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Text Mining News System - Quantifying Certain Phenomena Effect on the Stock Market Behavior

机译:文本挖掘新闻系统-量化某些现象对股票市场行为的影响

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Stock market prediction is influenced by manyinternal and external factors. One of these factors are the newsarticles and financial reports related to each listed company. This paper describes a system that is able to extract relevantinformation from this type of textual documents, correlate themwith the stock price movement and determine whether ornot a new released news can and in which proportion willinfluence the market behavior. Predefined ontologies are used forclassifying the news articles and automated ontology extractionfor classifying concepts and super - concepts, on an attempt tomake a semantic mining of the text news. The system is basedon a Multi-Agent Architecture that will investigate, extract andcorrelate the textual data message with the price evolution inorder to better determine buy/sell moments, the trend directionand optimize an investment portfolio. In order to validate ourmodel a prototype was developed and applied to the BucharestStock Exchange Market listed companies.
机译:股市预测受许多内部和外部因素的影响。这些因素之一是与每个上市公司有关的新闻报道和财务报告。本文介绍了一种系统,该系统能够从此类文本文档中提取相关信息,并将其与股价走势相关联,并确定新发布的新闻是否可以,以及将以何种比例影响市场行为。为了对文本新闻进行语义挖掘,尝试使用预定义的本体对新闻文章进行分类,并使用自动本体提取对概念和超概念进行分类。该系统基于Multi-Agent架构,该架构将调查,提取文本数据消息并将其与价格变化相关联,以便更好地确定买入/卖出时刻,趋势方向并优化投资组合。为了验证我们的模型,开发了原型并将其应用于布加勒斯特证券交易所市场的上市公司。

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