Time series perturbation by genetic programming

被引:0
|
作者
Lee, GY [1 ]
机构
[1] Young San Univ, Dept Comp & Informat Engn, Kyung Nam, South Korea
关键词
D O I
暂无
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
This paper presents a new algorithm that combines perturbation theory and genetic programming for modeling and forecasting real-world chaotic time series. Both perturbation theory and time series modeling have to build symbolic models for very complex system dynamics. Perturbation theory does not work without well-defined system equation. Difficulties in modeling time series lie in the fact that we can't have or assume any system equation. The new algorithm shows how genetic programming can be combined with perturbation theory for time series modeling. Detailed discussions on successful applications to chaotic time series from practically important fields of science and engineering are given. Computational resources were negligible as compared with earlier similar regression studies based on genetic programming. Desktop PC provides sufficient computing power to make the new algorithm very useful for real-world chaotic time series. Especially, it worked very well for deterministic or stationary time series, while stochastic or nonstationary time series needed extended effort, as it should be.
引用
收藏
页码:403 / 409
页数:7
相关论文
共 50 条
  • [31] Time Series Forecasting through Polynomial Artificial Neural Networks and Genetic Programming
    Bernal-Urbina, M.
    Flores-Mendez, A.
    [J]. 2008 IEEE INTERNATIONAL JOINT CONFERENCE ON NEURAL NETWORKS, VOLS 1-8, 2008, : 3325 - +
  • [32] A measure of time series' predictability using genetic programming applied to stock returns
    Kaboudan, MA
    [J]. JOURNAL OF FORECASTING, 1999, 18 (05) : 345 - 357
  • [33] Implementing the template method pattern in genetic programming for improved time series prediction
    Moskowitz, David
    [J]. GENETIC PROGRAMMING AND EVOLVABLE MACHINES, 2018, 19 (1-2) : 271 - 299
  • [34] Linear genetic programming for time-series modelling of daily flow rate
    Aytac Guven
    [J]. Journal of Earth System Science, 2009, 118 : 137 - 146
  • [35] Modelling medical time series using grammar-guided genetic programming
    Alonso, Fernando
    Martinez, Loic
    Perez, Aurora
    Santamaria, Agustin
    Pedro Valente, Juan
    [J]. ADVANCES IN DATA MINING, PROCEEDINGS: MEDICAL APPLICATIONS, E-COMMERCE, MARKETING, AND THEORETICAL ASPECTS, 2008, 5077 : 32 - 46
  • [36] Genetic programming based approach for modeling time series data of real systems
    Ahalpara, Dilip P.
    Parikh, Jitendra C.
    [J]. INTERNATIONAL JOURNAL OF MODERN PHYSICS C, 2008, 19 (01): : 63 - 91
  • [37] Boolean network identification from perturbation time series data combining dynamics abstraction and logic programming
    Ostrowski, M.
    Pauleve, L.
    Schaub, T.
    Siegel, A.
    Guziolowski, C.
    [J]. BIOSYSTEMS, 2016, 149 : 139 - 153
  • [38] About One Forecast Model of Stochastic Programming Based on Time Series and Genetic Algorithms
    Kerimov, Adalat
    Abdul-zade, Sadagat
    Azadova, Maleyka
    Aliyeva, Tarana
    Huseynova, Rena
    Rzayeva, Ulviyya
    Khalilova, Jeyran
    [J]. 2012 IV INTERNATIONAL CONFERENCE PROBLEMS OF CYBERNETICS AND INFORMATICS (PCI), 2012,
  • [39] Using genetic programming to improve the group method of data handling in time series prediction
    Hiassat, M
    Abbod, MF
    Mort, N
    [J]. STATISTICAL DATA MINING AND KNOWLEDGE DISCOVERY, 2004, : 257 - 268
  • [40] A genetic programming system for time series prediction and its application to El Nino forecast
    De Falco, I
    Della Cioppa, A
    Tarantino, E
    [J]. SOFT COMPUTING: METHODOLOGIES AND APPLICATIONS, 2005, : 151 - 162