Employing cost-sensitive learning in cultural modeling

Peng Su, W. Mao, D. Zeng, Fei-Yue Wang
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Abstract

Cultural modeling aims at developing behavioral models of groups and analyzing the impact of culture factors on group behavior using computational methods. Machine learning methods in particular classification, play a central role in such applications. In modeling cultural data, it is expected that standard classifiers yield good performance under the assumptions that class distribution is balanced and different classification errors have uniform costs. However, these assumptions are often violated in practice and thus the performance of standard classifiers is severely hindered. To handle this problem, this paper studies cost-sensitive learning in cultural modeling domain by considering cost factor when building the classifiers, with the aim of minimizing total misclassification costs. We empirically investigate four typical cost-sensitive learning methods, combine them with six standard classifiers and evaluate their performances under various conditions. Our empirical study verifies the effectiveness of cost-sensitive learning in cultural modeling. Based on the results of our experimental study, we gain a thorough insight into the problem of class imbalance and non-uniform misclassification costs, as well as the selection of cost-sensitive methods, base classifiers and method-classifier pairs for this domain.
在文化建模中运用成本敏感学习
文化建模旨在建立群体的行为模型,并利用计算方法分析文化因素对群体行为的影响。机器学习方法,特别是分类,在这些应用中起着核心作用。在文化数据建模中,期望标准分类器在类分布均衡、不同分类错误代价一致的假设下产生良好的性能。然而,这些假设在实践中经常被违反,从而严重阻碍了标准分类器的性能。为了解决这一问题,本文研究了文化建模领域的代价敏感学习,在构建分类器时考虑代价因素,以最小化总误分类代价为目标。我们对四种典型的代价敏感学习方法进行了实证研究,并将其与六种标准分类器相结合,评估了它们在不同条件下的性能。我们的实证研究验证了成本敏感学习在文化建模中的有效性。基于我们的实验研究结果,我们深入了解了类别不平衡和不均匀误分类代价问题,以及该领域代价敏感方法、基分类器和方法分类器对的选择。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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