基于粗糙集理论的股票市场分析方法

R. Golan, W. Ziarko
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引用次数: 58

摘要

定量分析师正在帮助经纪人和投资经理进行股票市场分析和预测。量化分析师的黑魔法源于许多不断发展的人工智能(AI)技术。大量文献描述了使用人工智能技术,特别是神经网络来分析股票市场变化的尝试。然而,神经网络的主要问题是解释结果的巨大困难。神经网络方法是一种黑盒方法,其中没有从市场数据中提取有关市场指标与股票市场波动之间相互作用性质的新知识。因此,有必要发展有助于提高对市场过程的了解程度的方法和工具,同时能够作出相对准确的预测。从数据库中知识发现(KDD)的研究中产生的方法似乎为市场预测和市场数据分析提供了预测和知识获取能力的良好组合。本文介绍了粗糙集的方法,并列举了粗糙集理论(BST)在Datalogic/R+股票市场分析中的两个应用。这是基于变精度粗糙集模型(VPRS)从市场数据中获取新知识。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A methodology for stock market analysis utilizing rough set theory
Quants are aiding brokers and investment managers for stock market analysis and prediction. The Quant's black magic stems from many of the evolving artificial intelligence (AI) techniques. Extensive literature exists describing attempts to use AI techniques, and in particular neural networks, for analyzing stock market variations. The main problem with neural networks, however is the tremendous difficulty in interpreting the results. The neural nets approach is a black box approach in which no new knowledge regarding the nature of the interactions between the market indicators and the stock market fluctuations is extracted from the market data. Consequently, there is a need to develop methodologies and tools which would help in increasing the degree of understanding of market processes and, at the same time, would allow for relatively accurate predictions. The methods stemming from the research on knowledge discovery in databases (KDD) seem to provide a good mix of predictive and knowledge acquisition capabilities for the purpose of market prediction and market data analysis. This paper describes the methodology of rough sets while citing two applications which apply rough set theory (BST) for stock market analysis using Datalogic/R+. This is based on the variable precision model of rough sets (VPRS) to acquire new knowledge from market data.
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