Importance weighted passive learning

Shuaiqiang Wang, Xiaoming Xi, Yilong Yin
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Abstract

Importance weighted active learning (IWAL) introduces a weighting scheme to measure the importance of each instance for correcting the sampling bias of the probability distributions between training and test datasets. However, the weighting scheme of IWAL involves the distribution of the test data, which can be straightforwardly estimated in active learning by interactively querying users for labels of selected test instances, but difficult for conventional learning where there are no interactions with users, referred as passive learning. In this paper, we investigate the insufficient sampling bias problem, i.e., bias occurs only because of insufficient samples, but the sampling process is unbiased. In doing this, we present two assumptions on the sampling bias, based on which we propose a practical weighting scheme for the empirical loss function in conventional passive learning, and present IWPL, an importance weighted passive learning framework. Furthermore, we provide IWSVM, an importance weighted SVM for validation. Extensive experiments demonstrate significant advantages of IWSVM on benchmarks and synthetic datasets.
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重要性加权被动学习
重要性加权主动学习(IWAL)引入了一种加权方案来衡量每个实例的重要性,以纠正训练数据集和测试数据集之间概率分布的抽样偏差。然而,IWAL的加权方案涉及到测试数据的分布,在主动学习中可以通过交互地查询用户所选测试实例的标签来直接估计测试数据的分布,但在没有与用户交互的传统学习中则比较困难,称为被动学习。在本文中,我们研究了不充分抽样偏差问题,即仅由于样本不足而产生偏差,但抽样过程是无偏的。在此过程中,我们提出了关于采样偏差的两个假设,在此基础上,我们提出了传统被动学习中经验损失函数的实用加权方案,并提出了IWPL,一个重要加权被动学习框架。此外,我们提供了IWSVM,一种重要加权支持向量机进行验证。大量的实验证明了IWSVM在基准测试和合成数据集上的显著优势。
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