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Big Data Analysis for Public Libraries Utilizing Big Data Platform: A Case Study of Daejeon Hanbat Library

  • Journal of the Korean Society for Information Management
  • Abbr : JKOSIM
  • 2020, 37(3), pp.25~50
  • DOI : 10.3743/KOSIM.2020.37.3.025
  • Publisher : 한국정보관리학회
  • Research Area : Interdisciplinary Studies > Library and Information Science
  • Received : May 27, 2020
  • Accepted : August 25, 2020
  • Published : September 30, 2020

Jeongmee On 1 Park, Sung Hee 2

1대전한밭도서관
2한남대학교

Accredited

ABSTRACT

Since big data platform services for the public library began January 1, 2016, libraries have used big data to improve their work performance. This paper aims to examine the use cases of library big data and attempts to draw improvement plan to improve the effectiveness of library big data. For this purpose, first, we examine big data used while utilizing the library big data platform, the usage pattern of big data and services/policies drawn by big data analysis. Next, the limitations and advantages of the library big data platform are examined by comparing the data analysis of the integrated library management system (ILUS) currently used in public libraries and data analysis through the library big data platform. As a result of case analysis, big data usage patterns were found program planning and execution, collection, collection, and other types, and services/policies were summarized as customizing bookshelf themes for the book curation and reading promotion program, increasing collection utilization, and building a collection based on special topics. and disclosure of loan status data. As a result of the comparative analysis, ILUS is specialized in statistical analysis of library collection unit, and the big data platform enables selective and flexible analysis according to various attributes (age, gender, region, time of loan, etc.) reducing analysis time. Finally, the limitations revealed in case analysis and comparative analysis are summarized and suggestions for improvement are presented.

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