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首页> 外文期刊>IEEE Transactions on Pattern Analysis and Machine Intelligence >Class conditional density estimation using mixtures with constrained component sharing
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Class conditional density estimation using mixtures with constrained component sharing

机译:使用受限成分共享的混合物进行类条件密度估计

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摘要

We propose a generative mixture model classifier that allows for the class conditional densities to be represented by mixtures having certain subsets of their components shared or common among classes. We argue that, when the total number of mixture components is kept fixed, the most efficient classification model is obtained by appropriately determining the sharing of components among class conditional densities. In order to discover such an efficient model, a training method is derived based on the EM algorithm that automatically adjusts component sharing. We provide experimental results with good classification performance.
机译:我们提出了一种生成混合模型分类器,该分类器允许类条件密度由具有在类之间共享或共有的某些组分子集的混合物表示。我们认为,当混合成分的总数保持固定时,通过适当确定类别条件密度之间成分的共享,可以获得最有效的分类模型。为了发现这种有效的模型,基于自动调整组件共享的EM算法推导了一种训练方法。我们提供具有良好分类性能的实验结果。

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