets
15
Function of Markets 1 Get Information
  • price ? expectation of r.v. all information
  • (in theory, lab experiments, and empirical
    studies)

16
Function of Markets 1 Get Information
  • price ? expectation of r.v. all information
  • (in theory, lab experiments, and empirical
    studies)

1 if Patriots win, 0 otherwise
17
Function of Markets 1 Get Information
  • price ? expectation of r.v. all information
  • (in theory, lab experiments, and empirical
    studies)

1 if Patriots win, 0 otherwise
Value of Contract
?
18
Function of Markets 1 Get Information
  • price ? expectation of r.v. all information
  • (in theory, lab experiments, and empirical
    studies)

1 if Patriots win, 0 otherwise
Event Outcome
Value of Contract
Payoff
1
Patriots win
?
0
Patriots lose
19
Function of Markets 1 Get Information
  • price ? expectation of r.v. all information
  • (in theory, lab experiments, and empirical
    studies)

1 if Patriots win, 0 otherwise
Event Outcome
Value of Contract
Payoff
P( Patriots win )
1
Patriots win
?
1- P( Patriots win )
0
Patriots lose
20
Function of Markets 1 Get Information
  • price ? expectation of r.v. all information
  • (in theory, lab experiments, and empirical
    studies)

1 if Patriots win, 0 otherwise
Event Outcome
Value of Contract
Payoff
P( Patriots win )
1
Patriots win
P( Patriots win )
1- P( Patriots win )
0
Patriots lose
21
Function of Markets 1 Get Information
  • price ? expectation of r.v. all information
  • (in theory, lab experiments, and empirical
    studies)

1 if Patriots win, 0 otherwise
Event Outcome
Value of Contract
Payoff
P( Patriots win )
1
Patriots win
P( Patriots win )
1- P( Patriots win )
0
Patriots lose
Equilibrium Price ? Value of Contract ? P(
Patriots Win )
Market Efficiency
22
Non-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

23
Non-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

24
Function of Markets 2 Risk Management
  • If is terrible to me,
  • I buy a bunch of
  • If my house is struck by lightening, I am
    compensated.

25
Risk 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

26
Financial Markets vs. Prediction Markets
27
Does 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
  • and more

28
An 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

29
Contracts and Mechanisms
  • How is it traded?the mechanism
  • Call market
  • Continuous double auction
  • Continuous double auction w/ market maker
  • Pari-mutuel market
  • Bookmaker
  • Combinatorial
  • Automated market maker
  • What is being traded?the good
  • Define
  • Random variable
  • Payoff function
  • Payoff output

30
Contracts
  • Random variables (Questions to ask)
  • Binary, Discrete
  • Tomorrow or
  • Sales revenue lt 100k, 100k - 200k, gt200k
  • Continuous
  • interest rate, temperature, vote share
  • Clarity
  • Clinton wins
  • Saddam out

31
Contracts
  • Payoff functions
  • Winner-takes-all (Arrow-Debreu)
  • Index, continuous
  • Dividend, pari-mutuel, option max0, s-k,
    arbitrary function
  • Payoff output
  • Real money, play money, prize, lottery

32
Call Market and CDA
  • Call market
  • Stock market mechanism before 1800
  • Orders are collected over a period of time
    collected orders are matched at end of period
  • Price is set such that demandsupply
  • Continuous double auction (CDA)
  • Current stock market mechanism
  • Buy and sell orders continuously come in
  • As soon as bid ? ask, a transaction occurs
  • IEM, TradeSports, NewsFutures

33
CDA with Market Maker
  • Same as CDA, but with a market maker
  • A market maker is an extremely active, high
    volume trader (often institutionally affiliated)
    who is nearly always willing to buy at some price
    p and sell at some price q p
  • Market maker essentially sets prices others take
    it or leave it
  • Market maker bears risk, increases liquidity
  • HXS, WSE

34
Pari-Mutuel Market
  • E.g. horse racetrack style wagering
  • Two outcomes A B
  • Wagers

Source Pennock
35
Pari-Mutuel Market
  • E.g. horse racetrack style wagering
  • Two outcomes A B
  • Wagers

?
Source Pennock
36
Pari-Mutuel Market
  • E.g. horse racetrack style wagering
  • Two outcomes A B
  • Wagers

?
Source Pennock
37
Bookmaker
  • Common in sports betting, e.g. Las Vegas
  • Bookmaker is like a market maker in a CDA
  • Bookmaker sets money line, or the amount you
    have to risk to win 100 (favorites), or the
    amount you win by risking 100 (underdogs)
  • Bookmaker makes adjustments considering amount
    bet on each side /or subjective probs
  • Alternative bookmaker sets game line, or
    number of points the favored team has to win the
    game by in order for a bet on the favorite to
    win line is set such that the bet is roughly a
    50/50 proposition

38
Outline
  • Introduction to prediction markets
  • What is a prediction market?
  • Functions of markets
  • Contracts and mechanisms
  • Prediction market examples
  • Iowa Electronic Markets
  • Yahoo! Tech Buzz Game
  • Looking forward
  • Decision markets
  • Combinatorial markets

