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The impact of corpus quality and type on topic based text segmentation evaluation

机译:语料库质量的影响和类型对基于主题的文本分割评估

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In this paper, we try to fathom the real impact of corpus quality on methods performances and their evaluations. The considered task is topic-based text segmentation, and two highly different unsupervised algorithms are compared: C 99, a word-based system, augmented with LSA, and Transeg, a sentence-based system. Two main characteristics of corpora have been investigated: Data quality (clean vs raw corpora), corpora manipulation (natural vs artificial data sets). The corpus size has also been subject to variation, and experiments related in this paper have shown that corpora characteristics highly impact recall and precision values for both algorithms.
机译:在本文中,我们试图对语料库质量对方法表演及其评估的真正影响。 COMED任务是基于主题的文本分段,并将两个高度不同的无监督算法进行比较:C 99,基于Word的系统,增强了LSA和TRANSEG,基于句子的系统。 Corpora的两个主要特征已经被调查:数据质量(Clean VS Rail Corpora),Corpora Sunipulation(天然VS人工数据集)。语料库大小也受到变化的影响,并且本文相关的实验表明,Corpora特性对这两种算法的高度影响召回和精度值。

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