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Article
Publication date: 21 October 2021

Rezzy Eko Caraka, Fahmi Ali Hudaefi, Prana Ugiana, Toni Toharudin, Avia Enggar Tyasti, Noor Ell Goldameir and Rung Ching Chen

Despite the practice of credit card services by Islamic financial institutions (IFIs) is debatable, Islamic banks (IBs) have been offering this product. Both Muslim and non-Muslim…

Abstract

Purpose

Despite the practice of credit card services by Islamic financial institutions (IFIs) is debatable, Islamic banks (IBs) have been offering this product. Both Muslim and non-Muslim customers have subscribed to the products. Thus, it is critical to analyse the strategy of IBs’ moral messages in reminding their Muslim and non-Muslim customers to repay their credit card debts. This paper aims to investigate this issue in Indonesia using data mining via machine learning.

Design/methodology/approach

This study examines the IBs’ customers across the 32 provinces of Indonesia regarding their moral status in credit card debt repayment. This work considers 6,979 observations of the variables that affect the moral status of the IBs’ customers in repaying their debt. The five types of data mining via machine learning (i.e. Boruta, logistic regression, Bayesian regression, random forest, XGBoost and spatial cluster) are used. Boruta, random forest and XGBoost are used to select the important features to investigate the moral aspects. Bayesian regression is used to get the odds and opportunity for the transition of each variable and spatially formed based on the information from the logistical intercepts. The best method is selected based on the highest accuracy value to deliver the information on the relationship between moral status categories in the selected 32 provinces in Indonesia.

Findings

A different variable on moral status in each province is found. The XGBoost finds an accuracy value of 93.42%, which the three provincial groups have the same information based on the importance of the variables. The strategy of IBs’ moral messages by sending the verse of al-Qur’an and al-Hadith (traditions or sayings of the Prophet Muhammad PBUH) and simple messages reminders do not impact the customers’ repaying their debts. Both Muslim and non-Muslim groups are primarily found in the non-moral group.

Research limitations/implications

This study does not consider socio-economic demographics and culture. This limitation calls future works to consider such factors when conducting a similar topic.

Practical implications

The industry professionals can take benefit from this study to understand the Indonesian customers’ moral status in repaying credit card debt. In addition, future works may advance the recent findings by considering socio-cultural factors to investigate the moral status approach to Islamic credit warnings that is not covered by this study.

Social implications

This work finds that religious text of credit card repayment reminders sent to Muslims in several provinces of Indonesia does not affect their decision to repay their debts. To some extent, this finding draws a social issue that the local IBs need to consider when implementing the strategy of credit card repayment reminders.

Originality/value

This study credits a novelty in the discourse of data science for Islamic finance practices. Specifically, this study pioneers an example of using data mining to investigate Islamic-moral incentives in credit card debt repayment.

Details

International Journal of Islamic and Middle Eastern Finance and Management, vol. 15 no. 1
Type: Research Article
ISSN: 1753-8394

Keywords

Article
Publication date: 11 December 2023

Rezzy Eko Caraka, Robert Kurniawan, Rung Ching Chen, Prana Ugiana Gio, Jamilatuzzahro Jamilatuzzahro, Bahrul Ilmi Nasution, Anjar Dimara Sakti, Muhammad Yunus Hendrawan and Bens Pardamean

The purpose of this paper is to manage knowledge pertaining to micro, small and medium enterprise (MSME) actors in the business, agriculture and industry sectors. This study uses…

Abstract

Purpose

The purpose of this paper is to manage knowledge pertaining to micro, small and medium enterprise (MSME) actors in the business, agriculture and industry sectors. This study uses text mining techniques, specifically Latent Dirichlet Allocation Mallet, to analyze the data obtained from the in-depth interviews. This analysis helps us identify and understand the issues faced by these actors.

Design/methodology/approach

In this study, the authors use big data and business analytics to recalculate the MSME business vulnerability index in 503 districts and 34 provinces across Indonesia. Subsequently, the authors conduct in-depth interviews with MSME actors in Medan, Central Java, Yogyakarta, Bali and Manokwari, West Papua. Through these interviews, the authors explore their strategies for surviving the COVID-19 pandemic and the extent of their digital literacy, and the application of technology to maximize sales and business outcomes.

Findings

The findings reveal that, for the sustainable growth of MSMEs during and after the pandemic, collaboration across the Penta-Helix framework is essential. This collaboration enables the development of practical solutions for the challenges posed by COVID-19, particularly in the context of the “new normal.” In addition, the authors’ survey of MSMEs involved in agriculture, trade and processing sectors demonstrates that 58.33% experienced a decrease in income during the pandemic and 12.66% reported an increase in revenue. In contrast, 25% experienced no change in income before and during the pandemic.

Originality/value

This research contributes significantly by offering comprehensive insights obtained from in-depth surveys conducted with MSMEs across multiple sectors. The findings underscore the importance of addressing the challenges MSMEs face and highlight the need for collaboration within the Penta-Helix framework to foster their resilience and success amidst the COVID-19 pandemic.

Details

Journal of Asia Business Studies, vol. ahead-of-print no. ahead-of-print
Type: Research Article
ISSN: 1558-7894

Keywords

Article
Publication date: 8 August 2008

Jiun‐Sheng Chris Lin and Ching‐Rung Chen

How manufacturers select distributors who can contribute to distribution efficiency has become an important issue for channel management. While the last decade has seen large…

5060

Abstract

Purpose

How manufacturers select distributors who can contribute to distribution efficiency has become an important issue for channel management. While the last decade has seen large shifts in manufacturing and distribution practices, there has been very little empirical research investigating manufacturers' selection of distributors. This study attempts to fill this research gap by proposing and empirically evaluating factors important to manufacturers when selecting distributors.

Design/methodology/approach

The study developed a research framework for manufacturers' selection of distributors. Four key constructs were derived from marketing, supply chain, and logistics literature to investigate their influences on distributor selection: firm infrastructure, marketing capabilities, relationship intensity, and logistics capabilities. Four hypotheses were developed and tested with a sample of Taiwanese information technology (IT) manufacturers.

Findings

Multi‐item scales were developed and validated through standard psychometric procedures. Hypotheses were tested with ordinary least squares regression analysis. The four constructs were found to have positive influences on manufacturers' selection of distributors.

Originality/value

The paper represents the first study to propose and empirically test a research model examining factors affecting manufacturers' selection of distributors. Distributors can strengthen their competitive advantage by improving their competence in the four dimensions.

Details

Supply Chain Management: An International Journal, vol. 13 no. 5
Type: Research Article
ISSN: 1359-8546

Keywords

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