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Institutional collaboration recommendation: An expertise-based framework using NLP and network analysis

Lathabai, HH and Nandy, A and Singh, VK (2022) Institutional collaboration recommendation: An expertise-based framework using NLP and network analysis. In: Expert Systems with Applications, 209 .

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Official URL: https://doi.org/10.1016/j.eswa.2022.118317

Abstract

The shift from ‘trust-based funding’ to ‘performance-based funding’ is one of the factors that has forced institutions to strive for continuous improvement of performance. Several studies have established the importance of collaboration in enhancing the performance of paired institutions. However, identification of suitable institutions for collaboration is sometimes difficult and therefore institutional collaboration recommendation systems can be vital. Currently, there are no well-developed institutional collaboration recommendation systems. In order to bridge this gap, we design a framework that recognizes the thematic strengths and core competencies of institutions, which can in turn be used for collaboration recommendations. The framework, based on NLP and network analysis techniques, is capable of determining the strengths of an institution in different thematic areas within a field and thereby determining the core competency and potential core competency areas of that institution. It makes use of recently proposed expertise indices such as x and x(g) indices for determination of core and potential core competency areas and can toss two kinds of recommendations: (i) for enhancement of strength of strong areas or core competency areas of an institution and (ii) for complementing the potentially strong areas or potential core competency areas of an institution. A major advantage of the system is that it can help to determine and improve the research portfolio of an institution within a field through suitable collaboration, which may lead to the overall improvement of the performance of the institution in that field. The framework is demonstrated by analyzing the performance of 195 Indian institutions in the field of ‘Computer Science’. Upon validation using standard metrics for novelty, coverage and diversity of recommendation systems, the framework is found to be of sufficient coverage and capable of tossing novel and diverse recommendations. The article thus presents an institutional collaboration recommendation system which can be used by institutions to identify potential collaborators.

Item Type: Journal Article
Publication: Expert Systems with Applications
Publisher: Elsevier Ltd
Additional Information: The copyright for this article belongs to the Authors.
Keywords: Knowledge management; Natural language processing systems, Analysis techniques; Continuous improvements; Core competencies; Core potential; Expertise index; Fundings; Institutional collaboration; Performance; Performance based; Research expertise, Recommender systems
Department/Centre: Division of Interdisciplinary Sciences > Centre for Society and Policy (formerly: Centre for Contemporary Studies)
Date Deposited: 23 Aug 2022 11:21
Last Modified: 23 Aug 2022 11:21
URI: https://eprints.iisc.ac.in/id/eprint/76258

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