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Semantic query expansion and context-based discriminative term modeling for spoken document retrieval

机译:语义查询扩展和基于上下文的判别术语建模,用于语音文档检索

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摘要

In this paper, we propose a semantic query expansion approach by extending the query-regularized mixture model to include latent topics and apply it to spoken documents. We also propose to use context feature vectors for spoken segments to train SVM models to enhance the posterior-weighted normalized term frequencies in lattices. Experiments on Mandarin broadcast news showed that this approach offered good improvements when applied on spoken documents including relatively high recognition errors.
机译:在本文中,我们提出了一种语义查询扩展方法,该方法通过扩展查询正则化混合模型以包含潜在主题并将其应用于语音文档。我们还建议对口语段使用上下文特征向量来训练SVM模型,以增强晶格中的后加权归一化项频率。对普通话广播新闻的实验表明,这种方法在应用于语音文件时,包括相对较高的识别错误,可以提供很好的改进。

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