Utilizing Genetic Algorithms in Conjunction with ANN-Based Stock Valuation Models to Enhance the Optimization of Stock Investment Decisions

AI Pub Date : 2024-07-01 DOI:10.3390/ai5030050
Ying-Hua Chang, Chen-Wei Huang
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Abstract

Navigating the stock market’s unpredictability and reducing vulnerability to its volatility requires well-informed decisions on stock selection, capital allocation, and transaction timing. While stock selection can be accomplished through fundamental analysis, the extensive data involved often pose challenges in discerning pertinent information. Timing, typically managed through technical analysis, may experience delays, leading to missed opportunities for stock transactions. Capital allocation, a quintessential resource optimization dilemma, necessitates meticulous planning for resolution. Consequently, this thesis leverages the optimization attributes of genetic algorithms, in conjunction with fundamental analysis and the concept of combination with repetition optimization, to identify appropriate stock selection and capital allocation strategies. Regarding timing, it employs deep learning coupled with the Ohlson model for stock valuation to ascertain the intrinsic worth of stocks. This lays the groundwork for transactions to yield favorable returns. In terms of experimentation, this study juxtaposes the integrated analytical approach of this thesis with the equal capital allocation strategy, TAIEX, and the Taiwan 50 index. The findings affirm that irrespective of the Taiwan stock market’s bullish or bearish tendencies, the method proposed in this study indeed facilitates investors in making astute investment decisions and attaining substantial profits.
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将遗传算法与基于 ANN 的股票估值模型结合使用,提高股票投资决策的优化程度
要驾驭股市的不可预测性并降低易受其波动影响的程度,就必须在股票选择、资本分配和交易时机方面做出明智的决策。虽然选股可以通过基本面分析来完成,但其中涉及的大量数据往往给辨别相关信息带来挑战。通常通过技术分析管理的时机选择可能会出现延误,导致错失股票交易机会。资本分配是典型的资源优化难题,需要精心策划才能解决。因此,本论文利用遗传算法的优化属性,结合基本面分析和重复优化组合的概念,确定适当的选股和资本配置策略。在时机选择方面,论文利用深度学习与股票估值的 Ohlson 模型相结合,确定股票的内在价值。这为交易产生有利回报奠定了基础。在实验方面,本研究将本论文的综合分析方法与等额资本配置策略、TAIEX 和台湾 50 指数并列。研究结果证实,无论台湾股市是牛市还是熊市,本研究提出的方法确实有助于投资者做出明智的投资决策,并获得丰厚的利润。
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