Grammar-based feature generation for time-series prediction [electronic resource] / Anthony Mihirana De Silva, Philip H. W. Leong.
2015
Q325.5
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Title
Grammar-based feature generation for time-series prediction [electronic resource] / Anthony Mihirana De Silva, Philip H. W. Leong.
ISBN
9789812874115 electronic book
9812874119 electronic book
9789812874108
9812874119 electronic book
9789812874108
Published
Singapore : Springer, 2015.
Language
English
Description
1 online resource (xi, 99 pages) : illustrations.
Item Number
10.1007/978-981-287-411-5 doi
Call Number
Q325.5
Dewey Decimal Classification
006.3
Summary
This book proposes a novel approach for time-series prediction using machine learning techniques with automatic feature generation. Application of machine learning techniques to predict time-series continues to attract considerable attention due to the difficulty of the prediction problems compounded by the non-linear and non-stationary nature of the real world time-series. The performance of machine learning techniques, among other things, depends on suitable engineering of features. This book proposes a systematic way for generating suitable features using context-free grammar. A number of feature selection criteria are investigated and a hybrid feature generation and selection algorithm using grammatical evolution is proposed. The book contains graphical illustrations to explain the feature generation process. The proposed approaches are demonstrated by predicting the closing price of major stock market indices, peak electricity load and net hourly foreign exchange client trade volume. The proposed method can be applied to a wide range of machine learning architectures and applications to represent complex feature dependencies explicitly when machine learning cannot achieve this by itself. Industrial applications can use the proposed technique to improve their predictions.
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Includes bibliographical references.
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Source of Description
Online resource; title from PDF title page (SpringerLink, viewed February 18, 2015).
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Series
SpringerBriefs in applied sciences and technology. Computational intelligence.
Available in Other Form
Print version: 9789812874108
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Table of Contents
Introduction
Feature Selection
Grammatical Evolution
Grammar Based Feature Generation
Application of Grammar Framework to Time-series Prediction
Case Studies
Conclusion.
Feature Selection
Grammatical Evolution
Grammar Based Feature Generation
Application of Grammar Framework to Time-series Prediction
Case Studies
Conclusion.