The aim of this study, which deals with consumer default risk, is to reveal the financial, socioeconomic, and demographic determinants of default risk at household level. Credit risk was investigated with various variables by applying data mining methods to the data set obtained from the Turkish Statistical Institute, Household Income and Living Conditions Survey covering the years 2016, 2017, 2018. Analyses were carried out using the WEKA data mining program. The findings of the study revealed that variables such as gender, age, marital status, education level, health status, employment status, region of residence and income status are important determinants of default. The findings of the study are thought to be an important reference for...
This study investigates the determinants of Turkish households’ saving and portfolio choice behaviou...
In this thesis, we provide a method for lenders to reduce defaults on consumer loans in the Norwegia...
This thesis aims to investigate how statistical machine learning methods can be used to predict an i...
Big data and its analysis have become a widespread practice in recent times, applicable to multiple ...
Credit scoring is an application of financial risk forecasting to consumer lending. In this study, s...
This paper explores the relationship between consumer credit clients’ payment performance i.e. credi...
TEZ10604Tez (Yüksek Lisans) -- Çukurova Üniversitesi, Adana, 2017.Kaynakça (s. 63-68) var.xvi, 72 s....
We analyze the determinants of default and prepayment in the Turkish mortgage market by utilizing da...
As a consequence from the recent global financial crisis, regulatory frameworks are continuously imp...
Determining the economic variables that affect credit default swap spreads which are known as indica...
This thesis is the first attempt to provide a comprehensive evaluation of the Turkish mortgage marke...
We analyze the determinants of default and prepayment in the Turkish mortgage market by utilizing da...
In recent years, an increase in consumer spending has resulted in a rise in consumer credit in Indi...
The project is based on the opinion that whether the loan applications which are profitable could be...
This thesis takes up the issue of consumer loans credit risk. It aims to identify factors that influ...
This study investigates the determinants of Turkish households’ saving and portfolio choice behaviou...
In this thesis, we provide a method for lenders to reduce defaults on consumer loans in the Norwegia...
This thesis aims to investigate how statistical machine learning methods can be used to predict an i...
Big data and its analysis have become a widespread practice in recent times, applicable to multiple ...
Credit scoring is an application of financial risk forecasting to consumer lending. In this study, s...
This paper explores the relationship between consumer credit clients’ payment performance i.e. credi...
TEZ10604Tez (Yüksek Lisans) -- Çukurova Üniversitesi, Adana, 2017.Kaynakça (s. 63-68) var.xvi, 72 s....
We analyze the determinants of default and prepayment in the Turkish mortgage market by utilizing da...
As a consequence from the recent global financial crisis, regulatory frameworks are continuously imp...
Determining the economic variables that affect credit default swap spreads which are known as indica...
This thesis is the first attempt to provide a comprehensive evaluation of the Turkish mortgage marke...
We analyze the determinants of default and prepayment in the Turkish mortgage market by utilizing da...
In recent years, an increase in consumer spending has resulted in a rise in consumer credit in Indi...
The project is based on the opinion that whether the loan applications which are profitable could be...
This thesis takes up the issue of consumer loans credit risk. It aims to identify factors that influ...
This study investigates the determinants of Turkish households’ saving and portfolio choice behaviou...
In this thesis, we provide a method for lenders to reduce defaults on consumer loans in the Norwegia...
This thesis aims to investigate how statistical machine learning methods can be used to predict an i...