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A Global Indicator for Measuring the Efficiency of Machine Learning Classifier Based on Multi-Criteria Approach

机译:基于多准则方法的机器学习分类器效率全局指标

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The main challenge that faces any researcher in the field of machine learning is determining the quality of an indicator used for measuring the efficiency of classifier techniques. This issue based on Multiple-Criteria Decision Making (MCDM) has not been tackled by any researcher until now. The previous work concerned with a single classical criterion (Accuracy Level) ignoring other important criteria in real-life. This paper presents a novel indicator for measuring the efficiency of classifier techniques. This measure is a global indicator with multi-criteria approach based on the technique for preference by similarity to the ideal solution (TOPSIS). This indicator is characterized by its ability to taking in account all previous criteria. In addition, two novel criteria are created by authors: Learning Efficiency Ratio (LER), and the CPU time efficiency. The classifiers evaluation process includes the classical classifiers: Support Vector Machines (SVM), Multi-layer perceptron (MLP), Gene Expression Programming (GEP), Single Decision Tree (STR), and the techniques that achieved the best results in literature. Inaddition, the latest classifiers: Tropical Collective Machine Learning (TCML), and Dempster-Shafer Collective Machine Learning (DSCML) using the proposed indicator. The comparison is performed using twenty-five standard datasets (benchmarks). The results supported by statistical analysis (T-test) show the efficiency and effectiveness of the proposed global indicator for selecting the best classifier and its ability to measure the classifier efficiency based on multi-criteria. Results promise the optimistic use of the global indicator in the classifiers evaluation process for real-life problems.
机译:机器学习领域的任何研究人员面临的主要挑战是确定用于测量分类器技术效率的指标的质量。迄今为止,任何研究人员都没有解决基于多标准决策(MCDM)的问题。先前的工作只涉及一个经典标准(准确性水平),而忽略了现实生活中的其他重要标准。本文提出了一种用于衡量分类器技术效率的新型指标。此度量是基于基于与理想解决方案(TOPSIS)相似的偏好技术的多准则方法的全局指标。该指标的特点是能够考虑所有先前的标准。此外,作者创建了两个新颖的标准:学习效率比(LER)和CPU时间效率。分类器评估过程包括经典分类器:支持向量机(SVM),多层感知器(MLP),基因表达编程(GEP),单决策树(STR),以及在文献中获得最佳结果的技术。此外,最新的分类器:使用建议的指标的热带集体机器学习(TCML)和Dempster-Shafer集体机器学习(DSCML)。使用25个标准数据集(基准)进行比较。统计分析(T检验)支持的结果表明,所建议的全局指标用于选择最佳分类器的效率和有效性,以及基于多准则测量分类器效率的能力。结果表明,对于现实生活中的问题,在分类器评估过程中可以乐观地使用全局指标。

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