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Identifying Predictive Causal Factors from News Streams

机译:识别新闻流的预测因果因素

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We propose a new framework to uncover the relationship between news events and real world phenomena. We present the Predictive Causal Graph (PCG) which allows to detect latent relationships between events mentioned in news streams. This graph is constructed by measuring how the occurrence of a word in the news influences the occurrence of another (set of) word(s) in the future. We show that PCG can be used to extract latent features from news streams, outperforming other graph-based methods in prediction error of 10 stock price time series for 12 months. We then extended PCG to be applicable for longer time windows by allowing time-varying factors, leading to stock price prediction error rates between 1.5% and 5% for about 4 years. We then manually validated PCG, finding that 67% of the causation semantic frame arguments present in the news corpus were directly connected in the PCG, the remaining being connected through a semantically relevant intermediate node.
机译:我们提出了一个新的框架来揭示新闻事件与现实世界之间的关系。我们介绍了预测因果图(PCG),其允许检测新闻流中提到的事件之间的潜在关系。通过测量新闻中的单词的发生如何影响未来另一个(套)字的发生,构建该图。我们表明PCG可用于从新闻流中提取潜在特征,优于10个股票价格时间序列的预测误差中的其他基于图形的方法。然后,我们通过允许时变因子扩展PCG以适用于更长的时间窗口,从而导致股票价格预测误差约为1.5%和5%,约4年。然后,我们手动验证了PCG,发现新闻语料库中存在的67%的导致语义帧参数在PCG中直接连接,剩余通过语义相关的中间节点连接。

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