Keyword Extraction-based Library Intelligence Services: Challenges, Adaptations and Reinvention

Author:

Xie Ruixia1

Affiliation:

1. 1 Library of Linyi University, Linyi University , Linyi , Shandong , , China .

Abstract

Abstract This paper proposes a domain knowledge base construction platform for thematic intelligence services of library intelligence institutions. The platform proposes a keyword extraction algorithm applicable to the literature resources of library intelligence services based on a statistical model and N-Gram model combined with feature word information. The automatic summary algorithm based on statistics combines the information of sentence content and location to comprehensively evaluate the weights of candidate summary sentences and achieve automatic summary extraction. Based on the HDP topic model, a literature recommendation model oriented to the resource retrieval context is proposed, which can convert the literature feature similarity calculation to the topic similarity calculation with implied literature feature semantics from the perspective of semantic analysis and improve the accuracy of recommended literature. The technical feasibility of this system platform is verified through relevant data experiments. Regarding the accuracy of the literature recommendation, the platform of this paper and the traditional method are 86.36% and 75.16%, respectively, and the recall rate is 67.29% and 57.25%, respectively. The platform scored 3.85 on the comprehensive evaluation of library intelligence service, close to the excellent level. Therefore, the platform can realize various functions, from resource collection and organization to resource processing and utilization, with certain practical significance.

Publisher

Walter de Gruyter GmbH

Subject

Applied Mathematics,Engineering (miscellaneous),Modeling and Simulation,General Computer Science

Reference18 articles.

1. Yi, Z. (2016). Effective techniques for the promotion of library services and resources. Information Research: An International Electronic Journal, 21(1), n1.

2. Shevchenko, L. (2020). Analysis of library website users’ behavior to optimize virtual information and library services. Journal of Information Science Theory and Practice, 8(1), 45-55.

3. Muzvondiwa, I., Marutha, N. S. (2022). Framework for improving usage of library services and resources in the private higher education in South Africa. Digital Library Perspectives, 38(1), 104-130.

4. Cowell, J. (2021). Managing a library service through a crisis. Library Management, 42(4/5), 250-255.

5. Shaw, J. N., De, Sarkar, T. (2021). A cloud-based approach to library management solution for college libraries. Information Discovery and Delivery, 49(4), 308-318.

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