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Machine learning the harness track: Crowdsourcing and varying race history

机译:机器学习线束轨迹:众包和不同的比赛历史

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Racing prediction schemes have been with mankind a long time. From following crowd wisdom and betting on favorites to mathematical methods like the Dr. Z System, we introduce a different class of prediction system, the S&C Racing system that derives from machine learning. We demonstrate the S&C Racing system using Support Vector Regression (SVR) to predict finishes and analyzed it on fifteen months of harness racing data from Northfield Park, Ohio. We found that within the domain of harness racing, our system outperforms crowds and Dr. Z Bettors in returns per dollar wagered on seven of the most frequently used wagers: Win $1.08 return, Place $2.30, Show $2.55, Exacta $19.24, Quiniela $18.93, Trifecta $3.56 and Trifecta Box $21.05. Furthermore, we also analyzed a range of race histories and found that a four race history maximized system accuracy and payout. The implications of this work suggest that an informational inequality exists within the harness racing market that was exploited by S&C Racing. While interesting, the implications of machine learning in this domain show promise.
机译:赛车预测方案已经存在于人类很长时间了。从跟随众人的智慧,押注最爱到Z.博士等数学方法,我们引入了另一类预测系统,即源自机器学习的S&C Racing系统。我们演示了使用支持向量回归(SVR)来预测完成情况的S&C Racing系统,并根据俄亥俄州Northfield Park的15个月线束赛车数据对它进行了分析。我们发现,在线束赛车领域,我们的系统在以下七个最常用的赌注上的每美元收益回报上均优于人群和Z Bettors博士:赢得$ 1.08收益,放置$ 2.30,显示$ 2.55,Exacta $ 19.24,Quiniela $ 18.93,Trifecta $ 3.56和Trifecta Box $ 21.05。此外,我们还分析了一系列比赛历史,发现四次比赛历史使系统准确性和支出最大化。这项工作的含义表明,在S&C Racing利用的线束赛车市场中存在信息不平等。有趣的是,机器学习在这一领域的意义令人鼓舞。

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