2019
DOI: 10.1177/0972652719831546
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Threshold Effect of Bank-specific Determinants of Non-performing Assets: An Application in Indian Banking

Abstract: The article investigates role of bank-specific factors on non-performing assets (NPAs) in Indian banking system in a panel threshold framework (Hansen, 1999, Journal of Econometrics, 93(2), 345–368), using an unbalanced panel of 82 scheduled commercial banks over the period of 1995–1996 to 2010–2011. We consider capital to risk-weighted assets ratio (CRAR) and credit growth as alternative threshold variables (and regime dependent) along with relevant bank-specific variables treated as regime independent. Findi… Show more

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Cited by 10 publications
(10 citation statements)
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“…More recent studies which employ threshold panel data regression include Piatti and Cincinelli (2019) and Bardhan et al (2019). Piatti and Cincinelli (2019) employ panel threshold model to a data set of 298 Italian banks for the period 2006–2014 to examine if banks’ credit processing quality results in non-performing loans reaching a certain threshold level and report that if non-performing loans remain below a preset value, then an increase in the quality of credit and loan monitoring reduces the bad loans ratio; however, if the bad loans ratio surpasses a preset threshold, this relationship reverses, and now an increase in monitoring of loans results in an increase in bad loans.…”
Section: Review Of Literaturementioning
confidence: 99%
See 1 more Smart Citation
“…More recent studies which employ threshold panel data regression include Piatti and Cincinelli (2019) and Bardhan et al (2019). Piatti and Cincinelli (2019) employ panel threshold model to a data set of 298 Italian banks for the period 2006–2014 to examine if banks’ credit processing quality results in non-performing loans reaching a certain threshold level and report that if non-performing loans remain below a preset value, then an increase in the quality of credit and loan monitoring reduces the bad loans ratio; however, if the bad loans ratio surpasses a preset threshold, this relationship reverses, and now an increase in monitoring of loans results in an increase in bad loans.…”
Section: Review Of Literaturementioning
confidence: 99%
“…Piatti and Cincinelli (2019) employ panel threshold model to a data set of 298 Italian banks for the period 2006–2014 to examine if banks’ credit processing quality results in non-performing loans reaching a certain threshold level and report that if non-performing loans remain below a preset value, then an increase in the quality of credit and loan monitoring reduces the bad loans ratio; however, if the bad loans ratio surpasses a preset threshold, this relationship reverses, and now an increase in monitoring of loans results in an increase in bad loans. Bardhan et al (2019) employ threshold regression model of Hansen (1999) on an unbalanced panel data set of 82 Indian banks for the period from 1996 to 2011 to examine the role of bank-specific endogenous factors on non-performing loans and report that above a preset value, both—capital adequacy ratio and loan growth rate—wield negative impact on bad loans.…”
Section: Review Of Literaturementioning
confidence: 99%
“…This typically happens in case of PSBs because market discipline is poorly exercised in these banks and there is an expectation that government will bail out in case of bank." (Bardhan et al, 2019)…”
Section: Major Causes Of Npamentioning
confidence: 99%
“…It is believed that issues of risk management in banks and issues of NPA in the bank can best be handled through disclosure, which is the primary motivation for this study (Goyal, 2010; Bardhan and Mukherjee, 2016). This study can be a game-changer in executing the T&D regulation in the banks in India.…”
Section: Introductionmentioning
confidence: 99%