Implementation of a Type-2 Fuzzy Logic Based Prediction System for the Nigerian Stock Exchange
Isobo Nelson Davies, Donald Ene, Ibiere Boma Cookey, Godwin Fred Lenu

TL;DR
This paper presents a Type-2 Fuzzy Logic based prediction system for the Nigerian Stock Exchange, aiming to handle market uncertainties and improve trading decision accuracy.
Contribution
It introduces a novel stock prediction system using Type-2 Fuzzy Logic with multiple technical indicators and implements it in VB.NET and SQL Server.
Findings
System effectively manages market uncertainties.
Accurate predictions demonstrated on Nigerian Stock Exchange data.
Improves decision-making in stock trading under uncertain conditions.
Abstract
Stock Market can be easily seen as one of the most attractive places for investors, but it is also very complex in terms of making trading decisions. Predicting the market is a risky venture because of the uncertainties and nonlinear nature of the market. Deciding on the right time to trade is key to every successful trader as it can lead to either a huge gain of money or totally a loss in investment that will be recorded as a careless trade. The aim of this research is to develop a prediction system for stock market using Fuzzy Logic Type2 which will handle these uncertainties and complexities of human behaviour in general when it comes to buy, hold or sell decision making in stock trading. The proposed system was developed using VB.NET programming language as frontend and Microsoft SQL Server as backend. A total of four different technical indicators were selected for this research.…
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Taxonomy
TopicsStock Market Forecasting Methods
