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An experimental study of Multi-Objective Evolutionary Algorithms for balancing interpretability and accuracy in fuzzy rulebase classifiers for financial prediction

机译:平衡模糊规则库分类器可解释性和准确性的多目标进化算法的实验研究

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This paper examines the advantages of simple models over more complex ones for financial prediction. This premise is examined using a genetic fuzzy framework. The interpretability of fuzzy systems is oftentimes put forward as a unique advantageous feature, sometimes to justify effort associated with using fuzzy classifiers instead of alternatives that can be more readily implemented using existing tools. Here we investigate if model interpretability can provide further benefits by realizing useful properties in computationally intelligent systems for financial modeling. We test an approach for learning momentum based strategies that predict price movements of the Bombay Stock Exchange (BSE). The paper contributes an experimental evaluation of the relationship between the predictive capability and interpretability of fuzzy rule based systems obtained using Multi-Objective Evolutionary Algorithms (MOEA.)
机译:本文研究了简单模型相对于更复杂模型的财务预测优势。使用遗传模糊框架检查此前提。模糊系统的可解释性通常是作为独特的优势而提出的,有时是为了证明与使用模糊分类器(而不是使用现有工具更容易实现的替代方法)相关的努力是合理的。在这里,我们调查模型的可解释性是否可以通过在用于财务建模的计算智能系统中实现有用的属性来提供进一步的好处。我们测试了一种学习基于动量的策略的方法,该策略可预测孟买证券交易所(BSE)的价格走势。本文对使用多目标进化算法(MOEA。)获得的基于模糊规则的系统的预测能力和可解释性之间的关系进行了实验评估。

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