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首页> 外文期刊>Journal of informetrics >Combining multiple scholarly relationships with author cocitation analysis: A preliminary exploration on improving knowledge domain mappings
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Combining multiple scholarly relationships with author cocitation analysis: A preliminary exploration on improving knowledge domain mappings

机译:将多种学术关系与作者引文分析相结合:改进知识域映射的初步探索

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摘要

Author cocitation analysis (ACA) is a branch of bibliometrics and knowledge representation that aims to map knowledge domains. However, ACA has been criticized because count-based measurement is too simple, and resulting maps are insufficiently informative. Since different scholarly relationships, e.g., coauthorship and author bibliographic coupling relationships, can extract out different relationships among authors in various perspectives, combining them with ACA for constructing knowledge domain mappings is our major purpose. The proposed method constructs the hybrid matrix from all relationships in four steps: relationship normalization, calculating the similarity between scholarly relationships, calculating adjustment parameters, and constructing hybrid relationships. The important parameters for integrating these matrices are calculated according to the distance in the hyperspace transformed from the similarity among the scholarly relationships by exploratory factor analysis. Compared with ACA, the results of the proposed method show: (1) More sub-fields in the given discipline can be identified when combining other scholarly relationships; (2) The more scholarly relationships added into ACA, the more details in terms of research area the method will find; (3) Good visualization in clustering is depicted when we combine other scholarly relationships. As a result, the proposed method offers a good choice to understand researchers and to map knowledge domains in a study field for integrating more scholarly relationships at the same time. (C) 2017 Elsevier Ltd. All rights reserved.
机译:作者引用分析(ACA)是文献计量学和知识表示的一个分支,旨在绘制知识领域。但是,ACA受到批评,因为基于计数的测量过于简单,并且生成的地图信息不足。由于不同的学术关系(例如,共同作者关系和作者书目耦合关系)可以从不同角度提取作者之间的不同关系,因此将它们与ACA结合以构造知识域映射是我们的主要目的。该方法从四个关系中的所有关系构建混合矩阵:关系归一化,计算学术关系之间的相似度,计算调整参数以及构建混合关系。通过探索性因子分析,根据学术关系之间的相似性转换后的超空间中的距离,计算出积分这些矩阵的重要参数。与ACA相比,该方法的结果表明:(1)当结合其他学术关系时,可以确定给定学科中更多的子领域; (2)添加到ACA中的学术关系越多,该方法将在研究领域方面找到更多的细节; (3)当我们结合其他学术关系时,描绘了聚类中良好的可视化。结果,所提出的方法为了解研究者和映射研究领域中的知识领域提供了一个很好的选择,以便同时整合更多的学术关系。 (C)2017 Elsevier Ltd.保留所有权利。

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