Importance weighting is widely applicable in machine learning in general and in techniques dealing with data covariate 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.
翻译:重要性权重在一般的机器学习中广泛适用,特别是在处理数据共变转移问题的技术中广泛适用。提出了一种确定这种重要性权重的新颖、直接的办法。它依靠近邻的分类办法,比较容易执行。对各种分类任务的比较实验表明我们所谓的近邻加权办法的有效性。考虑到其绩效,我们的程序可以作为重要性权重的简单而有效的基线方法。