[期刊论文][Full-length article]


Pattern graph tracking-based stock price prediction using big data

作   者:
Seungwoo Jeon;Bonghee Hong;Victor Chang;

出版年:2018

页     码:171 - 187
出版社:Elsevier BV


摘   要:

Stock price forecasting is the most difficult field owing to irregularities. However, because stock prices sometimes show similar patterns and are determined by a variety of factors, we propose determining similar patterns in historical stock data to achieve daily stock prices with high prediction accuracy and potential rules for selecting the main factors that significantly affect the price, while simultaneously considering all factors. This study is intended at suggesting a new complex methodology that finds the optimal historical dataset with similar patterns according to various algorithms for each stock item and provides a more accurate prediction of daily stock price. First, we use a Dynamic Time Warping algorithm to find patterns with the most similar situation adjacent to a current pattern. Second, we select the determinants most affected by the stock price using feature selection based on Stepwise Regression Analysis. Moreover, we generate an artificial neural network model with selected features as training data for predicting the best stock price. Finally, we use Jaro–Winkler distance with Symbolic Aggregate approXimation (SAX) as a prediction accuracy measure to verify the accuracy of our model.



关键字:

Stock price prediction ; Dynamic time warping ; Feature selection ; Artificial neural network ; Jaro–Winkler distance ; Symbolic aggregate approXimation


所属期刊
Future Generation Computer Systems
ISSN: 0167-739X
来自:Elsevier BV