Application of grammar framework to time-series prediction

被引:0
|
作者
De Silva, Anthony Mihirana [1 ]
Leong, Philip H. W. [1 ]
机构
[1] Electrical and Information Engineering, University of Sydney, Sydney,NSW,2006, Australia
来源
SpringerBriefs in Applied Sciences and Technology | 2015年 / 0卷 / 9789812874108期
关键词
Data preprocessing - Electricity load - Financial time series predictions - Model Selection - Parameter-tuning;
D O I
10.1007/978-981-287-411-5_5
中图分类号
学科分类号
摘要
The previous chapter presented an approach to generate a large number of features using an expert-defined grammar framework. This chapter proceeds to investigate ways to explore such large feature spaces to extract the best features for prediction, i.e. feature selection (FS). Since the proposed framework involves the generation of a large pool of features, there can be redundant and irrelevant features. Therefore, FS is as equally important as feature generation. Several FS and feature extraction techniques can be explored to determine the best approach to discover good feature subsets for particular ML algorithms in different applications. A hybrid feature selection and generation algorithm using grammatical evolution is described as a technique to avoid selective feature pruning by crafting the fitness function to penalise bad feature subsets. The chapter also describes how ML algorithms were used to predict time-series using the sliding window technique, data partitioning, model selection and parameter tuning. © 2015, The Author(s).
引用
收藏
页码:51 / 62
相关论文
共 50 条
  • [41] Bootstrap prediction intervals for nonlinear time-series
    Haraki, Daisuke
    Suzuki, Tomoya
    Ikeguchi, Tohru
    INTELLIGENT DATA ENGINEERING AND AUTOMATED LEARNING - IDEAL 2006, PROCEEDINGS, 2006, 4224 : 155 - 162
  • [42] Time-series prediction based on pattern classification
    Zeng, Z
    Yan, H
    Fu, AMN
    ARTIFICIAL INTELLIGENCE IN ENGINEERING, 2001, 15 (01): : 61 - 69
  • [43] Time-Series Prediction for Sensing in Smart Greenhouses
    Ali, Asmaa
    Hassanein, Hossam S.
    2020 IEEE GLOBAL COMMUNICATIONS CONFERENCE (GLOBECOM), 2020,
  • [44] WORKLOAD PREDICTION USING TIME-SERIES ANALYSIS
    CSONTOS, E
    COMPUTER PERFORMANCE, 1984, 5 (02): : 70 - 79
  • [45] Temporal Feature Selection for Time-series Prediction
    Hido, Shohei
    Morimura, Tetsuro
    2012 21ST INTERNATIONAL CONFERENCE ON PATTERN RECOGNITION (ICPR 2012), 2012, : 3557 - 3560
  • [46] Multiple Time-Series Prediction through Multiple Time-Series Relationships Profiling and Clustered Recurring Trends
    Widiputra, Harya
    Pears, Russel
    Kasabov, Nikola
    ADVANCES IN KNOWLEDGE DISCOVERY AND DATA MINING, PT II: 15TH PACIFIC-ASIA CONFERENCE, PAKDD 2011, 2011, 6635 : 161 - 172
  • [47] LINEAR LEAST-SQUARES METHOD FOR TIME-SERIES ANALYSIS WITH AN APPLICATION TO A METHANE TIME-SERIES
    KHALIL, MAK
    MORAES, FP
    JOURNAL OF THE AIR & WASTE MANAGEMENT ASSOCIATION, 1995, 45 (01): : 62 - 63
  • [49] Application of multivariate time-series model for high performance computing (HPC) fault prediction
    Pei, Xiangdong
    Yuan, Min
    Mao, Guo
    Pang, Zhengbin
    PLOS ONE, 2023, 18 (10):
  • [50] Nonparametric models for functional data, with application in regression, time-series prediction and curve discrimination
    Ferraty, F
    Vieu, P
    JOURNAL OF NONPARAMETRIC STATISTICS, 2004, 16 (1-2) : 111 - 125