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A convolutional neural network based approach to financial time series prediction
by
Mohan, B. H. Krishna
, Durairaj, Dr. M.
in
Artificial Intelligence
/ Artificial neural networks
/ Autoregressive models
/ Beans
/ Chaos theory
/ Computational Biology/Bioinformatics
/ Computational Science and Engineering
/ Computer Science
/ Data Mining and Knowledge Discovery
/ Errors
/ Image Processing and Computer Vision
/ Neural networks
/ Polynomials
/ Pricing
/ Probability and Statistics in Computer Science
/ Regression analysis
/ S.I.: Deep Learning for Time Series Data
/ Special Issue on Deep Learning for Time Series Data
/ Statistical analysis
/ Time series
2022
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A convolutional neural network based approach to financial time series prediction
by
Mohan, B. H. Krishna
, Durairaj, Dr. M.
in
Artificial Intelligence
/ Artificial neural networks
/ Autoregressive models
/ Beans
/ Chaos theory
/ Computational Biology/Bioinformatics
/ Computational Science and Engineering
/ Computer Science
/ Data Mining and Knowledge Discovery
/ Errors
/ Image Processing and Computer Vision
/ Neural networks
/ Polynomials
/ Pricing
/ Probability and Statistics in Computer Science
/ Regression analysis
/ S.I.: Deep Learning for Time Series Data
/ Special Issue on Deep Learning for Time Series Data
/ Statistical analysis
/ Time series
2022
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Do you wish to request the book?
A convolutional neural network based approach to financial time series prediction
by
Mohan, B. H. Krishna
, Durairaj, Dr. M.
in
Artificial Intelligence
/ Artificial neural networks
/ Autoregressive models
/ Beans
/ Chaos theory
/ Computational Biology/Bioinformatics
/ Computational Science and Engineering
/ Computer Science
/ Data Mining and Knowledge Discovery
/ Errors
/ Image Processing and Computer Vision
/ Neural networks
/ Polynomials
/ Pricing
/ Probability and Statistics in Computer Science
/ Regression analysis
/ S.I.: Deep Learning for Time Series Data
/ Special Issue on Deep Learning for Time Series Data
/ Statistical analysis
/ Time series
2022
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A convolutional neural network based approach to financial time series prediction
Journal Article
A convolutional neural network based approach to financial time series prediction
2022
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Overview
Financial time series are chaotic that, in turn, leads their predictability to be complex and challenging. This paper presents a novel financial time series prediction hybrid that involves Chaos Theory, Convolutional neural network (CNN), and Polynomial Regression (PR). The financial time series is first checked in this hybrid for the presence of chaos. The chaos in the series of times is later modeled using Chaos Theory. The modeled time series is input to CNN to obtain initial predictions. The error series obtained from CNN predictions is fit by PR to get error predictions. The error predictions and initial predictions from CNN are added to obtain the final predictions of the hybrid model. The effectiveness of the proposed hybrid (Chaos+CNN+PR) is tested by using three types of Foreign exchange rates of financial time series (INR/USD, JPY/USD, SGD/USD), commodity prices (Gold, Crude Oil, Soya beans), and stock market indices (S&P 500, Nifty 50, Shanghai Composite). The proposed hybrid is superior to Auto-regressive integrated moving averages (ARIMA), Prophet, Classification and Regression Tree (CART), Random Forest (RF), CNN, Chaos+CART, Chaos+RF and Chaos+CNN in terms of MSE, MAPE, Dstat, and Theil’s
U
.
Publisher
Springer London,Springer Nature B.V
Subject
/ Beans
/ Computational Biology/Bioinformatics
/ Computational Science and Engineering
/ Data Mining and Knowledge Discovery
/ Errors
/ Image Processing and Computer Vision
/ Pricing
/ Probability and Statistics in Computer Science
/ S.I.: Deep Learning for Time Series Data
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