标题: | 基于筹码面分析利用学习分类元系统于股票市场 Applying Learning Classifier System to Stock Market Based on Institutional Analysis |
作者: | 林如茵 陈安斌 资讯管理研究所 |
关键字: | 分类元系统;筹码面;股票市场;Learning Classifier System;Institutional Analysis;Stock Market |
公开日期: | 2003 |
摘要: | 人工智慧技术应用于股票市场已经是必然的趋势,从许多的文献以及实务上的应用可以发现传统统计分析方法无法正确掌握到市场持续不断变动的特性。本论文研究尝试从筹码面的角度切进,探讨是否可由筹码面因子来判断未来股价之趋势。 首先,本文采用相关分析(Correlation Analysis)方法,来探讨选定之筹码因素与未来股价的相关程度,实验发现所选择的因子虽然在实务界或是过去文献常被利用来当作选股的先行指标,但大部分却与未来股价趋势有着很低的关联性,甚或毫无相关。进而由这些因素来作股价之回归预测分析,根据简单回归分析(Simple Regression Analysis)得到的结果,由这些因子过去的历史资料并无法得到很好的预测价值。然而,这些因子确实有其价值所在,是否因为传统统计方法无法瞭解整个环境的变动去作动态学习,导致其静态地以线性方法作分析,而得到不佳的效果,则是以下的探讨。 基本面或是技术面之股市分析已被广泛地讨论,相对地,筹码面分析较少被研究,然而在台湾市场愈来愈开放、资金愈来愈充裕的情况下,法人对于台湾市场的影响力亦愈来愈重;再者,类神经网路(Neural Network)、模糊逻辑(Fuzzy Logic)、基因演算法(Genetic Algorithms)等人工智慧技术对于挖掘股票知识的研究已有相当充分的贡献;而学习分类元系统(Learning Classifier System)拥有整合与外界的环境作互动以去学习和基因演算法的功能,为一个以规则为基准(Rule-Based)且在变动不确定的环境下运作良好的系统;因此,本文从学习分类元系统的角度切进,以更贴近人类生活的学习方式去瞭解股票市场脉动,进而计算所得的累积报酬,期望建构一个价值高、可以获取高额利润的市场机制。 本研究的目的在于利用学习分类元系统之适应动态环境学习的特性,将股票市场中之筹码面资料予以模拟,由于统计分析有时无法解释出影响环境的真正因素,而落入统计陷阱(Statistical Pitfalls),造成预测结果的不准确性,大大影响了投资人的决策;而分类元系统可以将环境中复杂因素考量进去以利于学习之行为模式,此可作为提供决策者做正确抉择的依据。 Artificial intelligence technique in stock market fluctuation evaluation has been documented in other papers and applied in many application domains. Based on previous surveys, to accurately handle the uncertainties and variations of the environment is a significant task. The thesis tries to probe into the judgment of future price trend on the basis of the institutional factors. Firstly, the traditional statistical tests are performed to discover whether there exists a relationship between the experimental indicators or not. The correlation analysis is performed on the five indicators as the condition part and future price trend. However, the experiment indicates low or non correlation between the stock price and the institutional factors. On the other hand, using institutional indicators as the simulated factors on the stock market has been proved to be quite persuasive in many documents. Thus, the simple regression analysis is used to perform for the prediction of the future price trend. However, according to the results, the future price trend cannot be accurately predicted based on the historical data. Though the consequences are unsatisfactory, the selected institutional indicators are certainly valuable for the dynamic stock market. The poor outcome has to be understood and discussed for discovering the statistical pitfalls. Therefore, the thesis attempts to apply learning classifier system (LCS), which is intended as a rule-based framework that integrates the concept of genetic algorithms, to learn and interact with the stock market environment. There are a large number of elements affecting the stock environment, selecting the most significant ones is capable of making the best investment strategies and improving the system performance. As mentioned above, the thesis focuses on the institutional indicators for modeling the behaviors in such complex environment to help investors obtaining optimal and satisfactory profits. Surveys on the selected institutional indicators, such as buy/sell of qualified foreign institutional investors (QFII), buy/sell of securities investment trusts, balance of margin purchasing, balance of short selling, and trading volume, show that market prices can be directly influenced by the above-mentioned indexes. The promising results demonstrate that, by implementing the LCS model, the rules that are discovered can be utilized to make investment strategies with progressive benefits. The statistical pitfalls might be occurred due to the incapability of understanding and modeling the uncertainties in such situation. However, the learning classifier system is capable of taking the complicated factors into account for discovering the unknown behaviors and learning the inward knowledge of the environment. |
URI: | http://140.113.39.130/cdrfb3/record/nctu/#GT009134523 http://hdl.handle.net/11536/58201 |
显示于类别: | Thesis |
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