One of the biggest problems of SMEs is their tendencies to financial distress because of insufficient finance background. In this study, an Early Warning System (EWS) model based on data mining for financial risk detection is presented. CHAID algorithm has been used for development of the EWS. Developed EWS can be served like a tailor made financial advisor in decision making process of the firms with its automated nature to the ones who have inadequate financial background. Besides, an application of the model implemented which covered 7,853 SMEs based on Turkish Central Bank (TCB) 2007 data. By using EWS model, 31 risk profiles, 15 risk indicators, 2 early warning signals, and 4 financial road maps has been determined for financial risk m...
Big data and its analysis have become a widespread practice in recent times, applicable to multiple ...
This article uses structural equation modeling (SEM) to analyze and study the factors affecting corp...
In this study, we have developed and tested a statistical early warning model to identify companies ...
This thesis was submitted for the award of Doctor of Philosophy and was awarded by Brunel University...
Because there are many factors affecting the financial risk of enterprises, it is difficult to asses...
peer reviewedThis paper proposes and discusses a structured and coherent methodology allowing to bui...
Early warning models are needed to ensure that relevant stakeholders would not cause worse outcomes ...
The early warning of financial risk is to identify and analyze existing financial risk factors, dete...
This paper proposes to utilize support vector machine (SVM) to develop an early warning system for f...
AbstractData mining has been widely applied to make prediction for finance crisis risk, and they oft...
Small and medium-sized enterprises (SMEs) play an important role in the economy worldwide, and predi...
Keywords:financial risk; neural network model;early warning mechanism Abstract.Establishment and opt...
The objective of this paper is to propose a methodological framework for constructing the integrated...
Logistic regression is the best fit, the very best the model is a numerical demonstration method. Ar...
Predicting financial distress among SMEs can have a significant impact on the economy as it serves a...
Big data and its analysis have become a widespread practice in recent times, applicable to multiple ...
This article uses structural equation modeling (SEM) to analyze and study the factors affecting corp...
In this study, we have developed and tested a statistical early warning model to identify companies ...
This thesis was submitted for the award of Doctor of Philosophy and was awarded by Brunel University...
Because there are many factors affecting the financial risk of enterprises, it is difficult to asses...
peer reviewedThis paper proposes and discusses a structured and coherent methodology allowing to bui...
Early warning models are needed to ensure that relevant stakeholders would not cause worse outcomes ...
The early warning of financial risk is to identify and analyze existing financial risk factors, dete...
This paper proposes to utilize support vector machine (SVM) to develop an early warning system for f...
AbstractData mining has been widely applied to make prediction for finance crisis risk, and they oft...
Small and medium-sized enterprises (SMEs) play an important role in the economy worldwide, and predi...
Keywords:financial risk; neural network model;early warning mechanism Abstract.Establishment and opt...
The objective of this paper is to propose a methodological framework for constructing the integrated...
Logistic regression is the best fit, the very best the model is a numerical demonstration method. Ar...
Predicting financial distress among SMEs can have a significant impact on the economy as it serves a...
Big data and its analysis have become a widespread practice in recent times, applicable to multiple ...
This article uses structural equation modeling (SEM) to analyze and study the factors affecting corp...
In this study, we have developed and tested a statistical early warning model to identify companies ...