一种自动规范化切分主题的方法

Yuanyuan Jin, Bao-jian Gao, Ziran Zhang
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摘要

摘要针对传统的中文广播新闻分段归一化切割(Ncut)存在分段个数必须作为先验条件的局限性,提出了一种基于子词归一化切割的中文广播新闻自动话题分割方法。我们将文本抽象成一个加权无向图,其中节点对应句子,边的权重描述句子间在中文子词层面的词汇相似度,从而将分词任务形式化为Ncut准则下的图划分问题。为了突破这一局限,我们提出了一种文本点图启发的分割方法,该方法可以自动评估分割结果并选择最优的分割数量。最后,我们将整个方法放入机器学习框架中,学习火车集上的最佳参数。我们的方法比非自动子词Ncut(也是之前的最佳方法)实现了3%的相对改进。
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An automatic normalized cut topic segmentation approach
This paper presents an automatic topic segmentation approach based on subwords normalized cut (Ncut) for Chinese broadcast news, since the classical Ncut has a limitation that the number of segments has to be set as a prior. We abstract a text into a weighted undirected graph, where the nodes correspond to sentences and the weights of edges describe inter-sentence lexical similarities at Chinese subwords level, thus the segmentation task is formalized as a graph-partitioning problem under the Ncut criterion. In order to break through the limitation, we proposed a text dotplotting inspired method, which can evaluate the segmentation results and select the optimal number of segments automatically. Lastly, we put the whole approach into a machine learning framework, learning the best arguments on train set. Our method achieved relative improvement of 3% over non-automatic subwords Ncut, also the previous best method.
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