Neural network (NN) methods are sometimes useless in practical applications, because they are not properly tailored to the particular market's needs. We focus thereinafter specifically on financial market applications. NNs have not gained full acceptance here yet. One of the main reasons is the "Black Box" problem (lack of the NN decisions explanatory power). There are though some NN decisions rule extraction methods like decompositional, pedagogical or eclectic, but they suffer from low portability of the rule extraction technique across various neural net architectures, high level of granularity, algorithmic sophistication of the rule extraction technique etc. The authors propose to eliminate some known drawbacks using an innovative exten...
Neural networks have been shown to be a powerful classification tool in financial applications. Howe...
Contrary to the common opinion, neural networks may be used for knowledge extraction. Recently, a ne...
Abstract. The neural networks are successfully applied to many applications in different domains. Ho...
The problem of credit-risk evaluation is a very challenging and important financial analysis problem...
Credit-risk evaluation is a very challenging and important management science problemin the domain o...
Credit-risk evaluation is a very challenging and important management science problem in the domain ...
The problem of credit-risk evaluation is a very challenging and important financial analysis problem...
The problem of credit-risk evaluation is a very challenging and important financial analysis problem...
The advent of knowledge discovery in data (KDD) technology has created new opportunities to analyze ...
The advent of knowledge discovery in data (KDD) technology has created new opportunities to analyze ...
Abstract. The advent of knowledge discovery in data (KDD) technol-ogy has created new opportunities ...
Neural network can be used in acquiring hidden knowledge in datasets. However, knowledge acquired by...
Abstract This paper deals with the use of neural network rule extraction techniques based on the Ge-...
Deep neural networks achieve high predictive accuracy by learning latent representations of complex ...
Machine language is a sequence of algorithm assign to do a particular task. Neural Networking is ins...
Neural networks have been shown to be a powerful classification tool in financial applications. Howe...
Contrary to the common opinion, neural networks may be used for knowledge extraction. Recently, a ne...
Abstract. The neural networks are successfully applied to many applications in different domains. Ho...
The problem of credit-risk evaluation is a very challenging and important financial analysis problem...
Credit-risk evaluation is a very challenging and important management science problemin the domain o...
Credit-risk evaluation is a very challenging and important management science problem in the domain ...
The problem of credit-risk evaluation is a very challenging and important financial analysis problem...
The problem of credit-risk evaluation is a very challenging and important financial analysis problem...
The advent of knowledge discovery in data (KDD) technology has created new opportunities to analyze ...
The advent of knowledge discovery in data (KDD) technology has created new opportunities to analyze ...
Abstract. The advent of knowledge discovery in data (KDD) technol-ogy has created new opportunities ...
Neural network can be used in acquiring hidden knowledge in datasets. However, knowledge acquired by...
Abstract This paper deals with the use of neural network rule extraction techniques based on the Ge-...
Deep neural networks achieve high predictive accuracy by learning latent representations of complex ...
Machine language is a sequence of algorithm assign to do a particular task. Neural Networking is ins...
Neural networks have been shown to be a powerful classification tool in financial applications. Howe...
Contrary to the common opinion, neural networks may be used for knowledge extraction. Recently, a ne...
Abstract. The neural networks are successfully applied to many applications in different domains. Ho...