We present a new method, inspired by the bootstrap, whose goal it is to determine the quality and reliability of a neural network predictor. Our method leads to more robust forecasting along with a large amount of statistical information on forecast performance that we exploit. We exhibit the method in the context of multi-variate time series prediction on financial data from the New York Stock Exchange. It turns out that the variation due to different resamplings (i.e., splits between training, cross-validation, and test sets) is significantly larger than the variation due to different network conditions (such as architecture and initial weights). Furthermore, this method allows us to forecast a probability distribution, as opposed to the ...
M.Ing. (Mechanical Engineering)The combination of non-linear signal processing and financial market ...
This brief proposes an efficient technique for the construction of optimized prediction intervals (P...
The analysis of a time series is a problem well known to statisticians. Neural networks form the bas...
In this study, a new bootstrapped hybrid artificial neural network is proposed for forecasting. This...
The bootstrap method is one of the most widely used methods in literature for construction of confid...
Neural networks demonstrate great potential for discovering non-linear relationships in time-series ...
Abstract: Neural networks are a consistent example of non-parametric estimation, with powerful unive...
Time series can contain both linear and nonlinear components, and linear and nonlinear artificial ne...
This thesis is focused on multiple-step-ahead forecasting of Nasdaq Composite index returns and dail...
WOS: 000466207000001Time series can contain both linear and nonlinear components, and linear and non...
This paper presents an overview of the procedures involved in prediction with machine learning model...
In recent years, neural networks have become increasingly popular in making stock market predictions...
Predicting stock data with traditional time series analysis has become one popular research issue. A...
Stock markets around the world are affected by many highly correlated economic, political and eve...
In classification, regression and time series prediction alike, cross-validation is widely employed ...
M.Ing. (Mechanical Engineering)The combination of non-linear signal processing and financial market ...
This brief proposes an efficient technique for the construction of optimized prediction intervals (P...
The analysis of a time series is a problem well known to statisticians. Neural networks form the bas...
In this study, a new bootstrapped hybrid artificial neural network is proposed for forecasting. This...
The bootstrap method is one of the most widely used methods in literature for construction of confid...
Neural networks demonstrate great potential for discovering non-linear relationships in time-series ...
Abstract: Neural networks are a consistent example of non-parametric estimation, with powerful unive...
Time series can contain both linear and nonlinear components, and linear and nonlinear artificial ne...
This thesis is focused on multiple-step-ahead forecasting of Nasdaq Composite index returns and dail...
WOS: 000466207000001Time series can contain both linear and nonlinear components, and linear and non...
This paper presents an overview of the procedures involved in prediction with machine learning model...
In recent years, neural networks have become increasingly popular in making stock market predictions...
Predicting stock data with traditional time series analysis has become one popular research issue. A...
Stock markets around the world are affected by many highly correlated economic, political and eve...
In classification, regression and time series prediction alike, cross-validation is widely employed ...
M.Ing. (Mechanical Engineering)The combination of non-linear signal processing and financial market ...
This brief proposes an efficient technique for the construction of optimized prediction intervals (P...
The analysis of a time series is a problem well known to statisticians. Neural networks form the bas...