Predicting performance in ASEAN banks: an integrated fuzzy MCDM‐neural network approach

Predicting performance in ASEAN banks: an integrated fuzzy MCDM‐neural network approach

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Article ID: iaor20162613
Volume: 33
Issue: 3
Start Page Number: 213
End Page Number: 229
Publication Date: Jun 2016
Journal: Expert Systems
Authors: , , ,
Keywords: performance, quality & reliability, statistics: empirical
Abstract:

This paper presents a performance assessment of 88 Association of Southeast Asian Nations banks from 2010 to 2013, using an integrated three‐stage approach on financial criteria that emulates the CAMELS rating system. More precisely, fuzzy analytic hierarchy process is used first to assess the relative weights of a number of criteria related to capital adequacy (C), asset quality (A), management quality (M), earnings (E), liquidity (L), and sensitivity to market risk (S) based on the opinion of 88 Association of Southeast Asian Nations experts. Then, these weights are used as technique for order of preference by similarity to ideal solution inputs to assess their relative efficiency. Lastly, neural networks are combined with technique for order of preference by similarity to ideal solution results to produce a model for banking performance with effective predictive ability. The results reveal that contextual variables have a prominent impact on efficiency. Specifically, parsimony in equity leveraging derived from Islamic finance principles may be the underlying cause in explaining higher efficiency levels.

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