Markov Switching Autoregressive In Information Systems For Improving Islamic Banks

Authors

DOI:

https://doi.org/10.56294/dm2024.681

Keywords:

Information system, Sharia maqasid index, MSAR, Improving Islamic bank

Abstract

Sharia banks operate in several Muslim-majority countries, offering an alternative financial system aligned with Islamic principles. This study aims to develop a web-based information system for measuring the Maqasid Sharia Index (SMI) in real-time to assess the Islamization level of Sharia banks. Financial data from Indonesian sharia banks before and after their merger in 2021 (January 2013–February 2022) were analyzed. The Markov Switching Autoregressive (MSAR) method, with a margin of error of 0.107, was used to predict SMI values several years into the future. The results indicate that while the SMI value is predicted to decrease by 2025, the financial value of the banks is expected to increase. These findings provide valuable insights for improving the operational effectiveness of Sharia-compliant banking systems.

 

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Published

2024-12-30

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Section

Original

How to Cite

1.
Ali M, Gernowo R, Warsito B, Muthmainah F. Markov Switching Autoregressive In Information Systems For Improving Islamic Banks. Data and Metadata [Internet]. 2024 Dec. 30 [cited 2025 Mar. 14];3:.681. Available from: https://dm.ageditor.ar/index.php/dm/article/view/681