This paper proposes a prediction method based on an ordered semiparametric probit model for credit risk forecast. The proposed prediction model is constructed by replacing the linear regression function in the usual ordered probit model with a semiparametric function, thus it allows for more flexible choice of regression function. The unknown parameters in the proposed prediction model are estimated by maximizing a local (weighted) log-likelihood function, and the resulting estimators are analyzed through their asymptotic biases and variances. A real data example for predicting issuer credit ratings is used to illustrate the proposed prediction method. The empirical result confirms that the new model compares favorably with the usual ordere...
We present a prediction model to forecast corporate defaults. In a theoretical model, under incomple...
The distribution of ratings changes plays a crucial role in many credit risk models. As is well know...
Mixed probit models are widely applied in many fields where prediction of a binary response is of in...
function, and the resulting estimators are analyzed through their asymptotic biases and variances. A...
This thesis is an empirical investigation of various estimation methods for the analysis of the dyna...
ABSTRACT. Due to the recent growth in the consumer credit market and the consequent increase in defa...
Iran’s banking industry as a developing country is comparatively very new to risk management practic...
Due to the recent growth in the consumer credit market and the consequent increase in default indice...
We write this paper to confirm or refute the validity of the previous credit ratings studies on Japa...
In this study, we examine the predictive performance of a wide class of binary classifiers using a l...
AbstractIn this paper we investigate the ability of a number of different ordered probit models to p...
In this paper we investigate the ability of a number of different ordered probit models to predict r...
Credit scoring methods aim to assess the default risk of a potential borrower. This involves typical...
Fierce competition as well as the recent financial crisis in financial and banking industries made c...
Basel 2 regulations brought new interest in supervised classification methodologies for predicting d...
We present a prediction model to forecast corporate defaults. In a theoretical model, under incomple...
The distribution of ratings changes plays a crucial role in many credit risk models. As is well know...
Mixed probit models are widely applied in many fields where prediction of a binary response is of in...
function, and the resulting estimators are analyzed through their asymptotic biases and variances. A...
This thesis is an empirical investigation of various estimation methods for the analysis of the dyna...
ABSTRACT. Due to the recent growth in the consumer credit market and the consequent increase in defa...
Iran’s banking industry as a developing country is comparatively very new to risk management practic...
Due to the recent growth in the consumer credit market and the consequent increase in default indice...
We write this paper to confirm or refute the validity of the previous credit ratings studies on Japa...
In this study, we examine the predictive performance of a wide class of binary classifiers using a l...
AbstractIn this paper we investigate the ability of a number of different ordered probit models to p...
In this paper we investigate the ability of a number of different ordered probit models to predict r...
Credit scoring methods aim to assess the default risk of a potential borrower. This involves typical...
Fierce competition as well as the recent financial crisis in financial and banking industries made c...
Basel 2 regulations brought new interest in supervised classification methodologies for predicting d...
We present a prediction model to forecast corporate defaults. In a theoretical model, under incomple...
The distribution of ratings changes plays a crucial role in many credit risk models. As is well know...
Mixed probit models are widely applied in many fields where prediction of a binary response is of in...