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Multi-objective learning of accurate and comprehensible classifiers - a case study

机译:准确和可理解的分类器的多目标学习 - 以案例研究

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Accuracy and comprehensibility are two important classifier properties, however they are typically conflicting. Research in the past years has shown that Pareto-based multi-objective approach for solving this problem is preferred to the traditional single-objective approach. Multi-objective learning can be represented as search that starts either from an accurate classifier and modifies it in order to produce more comprehensible classifiers (e.g. extracting rules from ANNs) or the other way around: starts from a comprehensible classifier and modifies it to produce more accurate classifiers. This paper presents a case study of applying a recent algorithm for multi-objective learning of hybrid trees MOLHC in human activity recognition domain. Advantages of MOLHC for the user and limitations of the algorithm are discussed on a number of datasets from the UCI repository.
机译:准确性和可理解性是两个重要的分类器属性,但它们通常是冲突的。在过去几年的研究表明,基于帕累托的多目标方法来解决这个问题是传统的单目标方法的优势。多目标学习可以表示为从准确的分类器开始的搜索,并修改它,以便产生更可理解的分类器(例如从ANN提取规则)或其他方式:从可理解的分类器开始并修改它以产生更多准确的分类器。本文提出了应用最近对人活动识别域中杂交树MOLHC的多目标学习算法的案例研究。在来自UCI存储库的许多数据集上讨论了MOLHC对用户的优点和算法的限制。

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