基于多层次引文信息综合计算的图书学术影响评估

Qingqing Zhou
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引用次数: 2

摘要

书目分类是衡量科学书籍学术成就的常用依据。然而,传统的引文分析忽略了内容挖掘,没有考虑引文的等价性,这可能导致评价可靠性的下降。因此,本文旨在整合多层次的引文信息,进行多维度的分析。本文通过整合图书被引频次和被引相关内容等多层次引文资源来衡量图书的学术影响。具体而言,首先,将图书的被引频次作为频率级度量。其次,基于细粒度挖掘,从多维引文内容中提取内容级指标,包括元数据上的主题提取和引文上下文上的引文分类;最后,比较了差分度量加权法与综合多层次度量和计算图书学术影响的方法。实验结果表明,整合多种引文资源是必要的,可以显著提高评价结果的综合性。同时,在评价图书的学术影响时,学科差异比图书的类型差异更值得关注。原创性/价值整合多层次被引信息进行图书学术影响评估,可以提供更详细的评价信息,弥补单一被引数据方法的不足。此外,本文提出的方法是独立于出版物的,可以用来衡量除书籍以外的其他出版物。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Assessing books' academic impacts via integrated computation of multi-level citation information
Purpose Citations have been used as a common basis to measure the academic accomplishments of scientific books. However, traditional citation analysis ignored content mining and without consideration of citation equivalence, which may lead to the decline of evaluation reliability. Hence, this paper aims to integrate multi-level citation information to conduct multi-dimensional analysis. Design/methodology/approach In this paper, books’ academic impacts were measured by integrating multi-level citation resources, including books’ citation frequencies and citation-related contents. Specifically, firstly, books’ citation frequencies were counted as the frequency-level metric. Secondly, content-level metrics were detected from multi-dimensional citation contents based on finer-grained mining, including topic extraction on the metadata and citation classification on the citation contexts. Finally, differential metric weighting methods were compared with integrate the multi-level metrics and computing books’ academic impacts. Findings The experimental results indicate that the integration of multiple citation resources is necessary, as it can significantly improve the comprehensiveness of the evaluation results. Meanwhile, compared with the type differences of books, disciplinary differences need more attention when evaluating the academic impacts of books. Originality/value Academic impact assessment of books via integrating multi-level citation information can provide more detailed evaluation information and cover shortcomings of methods based on single citation data. Moreover, the method proposed in this paper is publication independent, which can be used to measure other publications besides books.
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