基于最近邻的重要性加权

M. Loog
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引用次数: 31

摘要

重要性加权在机器学习中有着广泛的应用,特别是在处理数据协变量移位问题的技术中。提出了一种新的、直接的方法来确定这种重要性加权。它依赖于最近邻分类方案,实现起来相对简单。各种分类任务的对比实验证明了我们所谓的最近邻加权(NNeW)方案的有效性。考虑到它的性能,我们的方法可以作为一种简单有效的重要性加权基线方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Nearest neighbor-based importance weighting
Importance weighting is widely applicable in machine learning in general and in techniques dealing with data co-variate shift problems in particular. A novel, direct approach to determine such importance weighting is presented. It relies on a nearest neighbor classification scheme and is relatively straightforward to implement. Comparative experiments on various classification tasks demonstrate the effectiveness of our so-called nearest neighbor weighting (NNeW) scheme. Considering its performance, our procedure can act as a simple and effective baseline method for importance weighting.
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