Choosing news topics to explain stock market returns

P. Glasserman, K. Krstovski, Paul Laliberte, Harry Mamaysky
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引用次数: 12

Abstract

We analyze methods for selecting topics in news articles to explain stock returns. We find, through empirical and theoretical results, that supervised Latent Dirichlet Allocation (sLDA) implemented through Gibbs sampling in a stochastic EM algorithm will often overfit returns to the detriment of the topic model. We obtain better out-of-sample performance through a random search of plain LDA models. A branching procedure that reinforces effective topic assignments often performs best. We test these methods on an archive of over 90,000 news articles about S&P 500 firms.
选择新闻话题来解释股市回报
我们分析了在新闻文章中选择主题来解释股票收益的方法。我们通过实证和理论结果发现,在随机EM算法中通过Gibbs抽样实现的监督潜狄利克雷分配(sLDA)往往会过度拟合收益,从而损害主题模型。通过对普通LDA模型的随机搜索,我们获得了更好的样本外性能。一个分支过程,加强有效的主题分配通常表现最好。我们在超过90,000篇关于标准普尔500公司的新闻文章的档案中测试了这些方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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