Discovering Stock Price Prediction Rules of Bombay Stock Exchange Using Rough Fuzzy Multi Layer Perception Networks
Arindam Chaudhuri, Kajal De, Dipak Chatterjee

TL;DR
This paper presents a novel approach using Rough Fuzzy Multi Layer Perception Networks to generate accurate, concise stock price prediction rules for the Bombay Stock Exchange, enhancing prediction efficiency and rule quality.
Contribution
The paper introduces a new rule extraction methodology combining Rough Sets, Fuzzy Logic, and Genetic Algorithms for stock market prediction, emphasizing rule simplicity and accuracy.
Findings
Extracted rules are fewer, accurate, and have high certainty.
Method reduces computation time compared to existing techniques.
Generated rules show high predictive reliability.
Abstract
In India financial markets have existed for many years. A functionally accented, diverse, efficient and flexible financial system is vital to the national objective of creating a market driven, productive and competitive economy. Today markets of varying maturity exist in equity, debt, commodities and foreign exchange. In this work we attempt to generate prediction rules scheme for stock price movement at Bombay Stock Exchange using an important Soft Computing paradigm viz., Rough Fuzzy Multi Layer Perception. The use of Computational Intelligence Systems such as Neural Networks, Fuzzy Sets, Genetic Algorithms, etc. for Stock Market Predictions has been widely established. The process is to extract knowledge in the form of rules from daily stock movements. These rules can then be used to guide investors. To increase the efficiency of the prediction process, Rough Sets is used to…
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Taxonomy
TopicsStock Market Forecasting Methods · Rough Sets and Fuzzy Logic · Neural Networks and Applications
