Machine Learning on Stock Price Movement Forecast: The Sample of the Taiwan Stock Exchange
Abstract
This paper addresses problem of predicting direction of movement of stock price index for Taiwan stock markets. The study compares four prediction models, Artificial Neural Network (ANN), Support Vector Machine (SVM), random forest and naive-Bayes with two approaches for input to these models. The first data preprocess approach involves computation of ten technical parameters using stock trading data while the second approach focuses on representing these technical parameters as trend deterministic data. Accuracy of each of the prediction models for each of the two input approaches is evaluated. Evaluation is carried out on 19 years of historical data from 2000 to 2018 of Taiwan Stock Market Index. The experimental results suggest that for the first approach of input data where ten technical parameters are represented as continuous values, ANN outperforms other three prediction models on overall performance. Experimental results also show that the performance of all the prediction models improve when these technical parameters are represented as binary trend deterministic data.Keywords: Naive-Bayes classification, Artificial neural networks, Support vector machine, Random forest, Machine learning, ForecastJEL Classifications: C11; C15; C53; G17DOI: https://doi.org/10.32479/ijefi.7560Downloads
Download data is not yet available.
Downloads
Published
2019-03-08
How to Cite
Huang, C.-S., & Liu, Y.-S. (2019). Machine Learning on Stock Price Movement Forecast: The Sample of the Taiwan Stock Exchange. International Journal of Economics and Financial Issues, 9(2), 189–201. Retrieved from https://econjournals.com./index.php/ijefi/article/view/7560
Issue
Section
Articles
Views
- Abstract 319
- PDF 695