An Algorithm for Supporting Decision Making in Stock Investment through Opinion Mining and Machine Learning

Yujin Jeong, Sunhye Kim, B. Yoon
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引用次数: 8

Abstract

This paper suggests an algorithm for supporting decision making in stock investment through opinion mining and machine learning. Within the framework of supporting decision making, this research deals with (1) fake information filtering to accurate foresight, (2) credit risk assessment, and (3) prediction based on critical signal detection. At first, financial data including news, SNS, the financial statements is collected and then, among them, fake information such as rumors and fake news is refined by author analysis and the rule-based approach. Second, the credit risk is assessed by opinion mining and sentiment analysis for both social data and news in the form of sentimental score and trend of documents for each stock. Third, a risk signal in stock investment is detected in accordance with the credit risk derived from opinion mining and financial risk identified by the financial database. Consequently, the possibility of credit events such as delisting and bankruptcy will be forecast in the near future based on the risk signal. The proposed algorithm helps investors to monitor relevant information objectively through fake information filtering as well as to make correct judgments in stock investment.
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基于意见挖掘和机器学习的股票投资决策支持算法
本文提出了一种基于意见挖掘和机器学习的股票投资决策支持算法。在支持决策的框架下,本文研究了(1)虚假信息过滤以实现准确预测;(2)信用风险评估;(3)基于关键信号检测的预测。首先收集包括新闻、SNS、财务报表在内的金融数据,然后通过作者分析和基于规则的方法提炼其中的谣言、假新闻等虚假信息。其次,通过对社会数据和新闻的意见挖掘和情感分析,以每只股票的情感得分和文档趋势的形式评估信用风险。第三,根据意见挖掘得到的信用风险和金融数据库识别的金融风险,检测股票投资中的风险信号。因此,在不久的将来,将根据风险信号预测退市、破产等信用事件的可能性。该算法通过虚假信息过滤,帮助投资者客观地监控相关信息,在股票投资中做出正确的判断。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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