SciELO - Scientific Electronic Library Online

 
vol.24 issue47Foreign direct investment and institutional stability: who drives whom? author indexsubject indexarticles search
Home Pagealphabetic serial listing  

Services on Demand

Journal

Article

Indicators

  • Have no cited articlesCited by SciELO

Related links

  • Have no similar articlesSimilars in SciELO

Share


Journal of Economics, Finance and Administrative Science

Print version ISSN 2077-1886

Abstract

SYED NOR, Sharifah Heryati; ISMAIL, Shafinar  and  YAP, Bee Wah. Personal bankruptcy prediction using decision tree model. Journal of Economics, Finance and Administrative Science [online]. 2019, vol.24, n.47, pp.157-170. ISSN 2077-1886.  http://dx.doi.org/https://doi.org/10.1108/JEFAS-08-2018-0076.

Purpose: Personal bankruptcy is on the rise in Malaysia. The Insolvency Department of Malaysia reported that personal bankruptcy has increased since 2007, and the total accumulated personal bankruptcy cases stood at 131,282 in 2014. This is indeed an alarming issue because the increasing number of personal bankruptcy cases will have a negative impact on the Malaysian economy, as well as on the society. From the aspect of individual's personal economy, bankruptcy minimizes their chances of securing a job. Apart from that, their account will be frozen, lost control on their assets and properties and not allowed to start any business nor be a part of any company's management. Bankrupts also will be denied from any loan application, restricted from travelling overseas and cannot act as a guarantor. This paper aims to investigate this problem by developing the personal bankruptcy prediction model using the decision tree technique. Design/methodology/approach: In this paper, bankrupt is defined as terminated members who failed to settle their loans. The sample comprised of 24,546 cases with 17 per cent settled cases and 83 per cent terminated cases. The data included a dependent variable, i.e. bankruptcy status (Y = 1(bankrupt), Y = 0 (non-bankrupt)) and 12 predictors. SAS Enterprise Miner 14.1 software was used to develop the decision tree model. Findings: Upon completion, this study succeeds to come out with the profiles of bankrupts, reliable personal bankruptcy scoring model and significant variables of personal bankruptcy. Practical implications: This decision tree model is possible for patent and income generation. Financial institutions are able to use this model for potential borrowers to predict their tendency toward personal bankruptcy. Social implications: Create awareness to society on significant variables of personal bankruptcy so that they can avoid being a bankrupt. Keywords: cognitive strategies of emotional regulation, subjective well-being, psychological well-being, university students Originality/value: This decision tree model is able to facilitate and assist financial institutions in evaluating and assessing their potential borrower. It helps to identify potential defaulting borrowers. It also can assist financial institutions in implementing the right strategies to avoid defaulting borrowers.

Keywords : Datamining; Creditscoring; Decisiontreemodel; Personalbankruptcy; Random undersampling.

        · text in English     · English ( pdf )

 

Creative Commons License All the contents of this journal, except where otherwise noted, is licensed under a Creative Commons Attribution License