A discussion on the accuracy-complexity relationship in modelling fish habitat preference using genetic Takagi-Sugeno fuzzy systems

S. Fukuda, Jun Nakajima, B. Baets, W. Waegeman, T. Mukai, A. Mouton, N. Onikura
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引用次数: 4

Abstract

The relationship among accuracy, interpretability, and complexity of genetic fuzzy systems (GFSs) is a hot topic and is actively studied in the GFS domain. Because different problems have different views of interpretation, it is quite difficult to evaluate the interpretability of GFSs in general. The present study aims to analyze accuracy-complexity relationship in fish habitat modelling using a genetic Takagi-Sugeno fuzzy model called fuzzy habitat preference model (FHPM). The model complexity was defined by bit lengths of a genetic algorithm (GA) assigned to the consequent part of the model, while fuzzy rules and antecedent parts were kept the same. FHPM was developed on the basis of the mean squared errors between the composite habitat preference and the observed presence-absence of fish. The model accuracy was evaluated using multiple performance measures. As a result, the different model complexities resulted in slightly different habitat preference curves and model accuracies. At some complexities, the model accuracy was found to be slightly improved with increased model complexity. The result suggests that an optimal point exists where the model complexity can take a balance between the accuracy and the complexity of the target models, which depends partly on data characteristics and model formulations of the GFSs.
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用遗传Takagi-Sugeno模糊系统建模鱼类生境偏好的精度-复杂性关系探讨
遗传模糊系统的精度、可解释性和复杂性之间的关系是遗传模糊系统领域的研究热点。由于不同的问题有不同的解释观点,因此很难对一般的gfs的可解释性进行评价。本研究旨在利用Takagi-Sugeno遗传模糊模型,即模糊栖息地偏好模型(FHPM),分析鱼类栖息地建模的精度-复杂性关系。模型复杂度由分配给模型后继部分的遗传算法的位长度来定义,而模糊规则和先行部分保持不变。FHPM是基于复合生境偏好与观察到的鱼的存在-缺失之间的均方误差建立的。使用多种性能指标评估模型的准确性。因此,不同的模型复杂性导致生境偏好曲线和模型精度略有不同。在一定复杂度下,模型精度随着模型复杂度的增加而略有提高。结果表明,存在一个最优点,模型复杂性可以在目标模型的精度和复杂性之间取得平衡,这在一定程度上取决于gfs的数据特征和模型公式。
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