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Analysis of the Influence of ICT and Public Recognition on University Credibility

  • Irvan SantosoEmail author
  • Wayan SupartaEmail author
  • Agung Trisetyarso
  • Bahtiar Saleh Abbas
  • Chul Ho Kang
Conference paper
Part of the Lecture Notes in Computer Science book series (LNCS, volume 11431)

Abstract

University Credibility is one of the important factors in maintaining the sustainability of the university. However, to maintain credibility, trust from the public on service and learning capabilities as well as recognition extensively are needed. To measure capability in service and learning can be displayed by the technology used during all activities at the university. In this study, an analysis was conducted on the influence of ICT and Public Recognition on University Credibility by using Multiple Linear Regression test. The data used are questionnaire with 13 items representing three variables, namely Information and Communication Technology (ICT), Public Recognition, and University Credibility. Each instrument that is distributed and obtained was used to test the validity and reliability of the items. The results show that 61% of ICT and Public Recognition are proved to influence the credibility of the university. This shows that ICT and Public Regulations play a significant role in showing University Credibility where this can be used as a benchmark in improving good perceptions of university selection.

Keywords

Credibility ICT Public Recognition Regression 

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Copyright information

© Springer Nature Switzerland AG 2019

Authors and Affiliations

  1. 1.Computer Science Department, BINUS Graduate Program – Doctor of Computer ScienceBina Nusantara UniversityJakartaIndonesia

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