基于公共知识的自然语言处理定性股市预测:统一的观点和过程

Dongning Rao, Fudong Deng, Zhihua Jiang, Gansen Zhao
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引用次数: 1

摘要

人工智能的应用有很多。其中一些专注于金融市场。他们经常使用自然语言处理方法,例如,预测股票价格。然而,他们中的大多数是不准确的。有两个原因。一方面,计算机程序在语法分析方面比语义分析更有效。另一方面,准确预测股票价格超出了我们今天的知识和能力。但是,已有的研究也有很多宝贵的经验。因此,我们提出一个统一的观点和程序,以方便使用这些经验。这个过程是基于常识的,在本文中主要用关键词来表示。它首先识别名称实体,然后使用共同知识学习规则,最后推断关键特征。这些特征,加上股票市场的其他量化特征,可能会使预测更加准确。因此,这个视图和过程可以作为许多(但不是全部)自然语言处理应用程序在股票预测中的框架。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Qualitative Stock Market Predicting with Common Knowledge Based Nature Language Processing: A Unified View and Procedure
There are many artificial intelligent applications. Some of them focus on the financial market. They often use a nature language processing method, e.g., To predict stock prices. However, most of them are inaccurate. There are two reasons. For one thing, computer programs are more effective in the syntax analysis than semantic analysis. For another, accurately predicting stock prices is beyond our knowledge and ability today. However, there are many valuable experiences in existing studies. Therefore, we propose a unified view and procedure to facilitate using these experiences. This procedure is based on the common knowledge, which is primarily expressed as keywords in this paper. It first recognizes name entities and then learns rules with the common knowledge and last inferences crucial features. These features, with other quantitative features in the stock market, may make the prediction more accurate. As a result, this view and process can be a framework for many (but not all) nature language processing applications in stock predicting.
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