计算动词理论在股票市场数据分析中的应用

Mengfan Zhang, Tao Yang
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引用次数: 4

摘要

本文将计算动词理论(CVT)应用于股票市场数据分析。利用CVT方法,将股票市场数据聚类成不同的类别,并用每个类别的典型曲线表示。本文以上海证券交易所2010年3月的市场数据样本为研究对象。首先,利用MATLAB程序对股票数据进行预处理。预处理包括曲线平滑(通过低通滤波实现)和归一化。其次,通过与标准计算动词的比较,利用计算动词相似度对平滑时间序列进行处理。第三,采用Kmeans聚类算法对股票数据进行聚类,得到股票市场中最具代表性的曲线。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of computational verb theory to analysis of stock market data
In this paper, computational verb theory (CVT) is applied to the analysis of stock market data. By using CVT, stock market data are clustered into different categories and represented by typical curves for each category. In this paper, researches on the market data samples from Shanghai Stock Exchange in March 2010 are reported. Firstly, MATLAB programs are used to preprocess the stock data. The preprocess consists of curve smoothing, which is achieved by low-pass filtering, and normalization. Secondly, computational verb similarities are used to process the smoothed time series by comparing them with standard computational verbs. Thirdly, Kmeans clustering algorithm is used to cluster the stock data and yields the most representative curves in the stock market.
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