利用词嵌入和文档嵌入在印尼寻找学术专家:以Fasilkom用户界面为例

Theresia V. Rampisela, E. Yulianti
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引用次数: 10

摘要

专家检索涵盖了专家和专家发现的问题。在学术界,寻找专家对寻找研究伙伴或潜在的论文导师是有益的。本研究发现印度尼西亚大学(Fasilkom UI)计算机科学学院的专家使用了Fasilkom UI学生的论文摘要和元数据。用于表示讲师的查询和专业知识的方法是word2vec和doc2vec的结合,分别是词嵌入和文档嵌入。这两种嵌入都能够对语义信息进行建模,这是解决搜索问题中词汇不匹配问题所必需的。我们的结果表明,用word2vec表示专业知识查询比使用doc2vec产生更好的性能。此外,我们还发现,在使用印尼语和英语的专业知识查询检索专家时,嵌入模型的性能通常与标准检索模型BM25相当。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Academic Expert Finding in Indonesia using Word Embedding and Document Embedding: A Case Study of Fasilkom UI
Expertise retrieval covers the problems of expert and expertise finding. In academia, expert finding can be beneficial in finding a research partner or a potential thesis supervisor. This research finds the experts in the Faculty of Computer Science in Universitas Indonesia (Fasilkom UI) using the thesis abstract and metadata of Fasilkom UI students. The methods that are used to represent the query and expertise of the lecturers are the combination of word2vec and doc2vec, which are word embedding and document embedding, respectively. Both embeddings are able to model semantic information, which is necessary for solving the problem of vocabulary mismatch in search problems. Our result shows that representing the expertise query with word2vec leads to better performance than using doc2vec. In addition, we also found that generally, the performance of the embedding models is comparable to the standard retrieval model BM25 in retrieving experts using expertise queries in both Indonesian and English languages.
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