Using GP to Evolve Decision Rules for Classification in Financial Data Sets
Created by W.Langdon from
gp-bibliography.bib Revision:1.7954
- @InProceedings{wang:2010:ICCI,
-
author = "Pu Wang and Edward P. K. Tsang and Thomas Weise and
Ke Tang and Xin Yao",
-
title = "Using GP to Evolve Decision Rules for Classification
in Financial Data Sets",
-
booktitle = "9th IEEE International Conference on Cognitive
Informatics (ICCI 2010)",
-
year = "2010",
-
editor = "Fuchun Sun and Yingxu Wang and Jianhua Lu and
Bo Zhang and Witold Kinsner and Lotfi A. Zadeh",
-
pages = "722--727",
-
address = "Tsinghua University, Beijing, China",
-
month = "7-9 " # jul,
-
publisher = "IEEE",
-
note = "Special Session on Evolutionary Computing",
-
email = "tweise@gmx.de",
-
keywords = "genetic algorithms, genetic programming, data mining,
financial data sets, genetic decision trees, Decision
rules, Classification, Forecasting, Finance, EDDIE,
FGP, AUC, Entropy, financial forecasting, genetic
programming approach, investment, machine learning,
financial data processing, investment, learning
(artificial intelligence), pattern classification",
-
isbn13 = "978-1-4244-8040-1",
-
URL = "http://www.it-weise.de/documents/files/WTWTY2010UGPTEDRFCIFDS.pdf",
-
URL = "http://home.ustc.edu.cn/~wuyou308/publications/paper1.pdf",
-
DOI = "doi:10.1109/COGINF.2010.5599820",
-
size = "9 pages",
-
abstract = "Financial forecasting is a lucrative and complicated
application of machine learning. In this paper, we
focus on the finding investment opportunities. We
therefore explore four different Genetic Programming
approaches and compare their performances on real-world
data. We find that the novelties we introduced in some
of these approaches indeed improve the results.
However, we also show that the Genetic Programming
process itself is still very inefficient and that
further improvements are necessary if we want this
application of GP to become successful.",
-
notes = "http://www.icci2010.edu.cn/ Also known as
\cite{5599820}",
- }
Genetic Programming entries for
Pu Wang
Edward P K Tsang
Thomas Weise
Ke Tang
Xin Yao
Citations