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Component Reduction For Gaussian Mixture Models

机译:高斯混合模型的分量约简

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摘要

The mixture modeling framework is widely used in many applications. In this paper, we propose a component reduction technique, that collapses a Gaussian mixture model into a Gaussian mixture with fewer components. The EM (Expectation-Maximization) algorithm is usually used to fit a mixture model to data. Our algorithm is derived by extending mixture model learning using the EM-algorithm. In this extension, a difficulty arises from the fact that some crucial quantities cannot be evaluated analytically. We overcome this difficulty by introducing an effective approximation. The effectiveness of our algorithm is demonstrated by applying it to a simple synthetic component reduction task and a phoneme clustering problem.
机译:混合建模框架广泛用于许多应用程序中。在本文中,我们提出了一种成分减少技术,该技术将高斯混合模型折叠为具有较少成分的高斯混合。 EM(期望最大化)算法通常用于将混合模型拟合到数据。我们的算法是通过使用EM算法扩展混合模型学习而得出的。在此扩展中,由于一些关键数量无法进行分析评估这一事实而带来了困难。我们通过引入有效的近似值克服了这一困难。通过将其应用于简单的合成分量减少任务和音素聚类问题,证明了我们算法的有效性。

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