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Active Learning for Sparse Bayesian Multilabel Classification

机译:主动学习的稀疏贝叶斯多标签分类

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We study the problem of active learning for multilabel classification. We focus on the real-world scenario where the average number of positive (relevant) labels per data point is small leading to positive label sparsity. Carrying out mutual information based near-optimal active learning in this setting is a challenging task since the computational complexity involved is exponential in the total number of labels. We propose a novel inference algorithm for the sparse Bayesian multilabel model of [17]. The benefit of this alternate inference scheme is that it enables a natural approximation of the mutual information objective. We prove that the approximation leads to an identical solution to the exact optimization problem but at a fraction of the optimization cost. This allows us to carry out efficient, non-myopic, and near-optimal active learning for sparse multilabel classification. Extensive experiments reveal the effectiveness of the method.
机译:我们研究了针对多标签分类的主动学习问题。我们专注于实际情况,其中每个数据点的正(相关)标签平均数量很少,导致标签稀疏。在这种情况下,基于互信息进行近乎最佳的主动学习是一项艰巨的任务,因为所涉及的计算复杂度在标签总数中呈指数级增长。我们为[17]的稀疏贝叶斯多标签模型提出了一种新颖的推理算法。这种替代推理方案的好处在于,它可以实现互信息目标的自然近似。我们证明了近似值可以为精确的优化问题提供相同的解决方案,但所需的优化成本却很小。这使我们能够为稀疏的多标签分类进行有效的,非近视的和接近最佳的主动学习。大量实验证明了该方法的有效性。

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