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加强文献综合利用教育,提高文献检索课教学效率 被引量:6
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作者 张晓峰 《高校图书馆工作》 CSSCI 2008年第1期81-82,85,共3页
对于学生信息素养培养,传统的封闭式教学模式存在许多不足。文章探讨了通过加强信息利用教育,提高文献检索与利用课教学效率,培养学生的科研能力和工作能力的方法和途径。
关键词 文献检索课 教学方法 文献利用 信息荻取能力 科研能力
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Measuring Similarity of Academic Articles with Semantic Profile and Joint Word Embedding 被引量:11
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作者 Ming Liu Bo Lang +1 位作者 Zepeng Gu Ahmed Zeeshan 《Tsinghua Science and Technology》 SCIE EI CAS CSCD 2017年第6期619-632,共14页
Long-document semantic measurement has great significance in many applications such as semantic searchs, plagiarism detection, and automatic technical surveys. However, research efforts have mainly focused on the sema... Long-document semantic measurement has great significance in many applications such as semantic searchs, plagiarism detection, and automatic technical surveys. However, research efforts have mainly focused on the semantic similarity of short texts. Document-level semantic measurement remains an open issue due to problems such as the omission of background knowledge and topic transition. In this paper, we propose a novel semantic matching method for long documents in the academic domain. To accurately represent the general meaning of an academic article, we construct a semantic profile in which key semantic elements such as the research purpose, methodology, and domain are included and enriched. As such, we can obtain the overall semantic similarity of two papers by computing the distance between their profiles. The distances between the concepts of two different semantic profiles are measured by word vectors. To improve the semantic representation quality of word vectors, we propose a joint word-embedding model for incorporating a domain-specific semantic relation constraint into the traditional context constraint. Our experimental results demonstrate that, in the measurement of document semantic similarity, our approach achieves substantial improvement over state-of-the-art methods, and our joint word-embedding model produces significantly better word representations than traditional word-embedding models. 展开更多
关键词 document semantic similarity text understanding semantic enrichment word embedding scientific literature analysis
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