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Mixture Model Estimation with Soft Labels

机译:用软标签混合模型估计

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This paper addresses classification problems in which the class membership of training data is only partially known. Each learning sample is assumed to consist in a feature vector and an imprecise and/or uncertain "soft" label mi defined as a Dempster-Shafer basic belief assignment over the set of classes. This framework thus generalizes many kinds of learning problems including supervised, unsupervised and semi-supervised learning. Here, it is assumed that the feature vectors are generated from a mixture model. Using the General Bayesian Theorem, we derive a criterion generalizing the likelihood function. A variant of the EM algorithm dedicated to the optimization of this criterion is proposed, allowing us to compute estimates of model parameters. Experimental results demonstrate the ability of this approach to exploit partial information about class labels.
机译:本文涉及培训数据的班级成员的分类问题仅是部分已知的。假设每个学习样本都包含在特征向量中,并且不精确和/或不确定的“软”标签MI定义为在一组类上的Dempster-Shafer基本信仰分配。这框架因此概括了许多学习问题,包括监督,无监督和半监督的学习。这里,假设从混合模型生成特征向量。使用普通贝叶斯定理,我们推出了概念概念函数的标准。提出了专用于优化该标准的EM算法的变体,允许我们计算模型参数的估计。实验结果表明了这种方法利用课程标签的部分信息的能力。

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