Automated Trading Point Forecasting Based on Bicluster Mining and Fuzzy Inference
File version
Author(s)
Yang, Jie
Feng, Xiangfei
Liew, Alan Wee-Chung
Li, Xuelong
Griffith University Author(s)
Primary Supervisor
Other Supervisors
Editor(s)
Date
Size
File type(s)
Location
License
Abstract
Historical financial data are frequently used in technical analysis to identify patterns that can be exploited to achieve trading profits. Although technical analysis using a variety of technical indicators has proven to be useful for the prediction of price trends, it is difficult to use them to formulate trading rules that could be used in an automatic trading system due to the vague nature of the rules. Moreover, it is challenging to determine a specified combination of technical indicators that can be used to detect good trading points and trading rules since different stock may be affected by different set of factors. In this paper, we propose a novel trading point forecasting framework that incorporates a bicluster mining technique to discover significant trading patterns, a method to establish the fuzzy rule base, and a fuzzy inference system optimized for trading point prediction. The proposed method (called BM-FM) was tested on several historical stock datasets and the average performance was compared with the conventional buy-And-hold strategy and five previously reported intelligent trading systems. Experimental results demonstrated the superior performance of the proposed trading system.
Journal Title
IEEE Transactions on Fuzzy Systems
Conference Title
Book Title
Edition
Volume
28
Issue
2
Thesis Type
Degree Program
School
Publisher link
Patent number
Funder(s)
Grant identifier(s)
Rights Statement
Rights Statement
Item Access Status
Note
Access the data
Related item(s)
Subject
Artificial intelligence
Applied mathematics
Science & Technology
Computer Science, Artificial Intelligence
Computer Science
Persistent link to this record
Citation
Huang, Q; Yang, J; Feng, X; Liew, AW-C; Li, X, Automated Trading Point Forecasting Based on Bicluster Mining and Fuzzy Inference, IEEE Transactions on Fuzzy Systems, 2020, 28 (2), pp. 259-272