Time series forecasting using massively parallel genetic programming
Created by W.Langdon from
gp-bibliography.bib Revision:1.8081
- @InProceedings{eklund:2003:PDPS,
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author = "Sven E Eklund",
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title = "Time series forecasting using massively parallel
genetic programming",
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booktitle = "Proceedings of Parallel and Distributed Processing
International Symposium",
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year = "2003",
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pages = "143--147",
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month = "22-26 " # apr,
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organisation = "IEEE",
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keywords = "genetic algorithms, genetic programming, EHW, FPGA,
Virtex XC2V10000, wolfe sunspot",
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DOI = "doi:10.1109/IPDPS.2003.1213272",
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URL = "http://dalea.du.se/research/?itemId=147",
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abstract = "a massively parallel GP model in hardware as an
efficient,flexible and scaleable machine learning
system.This fine-grained diffusion architecture
consists of a large amount of independent processing
nodes that evolve a large number of small, overlapping
subpopulations.Every node has an embedded CPU that
executes a linear machine code GP representation at a
rate of up to 20,000 generations per second.Besides
being efficient,implementing the system in VLSI makes
it highly portable and makes it possible to target
mobile,n-line applications.The SIMD-like architecture
also makes the system scalable so that larger problems
can be addressed with a system with more processing
nodes.Finally,the use of GP representation and VHDL
modeling makes the system highly flexible and easy to
adapt to different applications.We demonstrate the
effectiveness of the system on a time series
forecasting application.",
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notes = "outperforms SETAR but not best ANN",
- }
Genetic Programming entries for
Sven E Eklund
Citations