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Spoken document classification with SVMs using linguistic unit weighting and probabilistic couplers

机译:使用语言单元加权和概率耦合器的SVM进行口语文档分类

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The task addressed by this paper is spoken document classification (SDC) of German TV news with support vector machines (SVMs). It shows the benefits of weighting different linguistic units when combined into one feature vector. Further experiments show that probabilistic SVMs (pSVMs) with couplers perform well on a SDC task. New couplers for multi-category classification, both for pSVMs and non-pSVMs, are discussed. They are easy to implement and show good and promising results. It turns out that using the distance instead of the decision value can be favorable. Theoretical justification is given for our approaches, and some results are explained theoretically.
机译:本文解决的任务是使用支持向量机(SVM)对德国电视新闻进行语音文档分类(SDC)。它显示了组合成一个特征向量时对不同语言单元加权的好处。进一步的实验表明,带有耦合器的概率SVM(pSVM)在SDC任务上表现良好。讨论了用于pSVM和非pSVM的用于多类别分类的新耦合器。它们易于实施,并显示出良好而有希望的结果。事实证明,使用距离而不是决策值可能是有利的。我们的方法给出了理论上的证明,并从理论上解释了一些结果。

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