Topic indexing of spoken documents based on optimized N-best approach

Lei Zhang, Jing-xin Chang, Xuezhi Xiang, Xiaosen Feng
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引用次数: 5

Abstract

For topic indexing of spoken documents, the word error rate is hopefully decreased instead of the whole sentence error rate, so the center hypothesis among the N-best results is selected as the final output in speech recognition system. Then all spoken documents can be represented as vectors with high dimensions in vector space model, which can be combined with non-negative matrix factorization or singular value decomposition to map the vector space into semantic space. Experiment results show that optimized N-best approach is more suitable to the topic indexing system than one-best method. Combined with the non-negative matrix factorization, the correct topic indexing can achieve 98.1% in optimized N-best approach, which is 0.9% higher than the one-best approach under the same condition. When the semantic space is decreased to 10, there is about 11.1% difference between these two approaches. Furthermore, compared with singular value decomposition method, non-negative matrix factorization has the advantages of better performance, faster computation speed and less storage space.
基于优化n -最优方法的口语文档主题索引
对于口语文档的主题索引,希望降低单词错误率而不是整个句子的错误率,因此在n个最佳结果中选择中心假设作为语音识别系统的最终输出。然后将所有的语音文档在向量空间模型中表示为高维向量,并结合非负矩阵分解或奇异值分解将向量空间映射到语义空间。实验结果表明,优化后的N-best方法比1 -best方法更适合于主题索引系统。结合非负矩阵分解,优化后的N-best方法的主题索引正确率达到98.1%,比相同条件下的1 -best方法提高了0.9%。当语义空间减小到10时,两种方法之间的差异约为11.1%。此外,与奇异值分解方法相比,非负矩阵分解具有性能更好、计算速度更快、存储空间更小等优点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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