Neural networks have shown considerable success when used to model financial data series. However a major weakness of this class of models is the lack of established procedures for misspecification testing and tests of statistical significance for the various estimated parameters. These issues are particularly important in the case of financial engineering where data generating processes are very complex and dominantly stochastic. After a brief review of neural network models, an input selection algorithm is proposed and discussed. It is based on a multistep multiple testing procedure calibrated by using subsampling. The simulation results show that the proposed testing procedure is an effective criterion for selecting a proper set of relev...
The selection of an appropriate subset of variables from a set of measured potential input variables...
Analyzes the use of linear and neural network models for financial distress classification, with emp...
The report deals with the application of neural network modelling techniques to two categories of fi...
Neural networks have shown considerable success when used to model financial data series. However a ...
The aim of the paper is to develop hypothesis testing procedures both for variable selection and mod...
In this article we examine how model selection in neural networks can be guided by statistical proce...
Neural networks have been shown to be a promising tool for forecasting financial time series. Severa...
Due to a number of weaknesses of the mathematical models found in use in the banking industry, the a...
A data-driven approach called CaNN (Calibration Neural Network) is proposed to calibrate financial a...
Many researchers are interesting in applying the neural networks methods to financial data. In fact ...
Financial forecasting is a field of great interest in academia and economy. The subfield of exchange...
This report is to indicate the knowledge gathered by the project participants through the course of ...
This paper is concerned with modelling time series by single hidden-layer feedforward neural network...
After production and operations, finance and investments are one of the mostfrequent areas of neural...
Nowadays neural networks (NN) are applied in the most various fields and are actually receiving a lo...
The selection of an appropriate subset of variables from a set of measured potential input variables...
Analyzes the use of linear and neural network models for financial distress classification, with emp...
The report deals with the application of neural network modelling techniques to two categories of fi...
Neural networks have shown considerable success when used to model financial data series. However a ...
The aim of the paper is to develop hypothesis testing procedures both for variable selection and mod...
In this article we examine how model selection in neural networks can be guided by statistical proce...
Neural networks have been shown to be a promising tool for forecasting financial time series. Severa...
Due to a number of weaknesses of the mathematical models found in use in the banking industry, the a...
A data-driven approach called CaNN (Calibration Neural Network) is proposed to calibrate financial a...
Many researchers are interesting in applying the neural networks methods to financial data. In fact ...
Financial forecasting is a field of great interest in academia and economy. The subfield of exchange...
This report is to indicate the knowledge gathered by the project participants through the course of ...
This paper is concerned with modelling time series by single hidden-layer feedforward neural network...
After production and operations, finance and investments are one of the mostfrequent areas of neural...
Nowadays neural networks (NN) are applied in the most various fields and are actually receiving a lo...
The selection of an appropriate subset of variables from a set of measured potential input variables...
Analyzes the use of linear and neural network models for financial distress classification, with emp...
The report deals with the application of neural network modelling techniques to two categories of fi...