Deep Learning in Time Series Analysis

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A-Test Method
A01=Arash Gharehbaghi
advanced data classification
Author_Arash Gharehbaghi
Category=PBT
Category=PS
Category=UNA
Category=UYZM
Convolutional Layer
Cyclic Time Series
Deep cyclic learning
Deep Learning Method
deep learning methods for cyclic signals
Discrimination Power
Dynamic Time Warping
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eq_computing
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eq_isMigrated=2
eq_nobargain
eq_non-fiction
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ESNs
Heart Sound Signal
HMM.
Input Time Series
K-Fold Validation
machine learning theory
mathematical derivations
Multi Layer Perceptron Neural Networks
Multidimensional Time Series
Multilayer Neural Network
neural network optimization
Recurrent Networks
Recurrent Neural Networks
Reservoir Computing
sequential data modeling
signal processing techniques
Spectral Energies
Stochastic Time Series
Structural risk validation
Support Vector Machine
TDNN
Temporal Windows
Time Series
Time Series Classification
Time-Growing neural network

Product details

  • ISBN 9781032418865
  • Weight: 300g
  • Dimensions: 156 x 234mm
  • Publication Date: 13 Apr 2025
  • Publisher: Taylor & Francis Ltd
  • Publication City/Country: GB
  • Product Form: Paperback
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Deep learning is an important element of artificial intelligence, especially in applications such as image classification in which various architectures of neural network, e.g., convolutional neural networks, have yielded reliable results. This book introduces deep learning for time series analysis, particularly for cyclic time series. It elaborates on the methods employed for time series analysis at the deep level of their architectures. Cyclic time series usually have special traits that can be employed for better classification performance. These are addressed in the book. Processing cyclic time series is also covered herein.

An important factor in classifying stochastic time series is the structural risk associated with the architecture of classification methods. The book addresses and formulates structural risk, and the learning capacity defined for a classification method. These formulations and the mathematical derivations will help the researchers in understanding the methods and even express their methodologies in an objective mathematical way. The book has been designed as a self-learning textbook for the readers with different backgrounds and understanding levels of machine learning, including students, engineers, researchers, and scientists of this domain. The numerous informative illustrations presented by the book will lead the readers to a deep level of understanding about the deep learning methods for time series analysis.

Arash Gharehbaghi obtained a M.Sc. degree in biomedical engineering from Amir Kabir University, Tehran, Iran, in 2000, an advanced M.Sc. of Telemedia from Mons University, Belgium, and PhD degree of biomedical engineering from Linköping University, Sweden in 2014. He is a researcher at the School of Information Technology, Halmstad University, Sweden. He has conducted several studies on signal processing, machine learning and artificial intelligence over two decades that led to the international patents, and publications in high prestigious scientific journals.

He has proposed new learning methods for learning and validating time series analysis, among which Time-Growing Neural Network, and A-Test are two recent ones that have interested the machine learning community. He won the first prize of young investigator award from the International Federation of Biomedical Engineering in 2014.

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