基于句子级特征的中文近重复文档检测

Yan Liang, Yizheng Tao, Ning Feng, Zhenjing Wan, Feng Xu, Xue Jiang, Shan Gao
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引用次数: 1

摘要

有效地检测接近重复的文档是许多应用程序(如搜索引擎、信息检索系统和推荐系统)不可或缺的功能。在本文中,我们提出了一种新的内容表示方法,用于从大量中文文档中检测近重复文档。该方法由句子级特征提取和多特征聚合两部分组成,称为多聚合指纹(MAF)。与术语相比,句子更具代表性,包含的信息更丰富、更完整。因此,我们提取句子的关键信息,形成句子特征。为了提高近重复文档检测的准确性和效率,我们既利用了数据集中句子特征的整体特征,又利用了属于某个文档的句子特征的统计信息。相应地,我们根据特征在数据集中的分布对句子特征空间进行分割。每个句子特征被分配到最近的特征空间分区,多个句子特征被聚合成一个紧凑的全局指纹。实验结果表明,本文提出的MAF方法能够在中文文档数据集上产生具有竞争力的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Aggregating sentence-level features for Chinese near-duplicate document detection
Detecting near-duplicate documents efficiently is an indispensable capability for many applications, such as searching engines, information retrieval systems, and recommendation systems. In this paper, we propose a novel content presentation method for near-duplicate document detection from a large collection of Chinese documents. The proposed method, called multi-aggregation fingerprint (MAF), consists of sentence-level feature extraction and multi-feature aggregation. Compared with terms, sentences are more representative and contain more abundant and integrated information. Thus, we extract the crucial information of sentences to form the sentence features. To improve the accuracy and efficiency of near-duplicate document detection, we exploit both holistic characteristics of sentence features in the dataset and the statistic information of sentence features belonging to a document. Accordingly, we split the sentence feature space based on the distribution of features in the dataset. Each sentence feature is assigned to the nearest partition of the feature space, and multiple sentence features are aggregated into a compact and global fingerprint. Experimental results show the proposed MAF method can produce competitive results on the Chinese document dataset.
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