基于混合主题模型和共被引选择的跨领域引文推荐

IF 0.5 Q4 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Supaporn Tantanasiriwong, S. Guha, P. Janecek, C. Haruechaiyasak, L. Azzopardi
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引用次数: 0

摘要

跨领域推荐在研究界越来越重要。一个特别感兴趣的应用是推荐一组相关的研究论文作为给定专利的引用。提出了一种基于混合主题模型和共被引选择的跨领域引文推荐方法。使用主题模型,可以将文档中的相关术语聚类到相同的主题中。此外,共引选择技术将有助于根据一组高度相似的专利选择引文。为了评估该方法的性能,我们使用生物技术、环境技术、医疗技术和纳米技术等不同技术领域收集的专利语料库,将我们提出的方法与传统的基线方法进行了比较。实验结果表明,我们的跨领域引文推荐在预测相关出版物引文方面的性能优于所有基线方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cross-domain citation recommendation based on hybrid topic model and co-citation selection citation selection
Cross-domain recommendations are of growing importance in the research community. An application of particular interest is to recommend a set of relevant research papers as citations for a given patent. This paper proposes an approach for cross-domain citation recommendation based on the hybrid topic model and co-citation selection. Using the topic model, relevant terms from documents could be clustered into the same topics. In addition, the co-citation selection technique will help select citations based on a set of highly similar patents. To evaluate the performance, we compared our proposed approach with the traditional baseline approaches using a corpus of patents collected for different technological fields of biotechnology, environmental technology, medical technology and nanotechnology. Experimental results show our cross domain citation recommendation yields a higher performance in predicting relevant publication citations than all baseline approaches.
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来源期刊
International Journal of Data Mining Modelling and Management
International Journal of Data Mining Modelling and Management COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE-
CiteScore
1.10
自引率
0.00%
发文量
22
期刊介绍: Facilitating transformation from data to information to knowledge is paramount for organisations. Companies are flooded with data and conflicting information, but with limited real usable knowledge. However, rarely should a process be looked at from limited angles or in parts. Isolated islands of data mining, modelling and management (DMMM) should be connected. IJDMMM highlightes integration of DMMM, statistics/machine learning/databases, each element of data chain management, types of information, algorithms in software; from data pre-processing to post-processing; between theory and applications. Topics covered include: -Artificial intelligence- Biomedical science- Business analytics/intelligence, process modelling- Computer science, database management systems- Data management, mining, modelling, warehousing- Engineering- Environmental science, environment (ecoinformatics)- Information systems/technology, telecommunications/networking- Management science, operations research, mathematics/statistics- Social sciences- Business/economics, (computational) finance- Healthcare, medicine, pharmaceuticals- (Computational) chemistry, biology (bioinformatics)- Sustainable mobility systems, intelligent transportation systems- National security
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