Stock trading and prediction using multi-layer perceptron neural networks
Yip, Jia Meng
Date of Issue2016
School of Electrical and Electronic Engineering
Stock price prediction has always been a choice problem to solve for stock enthusiast and investors alike. Everyone would like to remove the shade of uncertainty over the stock’s future prices and trends. Tackling this problem with neural networks has been done by many for decades. This project applies a multi-layer perceptron model with a moving window simulation to the stock price prediction problem, based on a paper written by Turchenko et al. Various experiments were carried out to determine the parameters of a better model with higher accuracy. Comparisons on the influence of each parameter over the results were done in later parts of the report.
DRNTU::Engineering::Electrical and electronic engineering::Computer hardware, software and systems
Final Year Project (FYP)
Nanyang Technological University