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Expert Stock Picker: The Wisdom of (Experts in) Crowds

机译:专家股票选择器:(专家)人群的智慧

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The phrase "the wisdom of crowds" suggests that good verdicts can be achieved by averaging the opinions and insights of large, diverse groups of people who possess varied types of information. Online user-generated content enables researchers to view the opinions of large numbers of users publicly. These opinions, in the form of reviews and votes, can be used to automatically generate remarkably accurate verdicts-collective estimations of future performance-about companies, products, and people on the Web to resolve very tough problems. The wealth and richness of user-generated content may enable firms and individuals to aggregate consumer-think for better business understanding. Our main contribution, here applied to user-generated stock pick votes from a widely used online financial newsletter, is a genetic algorithm approach that can be used to identify the appropriate vote weights for users based on their prior individual voting success. Our method allows us to identify and rank "experts" within the crowd, enabling better stock pick decisions than the S&P 500. We show that the online crowd performs better, on average, than the S&P 500 for two test time periods, 2008 and 2009, in terms of both overall returns and risk-adjusted returns, as measured by the Sharpe ratio. Furthermore, we show that giving more weight to the votes of the experts in the crowds increases the accuracy of the verdicts, yielding an even greater return in the same time periods. We test our approach by utilizing more than three years of publicly available stock pick data. We compare our method to approaches derived from both the computer science and finance literature. We believe that our approach can be generalized to other domains where user opinions are publicly available early and where those opinions can be evaluated. For example, YouTube video ratings may be used to predict downloads, or online reviewer ratings on Digg may be used to predict the success or popularity of a story.
机译:“人群的智慧”一词表明,可以通过对拥有各种类型信息的大量不同人群的意见和见解进行平均来实现良好的判决。在线用户生成的内容使研究人员可以公开查看大量用户的意见。这些意见以评论和投票的形式,可以用来自动生成对未来公司,网络上的公司,产品和人员的未来绩效的非常准确的结论-集体估计,以解决非常棘手的问题。用户生成的内容的丰富性和丰富性可以使公司和个人聚集消费者的想法,以更好地理解业务。我们的主要贡献是一种遗传算法,可用于根据用户先前的个人投票成功为用户识别适当的投票权重,这是一种遗传算法,可将其应用于来自广泛使用的在线金融新闻通讯的用户生成的股票选择权投票。我们的方法使我们能够在人群中识别“专家”并对其进行排名,从而比S&P 500更好地进行选股决策。我们显示,在两个测试时间段(2008年和2009年),在线人群的平均表现优于S&P 500 ,以总体收益和经风险调整的收益(以夏普比率衡量)而言。此外,我们表明,对人群中专家的投票给予更多的权重可以提高判决的准确性,在同一时期内可获得更大的回报。我们通过利用三年以上的公开选股数据来测试我们的方法。我们将我们的方法与衍生自计算机科学和金融文献的方法进行了比较。我们相信,我们的方法可以推广到其他领域,在这些领域中可以较早地公开用户的意见,并且可以对这些意见进行评估。例如,YouTube视频收视率可用于预测下载,或者Digg上的在线评论者收视率可用于预测故事的成功或流行。

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