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Integrating Bayesian and Discriminative Sparse Kernel Machines for Multi-class Active Learning

机译:为多级主动学习集成贝叶斯和鉴别稀疏核心机器

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We propose a novel active learning (AL) model that integrates Bayesian and discriminative kernel machines for fast and accurate multi-class data sampling. By joining a sparse Bayesian model and a maximum margin machine under a unified kernel machine committee (KMC), the proposed model is able to identify a small number of data samples that best represent the overall data space while accurately capturing the decision boundaries. The integration is conducted using the maximum entropy discrimination framework, resulting in a joint objective function that contains generalized entropy as a regularizer. Such a property allows the proposed AL model to choose data samples that more effectively handle non-separable classification problems. Parameter learning is achieved through a principled optimization framework that leverages convex duality and sparse structure of KMC to efficiently optimize the joint objective function. Key model parameters are used to design a novel sampling function to choose data samples that can simultaneously improve multiple decision boundaries, making it an effective sampler for problems with a large number of classes. Experiments conducted over both synthetic and real data and comparison with competitive AL methods demonstrate the effectiveness of the proposed model.
机译:我们提出了一种新颖的主动学习(AL)模型,集成了贝叶斯和鉴别的内核机器,以实现快速准确的多级数据采样。通过加入稀疏的贝叶斯模型和统一内核机器委员会(KMC)下的最大边距机器,所提​​出的模型能够识别少量的数据样本,该样本最能代表整体数据空间,同时准确地捕获决策边界。使用最大熵辨别框架进行集成,导致联合目标函数,其中包含广义熵作为规范器。这种属性允许提出的AL模型选择更有效地处理不可分类的分类问题的数据样本。参数学习是通过主要的优化框架实现的,它利用KMC的凸型和稀疏结构来有效地优化联合目标函数。关键模型参数用于设计新的采样功能,以选择可以同时改进多个决策边界的数据样本,使其成为大量类别的问题的有效采样器。通过合成和实际数据进行的实验和与竞争性AL方法的比较证明了所提出的模型的有效性。

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