39
Iowa Electronic Markets (IEM)
http//www.biz.uiowa.edu/iem
2008 U.S. Presidential Democratic Nomination
Markets
1 if Hillary Clinton wins
1 if Barack Obama wins
1 if other wins
1 if John Edwards wins
source http//iemweb.biz.uiowa.edu/graphs/graph_
DConv08.cfm, as of 2/2/08
40
IEM Winner Takes All Market
2008 US Presidential Election WTA Market
1 if Democrat votes gt Repub
1 if Republican votes gt Dem
priceERPr(R)0.415
Source http//www.biz.uiowa.edu/iem/, as of
2/2/08
41
IEM Vote Share Market
2008 US Presidential Election Vote Share Market
1 ? vote share of Dem
1 ? vote share of Repub
priceEVS of Repub48.8
Source http//www.biz.uiowa.edu/iem/, as of
2/2/08
42
IEM 1992
Source Berg, DARPA Workshop, 2002
43
Example IEM
Source Berg, DARPA Workshop, 2002
44
Example IEM
Source Berg, DARPA Workshop, 2002
45
Tech Buzz Game
http//buzz.research.yahoo.com
  • Yahoo!,OReilly launched Buzz Game 3/05 _at_ETech
  • Research testbed for investigating prediction
    markets
  • Buy stock in hundreds of technologies
  • Earn dividends based on search buzz at Yahoo!
    Search
  • Mechanism dynamic pari-mutuel market

46
Technology Forecasts
  • iPod phone
  • Another Apple unveiling 10/12 iPod Video

price
searchbuzz
47
Tech Buzz Game Performance
Based on data from 9/29/05 to 1/27/06, 175 stocks
in 44 markets
48
Outline
  • Introduction to prediction markets
  • What is a prediction market?
  • Functions of markets
  • Contracts and mechanisms
  • Prediction market examples
  • Iowa Electronic Markets
  • Yahoo! Tech Buzz Game
  • Looking forward
  • Decision markets
  • Combinatorial markets

49
Predicting the CEO
  • Will Mr. Smith or Ms. Jones be the CEO of company
    X?

1 if Mr. Smith becomes CEO
Pr(Mr. Smith)
1
Pr(Ms. Jones)
1 if Ms. Jones becomes CEO
50
Predicting CEO Outcomes
  • How will CEO affect stock prices?
  • Alternatively,

1 if Mr. Smith becomes CEO stock price goes up
1 if Mr. Smith becomes CEO stock price goes
down
1 if Ms. Jones becomes CEO stock price goes up
1 if Ms. Jones becomes CEO stock price goes
down
1 share of stock, if Mr. Smith becomes CEO
1 share of stock, if Ms. Jones becomes CEO
51
CEO Decision Market
  • Should company X hire Mr. Smith or Ms. Jones as
    CEO?

1 if Mr. Smith becomes CEO stock price goes up
1 if Mr. Smith becomes CEO
Pr(stock upMr. Smith)
Pr(Mr. Smith)
Which one is higher?
1
Pr(Ms. Jones)
1 if Ms. Jones becomes CEO
Pr(stock upMs. Jones)
1 if Ms. Jones becomes CEO stock price goes up
Pr(stock upMr. Smith)Pr(Mr. Smith Stock
up)/Pr(Mr. Smith)
52
CEO Decision Market
  • Conditional market
  • 1 if stock price goes up and Mr. Smith becomes
    CEO
  • 0 if stock price goes down and Mr. Smith
    becomes CEO
  • called off if Mr. Smith does not become CEO

1 if stock price goes up Mr. Smith becomes CEO
1 if stock price goes up Mr. Jones becomes CEO
53
Decision Markets Give E(OC)
  • Outcomes
  • GDP per capita
  • War deaths
  • Lifespan
  • School test scores
  • Stock price
  • Product sales
  • Choices
  • FED money policy
  • Next president
  • Health care regulation
  • School vouchers
  • Who is CEO
  • Which ad agency

Source Hanson
54
Election Decision Markets
http//intrade.com
Screen capture 2008/02/02
55
A Combinatorics ExampleMarch Madness
56
A Combinatorics ExampleMarch Madness
57
A Combinatorics ExampleMarch Madness
58
Combinatorics ExampleMarch Madness
  • Typical todayNon-combinatorial
  • Team wins Rnd 1
  • Team wins Tourney
  • A few other props
  • Everything explicit(By def, small )
  • Every bet independent
  • Ignores logical probabilistic relationships
  • Combinatorial
  • Any property
  • Team wins Rnd kDuke gt UNC,NCSTACC wins 5
    games
  • 2264 possible props(implicitly defined)
  • A bet effects related bets correctlye.g., to
    enforce logical constraints

59
Expressiveness Getting Information
  • Things you can say today
  • (gt43 chance that) Hillary wins
  • GOP wins Texas
  • YHOO stock gt 30 Feb. 2008
  • Duke wins NCAA tourney
  • Things you cant say (very well) today
  • Oil down, DOW up, Hillary wins
  • Hillary wins election, given that she wins OH
    FL
  • YHOO btw 25.8 32.5 Feb. 2008
  • No. 1 seed in NCAA tourney win more than No. 2
    seed

60
ExpressivenessProcessing Information
  • Independent markets today
  • Horse race win, place, show pools
  • Stock options at different strike prices
  • Every game/proposition in NCAA tourney
  • Almost everything Stocks, wagers, intrade, ...
  • Information flow (inference) left up to traders
  • Better
  • Let traders focus on predicting whatever they
    want, however they want.
  • Mechanism takes care of logical/probabilistic
    inference

61
Combinatorial Markets
  • Single-elimination tournament betting
    (Bracketology)
  • Team A wins round 5
  • Team A beats team B given that they meet
  • Permutation style betting
  • Horse A beats horse B
  • Horse A finishes at position 1, 2, or 5
  • Boolean style betting
  • Oil price decreases Democrat wins election
    Number of US Troop in Iraq decreases
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