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Learning Target-Specific Representations of Financial News Documents For Cumulative Abnormal Return Prediction

机译:学习财务新闻文件的特定目标特定代表,用于累积异常返回预测

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Texts from the Internet serve as important data sources for financial market modeling. Early statistical approaches rely on manually defined features to capture lexical, sentiment and event information, which suffers from feature sparsity. Recent work has considered learning dense representations for news titles and abstracts. Compared to news titles, full documents can contain more potentially helpful information, but also noise compared to events and sentences, which has been less investigated in previous work. To fill this gap, we propose a novel target-specific abstract-guided news document representation model. The model uses a target-sensitive representation of the news abstract to weigh sentences in the news content, so as to select and combine the most informative sentences for market modeling. Results show that document representations can give better performance for estimating cumulative abnormal returns of companies when compared to titles and abstracts. Our model is especially effective when it used to combine information from multiple document sources compared to the sentence-level baselines.
机译:互联网上的文本作为金融市场建模的重要数据来源。早期统计方法依赖于手动定义的功能来捕获患有特征稀疏性的词汇,情绪和事件信息。最近的工作已经考虑了新闻标题和摘要的学习密集表示。与新闻标题相比,与事件和句子相比,完整的文件可以包含更多潜在的有用信息,而且还有噪音,而且噪音相比,这在以前的工作中没有调查。为了填补这一差距,我们提出了一种小说特定的特定于目标的抽象新闻文件代表模型。该模型使用新闻摘要的目标敏感表示来称量新闻内容中的句子,以便选择并结合最佳的市场建模句子。结果表明,与标题和摘要相比,文件表示可以提供更好的表现,以估计公司的累积异常回报。与句子级基线相比,我们的模型用于将来自多个文档源的信息组合在一起时特别有效。

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