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A NOVEL WEIGHTING TECHNIQUE FOR FUSING LANGUAGE IDENTIFICATION SYSTEMS BASED ON PAIR-WISE PERFORMANCES

机译:一种基于配对性能的融合语言识别系统的一种新型加权技术

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One of the key research issues in modern Language Identification (LID) research is how best to combine multiple approaches with different features. Existing statistical fusion techniques are popular but have serious limitations when development data is insufficient, since the data is used for training the statistical fuser. In this paper we compare existing fusion techniques for LID systems and propose an alternative to reduce this problem. By deriving the language-specific weighting directly from pair-wise LID performance, a novel weighting approach is introduced and implemented. Experiments on the NIST LRE 2003 task (CallFriend database) and OGI-TS databases demonstrate that the proposed weighting technique outperforms other recent fusion techniques when the available development data is limited.
机译:现代语言识别(盖子)研究中的关键研究问题之一是如何最好地结合多种不同的功能。现有统计融合技术是流行的,但在开发数据不足时具有严重限制,因为数据用于培训统计定影器。在本文中,我们比较盖系统的现有融合技术,并提出了一种减少这个问题的替代方案。通过直接从成对盖子性能导出特定语言的加权,引入并实现了一种新颖的加权方法。 NIST LRE 2003任务(呼叫数据库)和OGI-TS数据库的实验表明,当可用的开发数据有限时,所提出的加权技术优于其他最近的融合技术。

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