标题: | 以总体经济因素预测股票报酬率—类神经网路与多元回归之比较研究 An Empirical Study of Predicting Rate of Return of Stock by Using Neural Network Method in Taiwan Stock Market |
作者: | 林威廷 Lin, Wei-Ting 陈安斌 Chen, An-Pin 资讯管理研究所 |
关键字: | 报酬率;类神经网路;多元回归;总体经济因素;投资组合;rate of return;neural network;multiple regression; macro- economic factor;portfolio |
公开日期: | 1994 |
摘要: | 证券的风险可分为系统风险与特异风险,其中系统风险主要来自于市场因 素,而特异风险主要来自产业因素及公司因素。若采用投资组合的方式可 减低非系统风险,使总风险能减低至系统风险。本研究以总体经济因素探 讨投资组合报酬率,并依不同的投资组合数目进行投资组合报酬率的预测 。资料搜集样本期间自民国七十五年迄至民国八十二年,主要资料取自台 湾经济新报社之总体经济资料库。所使用的研究方法有一般的多元回归模 式以及类神经网路模式。主要目的为引用类神经网路于证券总体面的分析 ,有别过去使用技术指标预测股价的方式,并扩大类神经网路所能应用的 范围,同时比较两模式在此问题上的预测能力。实证结果发现:一、投资 组合的报酬率预测误差会随着投资组合数目的增加而减少。显示总体经济 因素较适合投资组合数目大者。可能影响单一证券的因素有很多,而且经 由投资组合可以消去个别证券的风险。二、在预测能力方面,在样本内的 情形下,类神经网路比多元回归模式为优。在样本外的情形下,两者在投 资组合数目稀少时,类神经网路的预测能力比多元回归模式为差;随着投 资组合数目的增加,其预测绩效逐渐优于多元回归模式,显示类神经网路 可能较能掌握整体趋势。故类神经网路比较适合应用于投资组合报酬率的 预测分析。 The analysis of a security investment risk basically contains both systemic risk and idiosyncratic risk; the former is caused by market factors and the latter by industry and company factors. As a well known rule that a feasible stock portfolio investment always can minimize idiosyncratic risk and make total risk as low as systemic risk. Thus, this article tried to compare the predictabilities of the multiple regression model and the neural network model, based on the same macro-economic factors. In order to accomplish this purpose, rate of return from different sets were collected. Samples were collected from the dataset of Taiwan Economics Newspaper in the period of 1986 to 1993 and analyzed by using multiple regression model and neural network model. This study not only compared the predictabilities of the two models, but also extended the application of neural network model, which, in contrast to technical indicators, was applied to predict security price by using macro-analysis of security. Three major findings of this study were as follows: 1. The prediction error on rate of return of a stock portfolio decreases with the increment of the number of stocks in a portfolio. This indicates that using macro-economic factors to analyze stock portfolio investment is only good in the large numbers of stock in a portfolio. 2. Although the rate of return from any specific security can be affected by many factors, its risk can be reduced by using portfolio. Finally, it was concluded that neural network technique is a better tool for prediction on the rate of return of a portfolio, which may be due to the fact that neural network model can handle the whole factors parallelly or simultaneously. |
URI: | http://140.113.39.130/cdrfb3/record/nctu/#NT830396016 http://hdl.handle.net/11536/59122 |
显示于类别: | Thesis |