TY - JOUR AU - Olcay Erdogan AU - Zafer Konakli PY - 2018/01/31 Y2 - 2024/03/29 TI - Corporate Credit Risk Assessment of BIST Companies JF - European Scientific Journal, ESJ JA - ESJ VL - 14 IS - 1 SE - Articles DO - 10.19044/esj.2018.v14n1p122 UR - https://eujournal.org/index.php/esj/article/view/10396 AB - Assessing credit risk allows financial institutions to plan future loans freely, to achieve targeted risk management and gain maximum profitability. In this study, the constructed risk assessment models are on a sample data which consists of financial ratios of enterprises listed in the Bourse Istanbul (BIST). 356 enterprises are classified into three levels as the investment, speculative and below investment groups by ten parameters. The applied methods are discriminant analysis, k nearest neighbor (k-NN), support vector machines (SVM), decision trees (DT) and a new hybrid model, namely Artificial Neural Networks with Adaptive Neuro-Fuzzy Inference Systems (ANFIS). This study will provide a comparison of models to build better mechanisms for preventing risk to minimize the loss arising from defaults. The results indicated that the decision tree models achieve a superior accuracy for the prediction of failure. The model we proposed as an innovation has an adequate performance among the applied models ER -