In our study we rely on a data mining procedure known as support vector machine (SVM) on the database of the first Hungarian bankruptcy model. The models constructed are then contrasted with the results of earlier bankruptcy models with the use of classification accuracy and the area under the ROC curve. In using the SVM technique, in addition to conventional kernel functions, we also examine the possibilities of applying the ANOVA kernel function and take a detailed look at data preparation tasks recommended in using the SVM method (handling of outliers). The results of the models assembled suggest that a significant improvement of classification accuracy can be achieved on the database of the first Hungarian bankruptcy model when using th...
AbstractThis article presents a study on development of credit risk evaluation model using Support V...
The article attempts to answer the question whether or not the latest bankruptcy prediction techniqu...
AbstractIn this paper, we compare some traditional statistical methods for predicting financial dist...
In our study we rely on a data mining procedure known as support vector machine (SVM) on the databas...
The purpose of this work is to introduce one of the most promising among recently developed statisti...
This study aims at identifying an optimal set of features for predicting firms bankruptcy events in ...
In many economic applications it is desirable to make future predictions about the financial status ...
This article focuses on the problem of binary classification of 902 small- and medium-sized engineer...
The purpose of this work is to introduce one of the most promising among re-cently developed statist...
The purpose of this study was to apply support vector machines (SVMs) to bank bankruptcy analysis us...
Diese Arbeit untersucht die Anwendung von Support Vektor Machines (SVMs) zur Vorhersage der Insolven...
An intensive research from academics and practitioners has been provided regarding models for bankru...
In our work, we compare the predictive power of different bankruptcy prediction models built on fina...
Article focuses on the prediction of bankruptcy of the 1,000 medium-sized retail business companies ...
In business analytics and the financial world, bankruptcy prediction has been ...
AbstractThis article presents a study on development of credit risk evaluation model using Support V...
The article attempts to answer the question whether or not the latest bankruptcy prediction techniqu...
AbstractIn this paper, we compare some traditional statistical methods for predicting financial dist...
In our study we rely on a data mining procedure known as support vector machine (SVM) on the databas...
The purpose of this work is to introduce one of the most promising among recently developed statisti...
This study aims at identifying an optimal set of features for predicting firms bankruptcy events in ...
In many economic applications it is desirable to make future predictions about the financial status ...
This article focuses on the problem of binary classification of 902 small- and medium-sized engineer...
The purpose of this work is to introduce one of the most promising among re-cently developed statist...
The purpose of this study was to apply support vector machines (SVMs) to bank bankruptcy analysis us...
Diese Arbeit untersucht die Anwendung von Support Vektor Machines (SVMs) zur Vorhersage der Insolven...
An intensive research from academics and practitioners has been provided regarding models for bankru...
In our work, we compare the predictive power of different bankruptcy prediction models built on fina...
Article focuses on the prediction of bankruptcy of the 1,000 medium-sized retail business companies ...
In business analytics and the financial world, bankruptcy prediction has been ...
AbstractThis article presents a study on development of credit risk evaluation model using Support V...
The article attempts to answer the question whether or not the latest bankruptcy prediction techniqu...
AbstractIn this paper, we compare some traditional statistical methods for predicting financial dist...