Random forest classifier based multi-document summarization system

Ansamma John, M. Wilscy
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引用次数: 19

Abstract

In the recent times, the requirement for generation of multi-document summary has gained a lot of attention among the researchers due to the information explosion in the web media. Mostly, the text summarization technique uses the sentence extraction technique where the salient sentences in the multiple documents are extracted and presented as a summary. In our proposed system, we have developed a random forest classifier based multi-document summarization system that differentiates the sentences in the multiple documents as one belonging to the summary or not belonging to the summary. For this each sentence in the documents is represented by a set of feature scores. Classifier is trained using feature scores and summary information of each sentence in the document set. Feature scores of sentences of multiple documents to be summarized are given as the test document for the classifier. From the output of the classifier, sentences that belonging to the summary class, a required size summary is generated using Maximal Marginal Relevance. The experiments are conducted using the DUC 2002 dataset and its corresponding summary. Experimental results show the quality of the summary generated by this method is good in terms of relevance and novelty.
基于随机森林分类器的多文档摘要系统
近年来,由于网络媒体的信息爆炸,对多文档摘要生成的需求受到了研究人员的广泛关注。大多数情况下,文本摘要技术使用句子提取技术,将多个文档中的重要句子提取出来并作为摘要呈现。在我们提出的系统中,我们开发了一个基于随机森林分类器的多文档摘要系统,该系统将多个文档中的句子区分为属于摘要或不属于摘要。为此,文档中的每个句子都由一组特征分数表示。分类器使用特征分数和文档集中每个句子的摘要信息进行训练。将多个待总结文档的句子特征分数作为分类器的测试文档。从分类器的输出,属于摘要类的句子,使用最大边际相关性生成所需大小的摘要。实验采用DUC 2002数据集及其相应的摘要进行。实验结果表明,该方法生成的摘要具有较好的相关性和新颖性。
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