揭示景观:在科学语料库中检测趋势

J.P. Arrivillaga, Dylan Greenleaf, M. Hawthorn, Raf Alvarado
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引用次数: 2

摘要

科学文献正在快速增长。与此同时,各利益相关者需要掌握新的趋势和创新,以便实时做出合理的政策决策。可以利用现代数据挖掘技术来减轻手动梳理数千个文档的负担。在本文中,我们提出了一个数据产品,用于探索和过滤来自几个不同的商业数据库的大量引文语料库。最终目标是一个高度交互的用户界面,用于在前端进行直观的语料库探索,并由后端数据摄取、合并、推理和新颖性检测功能支持。由于文本数据的高维性,降维和摘要是有效探索性分析的主要要求。为了达到这些目的,我们应用了一个主题模型,特别是潜在狄利克雷分配(LDA)模型。由此产生的降维提高了最终用户对语料库的可理解性,同时还允许加速文档之间的比较。文档相似度使用Hellinger距离计算,这是转换后的主题权重空间中的欧几里得距离,因此可以使用kd-tree数据结构有效地实现最近的文档查询。通过使用最初在社交媒体(Twitter)背景下开发的监督非参数趋势检测算法来实现进一步的信息减少,以便根据其体现重要趋势的可能性向用户推荐潜在感兴趣的术语。据我们所知,该技术在科学计量学领域的应用是新颖的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Revealing the landscape: Detecting trends in a scientific corpus
Scientific literature is growing at a rapid pace. Meanwhile, various stakeholders need to grasp novel trends and innovations in order to make sound policy decisions in real time. Modern data mining techniques can be leveraged to ease the burden of manually combing through thousands of documents. In this paper we present a data product for exploration and filtration of a large corpus of citations from several distinct commercial databases. The end goal is a highly interactive user interface for intuitive corpus exploration on the front end, supported by data ingestion, merging, inference, and novelty detection capabilities on the back end. Due to the high dimensionality of textual data, dimensionality reduction and summarization are major requirements for effective exploratory analysis. Toward these ends we apply a topic model, specifically the Latent Dirichlet Allocation (LDA) model. The resulting dimensionality reduction improves the comprehensibility of the corpus for the end user, while also allowing a speedup of document-document comparison. Document similarity is computed using Hellinger distance, which is a Euclidean distance in a transformed topic-weight space, and thus nearest document queries can be implemented efficiently using a kd-tree data structure. Further information reduction is achieved through the use of a supervised nonparametric trend detection algorithm originally developed in the context of social media (Twitter), in order to suggest terms of potential interest to the user based on their likelihood of embodying significant trends. To our knowledge the application of this technique in the scientometric domain is novel.
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