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Penalty Functions for Evaluation Measures of Unsegmented Speech Retrieval

机译:分段语音检索评估措施的惩罚函数

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This paper deals with evaluation of information retrieval from unsegmented speech. We focus on Mean Generalized Average Precision, the evaluation measure widely used for unsegmented speech retrieval. This measure is designed to allow certain tolerance in matching retrieval results (starting points of relevant segments) against a gold standard relevance assessment. It employs a Penalty Function which evaluates non-exact matches in the retrieval results based on their distance from the beginnings of their nearest true relevant segments. However, the choice of the Penalty Function is usually ad-hoc and does not necessary reflect users' perception of the speech retrieval quality. We perform a lab test to study satisfaction of users of a speech retrieval system to empirically estimate the optimal shape of the Penalty Function.
机译:本文讨论了从不分段的语音中检索信息的评估。我们关注均值广义平均精度,这是广泛用于无段语音检索的评估指标。此措施旨在允许对黄金标准相关性评估的检索结果(相关段的起点)进行匹配时具有一定的容忍度。它采用惩罚函数,该函数根据距最接近的真实相关片段的起点的距离来评估检索结果中的不完全匹配。但是,惩罚功能的选择通常是临时的,并不一定反映用户对语音检索质量的看法。我们进行实验室测试,以研究语音检索系统用户的满意度,以根据经验估算罚函数的最佳形状。

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