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On Machine Learning with Imbalanced Data and Research Quality Evaluation Methodologies

机译:数据不平衡的机器学习与研究质量评估方法论

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In this article a synoptic review of machine learning techniques with imbalanced data and a class of corresponding learning algorithms is presented. This class of algorithms includes the meta-algorithms: Cost sensitive, Metacost, Rotation forest-cost sensitive, rotation forest-smote. Four learning algorithms (with base classifiers J48 and part processing with F-measure and a predetermined imbalanced data set) are compared in the computational environment WEKA leading to comparative numerical results. The basic concepts of research quality evaluation methodologies are presented, an adaptive citation qualitative-quantitative approach and advanced bibliometric indicators are given. Basic components of research quality performance such as research journal cited publications, citing publications and research quality evaluations at various academic levels are considered and corresponding numerical results are given. An alternative approach using certain machine learning algorithms with imbalanced data in the case of research quality evaluation methodologies is proposed.
机译:在本文中,对不平衡数据和一类相应的学习算法的机器学习技术进行了概述。此类算法包括以下元算法:成本敏感,Metacost,轮换森林成本敏感,轮换森林敏感。在计算环境WEKA中比较了四种学习算法(具有基本分类器J48以及具有F-measure的零件处理和预定的不平衡数据集),从而得到了可比较的数值结果。提出了研究质量评价方法的基本概念,提出了一种自适应引证定性定量方法和先进的文献计量指标。研究质量表现的基本组成部分,例如研究期刊引用的出版物,引用的出版物以及各个学术水平的研究质量评估,并给出相应的数值结果。在研究质量评估方法的情况下,提出了一种使用某些带有不平衡数据的机器学习算法的替代方法。

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