Constructing a Correlation Model to Predict Stocks Movement and Evaluate Investment Return of Thailand Stock Market

Autor: EKASIT RUNGROJKANRANAN, 林達財
Rok vydání: 2019
Druh dokumentu: 學位論文 ; thesis
Popis: 107
Investing in the stock market remains one of the most popular investment strategies from the past to the present. Many researchers are using data mining techniques such as neural networks and support vector machines to develop stock forecasting models. They tend to be very focused on predicting the price of a single stock based on their own data. This study proposes a stock correlation model to find the co-movement between two stocks by using the movement of stock A to forecast the movement of stock B which is delayed by 1-3 days. The correlation analysis generated stocks with highly correlated and negative pairs, then investment simulation model is used to generate buy or sell signal based on its time delay. The financial sector of the stock exchange of Thailand is measured in this experiment. The result shows that stocks with a correlation above 0.5 has the highest accuracy rate of gain at 68% and generates a 3.02% average profit per transaction. The stocks with a correlation between 0.4 to 0.5 show 56% of accuracy rate and 1.90% of average profit per transaction. Negatively correlated stocks show 67% of gaining accuracy rate and 1.15% of average profit per transaction.
Databáze: Networked Digital Library of Theses & Dissertations