Robin Hanson has convinced Concensus Point to support combinatorial prediction markets.

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Robin Hanson:

I&#8217-ve developed a combinatorial betting tech that lets a few or many users edit an always-coherent joint probability distribution over all value combinations of some set of base variables. Far futures base variables might include the years of important tech milestones, population, wealth, or mortality values at particular future dates, etc. Each user edit would be backed by a bet, a bet invested in assets paying competitive interest/returns. This combo bet tech worked well in published lab tests, several firms have used it, and I&#8217-m now working with Consensus Point to deliver a robust commercial implementation. More on the tech here, here, and here.

See the explainer from David Pennock, which we will link to, again, later on.

MBAs on Enterprise Prediction Markets

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Alan H.:

During the class, Adam Siegel, the founder of Inkling Markets, a prediction markets consulting firm, spoke about his experiences. Of the benefits, he said that prediction markets bring clarity around information, prevent political fudging and backstabbing regarding information. Nobody is the whistleblower for challenging optimistic assumptions, rather, &#8220-it&#8217-s the market.&#8221- […]

Given that many executives and managers want to hide their poor performance, I asked Adam about who typically approaches his firm. He responded that he is usually approached by either third parties who have no P&amp-L responsibility, such as strategic planning groups, or forward thinking managers who are sick of bad forecasts being submitted. […]

Read Adam Siegel&#8217-s post about his intervention.

Google vs. Prediction Markets – Which of the 2 will detect the flu, first?

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An Irish research team hopes to make accurate forecasts of key public health indicators.

University College Cork (UCC) School of Medicine + Intrade

Dr Dylan Evans:

Prediction markets are [specialized], small-scale financial markets operated to predict future events. The idea is that the collected knowledge of many people, each with a different perspective, will be more accurate than an individual or small group or even experts.

When they have been used to predict the outcomes of political elections, prediction markets have been found to be more accurate than alternative methods of forecasting.

The obvious area to look at in the first instance is infectious disease, but we plan to extend our research into many other areas of public health. At the moment, people do not get data on infectious disease until it&#8217-s a couple of weeks out of date and we need to get it quicker.

Dylan Evans&#8217- website

My opinion:

  • To assess the benefits (if any) of the prediction markets used as forecasting tools for public health, researchers will have to compare them with the experts&#8230- and with the &#8220-Google Flu Trends&#8221- web service, which is entirely free of charge and free of advertising (being sponsored by the Google Foundation). Does not sound good for the prediction markets.
  • The irony is that it&#8217-s our prediction market researchers (David Pennock and his accomplices) who gave weight to this non-market tool. &#8212- Pennock = Treator &#8230-!!&#8230- [ :-D – Joke. ]

APPENDIX:

Iowa Health Prediction Market

Google Flu Trends

– See also: Google Foundation on &#8220-Predict and Prevent&#8221-.

– Google Trends

– David Pennock on the fact that flu-related searches on the Web are precise predictors of the upcoming influenza outbreaks.

– BBC

– New York Times

– WSJ Health blog

Prediction Market Definition -now updated with the name of Chris Hibbert and Eric Cramptons cult leader built into.

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Prediction markets produce dynamic, objective probabilistic predictions on the outcomes of future events by aggregating disparate pieces of information that the traders bring when they agree on prices. These event derivative traders feed on the primary indicators &#8212-i.e., the primary sources of information. (Garbage in, garbage out&#8230- Intelligence in, intelligence out&#8230-) Hence, prediction markets are meta forecasting tools.

Each prediction exchange organizes its own set of real-money and/or play-money markets, using either a CDA or a MSR mechanism.

A prediction market is a market for a contract that yields payments based on the outcome of a partially uncertain future event, such as an election. A contract pays $100 only if candidate X wins the election, and $0 otherwise. When the market price of an X contract is $60, the prediction market believes that candidate X has a 60% chance of winning the election. The price of this event derivative can be interpreted as the objective probability of the future outcome (i.e., its most statistically accurate forecast). A 60% probability means that, in a series of events each with a 60% probability, then 60 times out of 100, the favored outcome will occur- and 40 times out of 100, the unfavored outcome will occur.

The value of a set of prediction markets consists in the added accuracy that these prediction markets provide relative to the other forecasting mechanisms, times the value of accuracy in improved decisions, minus the cost of maintaining these prediction markets, relative to the cost of the other forecasting mechanisms. According to Robin Hanson, a highly accurate prediction market has little value if some other forecasting mechanism(s) can provide similar accuracy at a lower cost, or if very few substantial decisions are influenced by accurate forecasts on its topic.

WORLDS MOST EXPERIENCED PREDICTION MARKET PRACTITIONER CASTS A DOUBT ON THE VALIDITY OF MSR, IN USE IN MOST PUBLIC PLAY-MONEY PREDICTION EXCHANGES AND IN MOST ENTERPRISE PREDICTION EXCHANGES.

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