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首页> 外文期刊>Neural Networks and Learning Systems, IEEE Transactions on >Instance-Level Constraint-Based Semisupervised Learning With Imposed Space-Partitioning
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Instance-Level Constraint-Based Semisupervised Learning With Imposed Space-Partitioning

机译:具有实例空间划分的基于实例级约束的半监督学习

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摘要

A new method for semisupervised learning from pairwise sample (must- and cannot-link) constraints is introduced. It addresses an important limitation of many existing methods, whose solutions do not achieve effective propagation of the constraint information to unconstrained samples. We overcome this limitation by constraining the solution to comport with a smooth (soft) class partition of the feature space, which necessarily entails constraint propagation and generalization to unconstrained samples. This is achieved via a parameterized mean-field approximation to the posterior distribution over component assignments, with the parameterization chosen to match the representation power of the chosen (generative) mixture density family. Unlike many existing methods, our method flexibly models classes using a variable number of components, which allows it to learn complex class boundaries. Also, unlike most of the methods, ours estimates the number of latent classes present in the data. Experiments on synthetic data and data sets from the UC Irvine machine learning repository show that, overall, our method achieves significant improvements in classification performance compared with the existing methods.
机译:介绍了一种从成对样本(必须链接和不能链接)约束进行半监督学习的新方法。它解决了许多现有方法的重要局限性,这些现有方法的解决方案无法将约束信息有效传播到不受约束的样本。我们通过将解决方案约束为与特征空间的平滑(软)类划分相适应来克服此限制,这必然需要约束传播和泛化为不受约束的样本。这是通过对部件分配的后验分布进行参数化的平均场近似来实现的,选择的参数化与所选的(生成的)混合物密度族的表示能力匹配。与许多现有方法不同,我们的方法使用可变数量的组件灵活地对类进行建模,从而可以学习复杂的类边界。而且,与大多数方法不同,我们的方法估计数据中存在的潜在类的数量。对UC Irvine机器学习存储库中的合成数据和数据集进行的实验表明,总体而言,与现有方法相比,我们的方法在分类性能方面实现了重大改进。

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