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Using cellular evolution for diversification of the balance between accurate and interpretable fuzzy knowledge bases for classification

机译:使用细胞进化使准确和可解释的模糊知识库之间的平衡多样化,以进行分类

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Recent work combining population based heuristics and flexible models such as fuzzy rules, neural networks, and others, has led to novel and powerful approaches in many problem areas. This study tests an implementation of cellular evolution for fuzzy rule learning problems and compares the results with other related approaches. The paper also examines characteristics of the cellular evolutionary approach in generating more diverse solutions in a multiobjective specification of the learning task, and finds that solutions seem to have useful properties that could enable anticipating out of sample performance. We consider a bi-objective problem of learning fuzzy classifiers that balance accuracy and interpretability requirements.
机译:最近的工作结合了基于人口的启发式方法和诸如模糊规则,神经网络等灵活模型,在许多问题领域中产生了新颖而有效的方法。这项研究测试了针对模糊规则学习问题的细胞进化的实现,并将结果与​​其他相关方法进行了比较。本文还研究了细胞进化方法的特征,该方法在学习任务的多目标规范中生成了更多样化的解决方案,并发现解决方案似乎具有有用的属性,可以使样本性能得到预期。我们考虑了一个学习模糊分类器的双目标问题,该分类器在准确性和可解释性要求之间取得了平衡。

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