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Discovering news events that move markets

机译:发现推动市场发展的新闻事件

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Recently, there has been an explosion of interest in the use of textual sources (e.g., market reports, news articles, company reports) to predict changes in stock and commodity markets. Most of this research is on sentiment analysis, but some of this have tried to use the news itself to predict market movements. In this paper, we use 10-years of news articles - from a weekly, agricultural, trade newspaper - to predict price changes in a commodity market for beef. Two experiments explore the different ways in which news reports affect the market via 1) major market-impacting events (i.e., rare natural disasters or food scandals); or 2) minor market-impacting events (e.g., mundane reports about inflation, oil prices, etc.). We find that different techniques need to be used to uncover major events (e.g., LLRs) as opposed to minor events (e.g., classifiers) and show that no single unified predictive model appears to be able to do both.
机译:最近,人们对使用文本源(例如市场报告,新闻文章,公司报告)来预测股票和商品市场的变化的兴趣激增。这项研究大部分是基于情绪分析的,但其中一些尝试利用新闻本身来预测市场走势。在本文中,我们使用10年的新闻报道(来自每周的农业,商业报纸)来预测牛肉商品市场的价格变化。两项实验探讨了新闻报道通过以下方式影响市场的不同方式:1)重大影响市场的事件(即罕见的自然灾害或食品丑闻);或2)轻微的影响市场的事件(例如有关通货膨胀,石油价格等的世俗报道)。我们发现需要使用不同的技术来发现主要事件(例如LLR),而不是次要事件(例如分类器),并且表明没有单一的统一预测模型能够同时做到这两种。

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