Abstract

In this work, we build on and use the outcome of an earlier study on topic identification in an algorithmically constructed publication-level classification (ACPLC), and address the issue of how to algorithmically obtain a classification of topics (containing articles), where the classes of the classification correspond to specialties. The methodology we propose, which is similar to that used in the earlier study, uses journals and their articles to construct a baseline classification. The underlying assumption of our approach is that journals of a particular size and focus have a scope that corresponds to specialties. By measuring the similarity between (1) the baseline classification and (2) multiple classifications obtained by topic clustering and using different values of a resolution parameter, we have identified a best performing ACPLC. In two case studies, we could identify the subject foci of the specialties involved, and the subject foci of specialties were relatively easy to distinguish. Further, the class size variation regarding the best performing ACPLC is moderate, and only a small proportion of the articles belong to very small classes. For these reasons, we conclude that the proposed methodology is suitable for determining the specialty granularity level of an ACPLC.

Highlights

  • By measuring the similarity between (1) the baseline classification and (2) multiple classifications obtained by topic clustering and using different values of a resolution parameter, we have identified a best performing algorithmically constructed publication-level classification (ACPLC)

  • In a recent article we proposed a methodology for identification of research topics in an algorithmically constructed publication-level classification of research publications (ACPLC; Sjögårde & Ahlgren, 2018)

  • We examine the specialties of articles belonging to (1) the Web of Science subject category “Information science & Library Science,” and (2) the Web of Science subject category “Medical Informatics.”

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Summary

Introduction

In a recent article we proposed a methodology for identification of research topics in an algorithmically constructed publication-level classification of research publications (ACPLC; Sjögårde & Ahlgren, 2018). We used a large dataset of more than 30 million publications in Web of Science to create an ACPLC, at the granularity level of topics. We use a similar methodology to create a classification whose granularity corresponds to research specialties. In the remainder of this paper, we use the term “specialty” instead of “research specialty.”. A specialty is a “network of researchers who tend to study the same research topics” (Morris & Van der Veer Martens, 2008). In this paper we identify the publications belonging to specialties by grouping the topics obtained in the previous study

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