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Mining gold in senior executives' pockets: An online automatically trading strategy

机译:高管口袋里的黄金开采:一种在线自动交易策略

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Online financial news is an important part of financial Big Data. In this paper, we propose a model to promptly recognize valuable news about senior executives' behavior and an online automatically trading strategy based on the model. Our model consists of three phases. First, word segmentation and keyword extraction are employed to quantify the financial text. For a better efficiency and promptness, manifold learning is utilized to reduce the dimension of keyword vector. Second, the idea of financial event study is utilized to judge whether a specific type of news could produce significantly positive or negative return. Third, support vector machine is employed to recognize the specific financial news and associate the quantified text with the stock return. Experiments show that the recognition work performed excellently and the behavior of increasing shareholdings produces significant positive return. Our online automatically trading strategy based on the model obtained a return of 55.62%, outperforming three main benchmarks in the same period, 4.52%, 12.47% and -6.89% respectively.
机译:在线金融新闻是金融大数据的重要组成部分。在本文中,我们提出了一个模型,该模型可以立即识别出有关高管人员行为的有价值的消息,并提出一种基于该模型的在线自动交易策略。我们的模型包括三个阶段。首先,采用分词和关键词提取来量化财务文本。为了获得更好的效率和及时性,利用流形学习来减少关键字向量的维数。其次,利用金融事件研究的思想来判断特定类型的新闻是否会产生显着的正收益或负收益。第三,采用支持向量机识别特定的金融新闻,并将量化后的文本与股票收益相关联。实验表明,识别工作表现出色,增加持股量的行为会产生可观的正回报。我们基于该模型的在线自动交易策略获得了55.62%的回报,超过了同期的三个主要基准,分别为4.52%,12.47%和-6.89%。

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