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Comparison of Large-scale SVM Training Algorithms for Language Recognition

机译:用于语言识别的大规模SVM训练算法的比较

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This paper compares the performance of large scale Support Vector Machine training algorithms tested on a language recognition task.rnWe analyze the behavior of five SVM approaches for training phonetic and acoustic models, and we compare their performance in terms of number of iterations to reach convergence, training time and scalability towards large databases. Our results show that the accuracy of these algorithms is asymptotically equivalent, but they have different behavior with respect to the time required to converge. Some of these algorithms not only scale linearly with the training set size, but are also able to give their best results after just a few iterations on the database.
机译:本文比较了在语言识别任务上测试的大规模支持向量机训练算法的性能.rn我们分析了五种支持语音和声学模型的SVM方法的行为,并根据迭代次数比较了它们的性能以达到收敛,面向大型数据库的培训时间和可伸缩性。我们的结果表明,这些算法的精度在渐近上是等效的,但是它们在收敛所需时间方面具有不同的行为。这些算法中的一些不仅与训练集大小成线性比例关系,而且在数据库中进行几次迭代后也能够给出最佳结果。

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