FacetGist: Collective Extraction of Document Facets in Large Technical Corpora.

Tarique Siddiqui, Xiang Ren, Aditya Parameswaran, Jiawei Han
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引用次数: 20

Abstract

Given the large volume of technical documents available, it is crucial to automatically organize and categorize these documents to be able to understand and extract value from them. Towards this end, we introduce a new research problem called Facet Extraction. Given a collection of technical documents, the goal of Facet Extraction is to automatically label each document with a set of concepts for the key facets (e.g., application, technique, evaluation metrics, and dataset) that people may be interested in. Facet Extraction has numerous applications, including document summarization, literature search, patent search and business intelligence. The major challenge in performing Facet Extraction arises from multiple sources: concept extraction, concept to facet matching, and facet disambiguation. To tackle these challenges, we develop FacetGist, a framework for facet extraction. Facet Extraction involves constructing a graph-based heterogeneous network to capture information available across multiple local sentence-level features, as well as global context features. We then formulate a joint optimization problem, and propose an efficient algorithm for graph-based label propagation to estimate the facet of each concept mention. Experimental results on technical corpora from two domains demonstrate that Facet Extraction can lead to an improvement of over 25% in both precision and recall over competing schemes.

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FacetGist:大型技术语料库中文档facet的集合抽取。
考虑到大量可用的技术文档,自动组织和分类这些文档以能够理解并从中提取价值是至关重要的。为此,我们引入了一个新的研究问题,称为Facet Extraction。给定一组技术文档,Facet Extraction的目标是用人们可能感兴趣的关键方面(例如,应用程序、技术、评估指标和数据集)的一组概念自动标记每个文档。Facet Extraction有许多应用,包括文档摘要、文献检索、专利检索和商业智能。执行Facet提取的主要挑战来自多个来源:概念提取、概念到Facet匹配和Facet消歧义。为了应对这些挑战,我们开发了FacetGist,这是一个用于facet提取的框架。Facet提取涉及构建基于图的异构网络,以捕获跨多个局部句子级特征以及全局上下文特征的可用信息。然后,我们提出了一个联合优化问题,并提出了一种高效的基于图的标签传播算法来估计所提到的每个概念的方面。在两个领域的技术语料库上的实验结果表明,与竞争方案相比,Facet提取的精度和召回率都提高了25%以上。
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