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Increasing the Explanatory Power of Investor Sentiment Analysis for Commodities in Online Media

机译:增强在线媒体商品投资者情绪分析的解释力

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摘要

Online media are an important source for investor sentiment on commodities. Although there is empirical evidence for a relationship between investor sentiment from news and commodity returns, the impact of classifier design on the explanatory power of sentiment for returns has received little attention. We evaluate the explanatory power of nine classifier designs and find that (1) a positive relationship holds between more opinionated online media sentiment and commodity returns, (2) weighting dictionary terms by machine learning increases explanatory power by up to 25%, and (3) the commonly used dictionary of Loughran and McDonald is detrimental for commodity sentiment analysis.
机译:在线媒体是投资者对商品情绪的重要来源。尽管有经验证据表明投资者的新闻情绪与商品收益之间存在关系,但分类器设计对收益情绪解释力的影响却鲜为人知。我们评估了9种分类器设计的解释力,发现(1)更自以为是的在线媒体情绪与商品退货之间存在正相关关系;(2)通过机器学习对词典术语进行加权可将解释力提高多达25%,并且(3 )常用的Loughran和McDonald词典对商品情绪分析不利。

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