Prediction-Based Portfolio Optimization Model for Iran’s Oil Dependent Stocks Using Data Mining Methods
(ندگان)پدیدآور
Sayadi, Mohammadomidi, meysamنوع مدرک
TextResearch Paper
زبان مدرک
Englishچکیده
This study applied a prediction-based portfolio optimization model to explore the results of portfolio predicament in the Tehran Stock Exchange. To this aim, first, the data mining approach was used to predict the petroleum products and chemical industry using clustering stock market data. Then, some effective factors, such as crude oil price, exchange rate, global interest rate, gold price, and S&P 500 index, were used to estimate each industry index using Radial Basis Function and Multi-Layer Perceptron neural networks. Finally, by comparing the validation ratios in a bullish market using K-Means, SOM, and Fuzzy C-means clustering algorithms, the best algorithm was employed to predict indicators for each industry. The sample was collected between December 15, 2008, and April 25, 2018. The results revealed that the Multi-Layer Perceptron algorithm had the highest accuracy and was the best option for portfolio predicament. However, the Fuzzy C-means algorithm produced the best clusters. Practical results showed that Sepahan oil and Kharg petrochemical stocks were the most important stocks in the short term while Kharg petrochemical, Fannavaran petrochemical, and Tehran oil refinery stocks made higher contributions in a stock portfolio in the medium- or long-term.
کلید واژگان
Stock indexPortfolio Optimization
Data mining
Artificial neural networks
clustering
شماره نشریه
2تاریخ نشر
2019-12-011398-09-10
ناشر
Shiraz Universityدانشگاه شیراز
سازمان پدید آورنده
Faculty of Economics, Kharazmi University, Tehran, Iran.Faculty of Economics, Kharazmi University, Tehran, Iran.




