{"id":687564,"date":"2020-08-26T11:37:31","date_gmt":"2020-08-26T18:37:31","guid":{"rendered":"https:\/\/cm-edgetun.pages.dev\/en-us\/research\/?post_type=msr-research-item&#038;p=687564"},"modified":"2020-08-26T11:37:31","modified_gmt":"2020-08-26T18:37:31","slug":"learning-performance-of-prediction-markets-with-kelly-bettors-2","status":"publish","type":"msr-research-item","link":"https:\/\/cm-edgetun.pages.dev\/en-us\/research\/publication\/learning-performance-of-prediction-markets-with-kelly-bettors-2\/","title":{"rendered":"Learning Performance of Prediction Markets with Kelly Bettors"},"content":{"rendered":"<p>In evaluating prediction markets (and other crowd-prediction mechanisms), investigators have repeatedly observed a so-called &#8220;wisdom of crowds&#8221; effect, which roughly says that the average of participants performs much better than the average participant. The market price&#8212;an average or at least aggregate of traders&#8217; beliefs&#8212;offers a better estimate than most any individual trader&#8217;s opinion. In this paper, we ask a stronger question: how does the market price compare to the best trader&#8217;s belief, not just the average trader. We measure the market&#8217;s worst-case log regret, a notion common in machine learning theory. To arrive at a meaningful answer, we need to assume something about how traders behave. We suppose that every trader optimizes according to the Kelly criteria, a strategy that provably maximizes the compound growth of wealth over an (infinite) sequence of market interactions. We show several consequences. First, the market prediction is a wealth-weighted average of the individual participants&#8217; beliefs. Second, the market learns at the optimal rate, the market price reacts exactly as if updating according to Bayes&#8217; Law, and the market prediction has low worst-case log regret to the best individual participant. We simulate a sequence of markets where an underlying true probability exists, showing that the market converges to the true objective frequency as if updating a Beta distribution, as the theory predicts. If agents adopt a fractional Kelly criteria, a common practical variant, we show that agents behave like full-Kelly agents with beliefs weighted between their own and the market&#8217;s, and that the market price converges to a time-discounted frequency. Our analysis provides a new justification for fractional Kelly betting, a strategy widely used in practice for ad-hoc reasons. Finally, we propose a method for an agent to learn her own optimal Kelly fraction.<\/p>\n","protected":false},"excerpt":{"rendered":"<p>In evaluating prediction markets (and other crowd-prediction mechanisms), investigators have repeatedly observed a so-called &#8220;wisdom of crowds&#8221; effect, which roughly says that the average of participants performs much better than the average participant. The market price&#8212;an average or at least aggregate of traders&#8217; beliefs&#8212;offers a better estimate than most any individual trader&#8217;s opinion. In this 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