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Constructing Structural Equation Model Rule-Based Fuzzy System with Genetic Algorithm

机译:用遗传算法构造基于规则的结构方程模型模糊系统

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摘要

The present study uses the structural equation model (SEM) to analyze the correlations between various economic indices pertaining to latent variables, such as the New Taiwan Dollar (NTD) value, the United States Dollar (USD) value, and USD index. In addition, a risk factor of volatility of currency returns is considered to develop a risk-controllable fuzzy inference system. The rational and linguistic knowledge-based fuzzy rules are established based on the SEM model and then optimized using the genetic algorithm. The empirical results reveal that the fuzzy logic trading system using the SEM indeed outperforms the buy-and-hold strategy. Moreover, when considering the risk factor of currency volatility, the performance appears significantly better. Remarkably, the trading strategy is apparently affected when the USD value or the volatility of currency returns shifts into either a higher or lower state.
机译:本研究使用结构方程模型(SEM)分析与潜在变量相关的各种经济指标之间的相关性,例如新台币(NTD)值,美元(USD)值和美元指数。另外,货币收益波动的风险因素被认为是开发风险可控的模糊推理系统。基于SEM模型建立了合理的,基于语言知识的模糊规则,然后利用遗传算法对其进行了优化。实证结果表明,使用SEM的模糊逻辑交易系统的确优于购并策略。此外,当考虑货币波动的风险因素时,其表现似乎要好得多。值得注意的是,当美元价值或货币收益率的波动变为较高或较低状态时,交易策略显然受到影响。

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