金融数据的短期联合运动检测

Kittisak Kerdprasop, Nittaya Kerdprasop
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摘要

本文旨在运用统计和基于树的数据挖掘技术,建立一个预测泰国股票价格指数(SET)走势的模型。预测指标是香港恒生指数(HSI)和日经225指数。我们还将指数与前一天恒生指数和日经指数收盘价格的差异作为额外的预测指标。与之前的收盘指数相比,SET的正或负运动是一个二进制信号,它被构建并用作我们模型的目标。SET,恒生指数和日经指数之间的共同运动是一种短期检测,因为它捕获了日内关联。通过应用特征子集选择技术,对原始构建的模型进行简化,使其易于理解。我们最终得到了一个简洁的树状模型来预测索引移动,准确率高达70%。
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A short term co-movement detection of financial data
This paper aims to apply statistical and the tree-based data mining techniques to build a model for predicting the movement of Thailand stock price index (SET). Predictors are stock price indexes of Hong Kong Hang Seng (HSI) and Nikkei 225. We also incorporate the index difference from the previous day closing price of HSI and Nikkei as additional predictors. The positive or negative movement of SET compared to the earlier closing index is a binary signal that is constructed and used as a target for our model. The co-movement among SET, HSI, and Nikkei is a short term detection in that it captures intra-day association. The original built model is manipulated to be concise and comprehensible through the application of feature subset selection techniques. We finally obtain a concise tree model to forecast index movement with accuracy as high as 70%.
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