Investment Management with Innovation in Neural Networks and Metaheuristic Algorithms

Publish Year: 1402
نوع سند: مقاله ژورنالی
زبان: English
View: 47

متن کامل این Paper منتشر نشده است و فقط به صورت چکیده یا چکیده مبسوط در پایگاه موجود می باشد.
توضیح: معمولا کلیه مقالاتی که کمتر از ۵ صفحه باشند در پایگاه سیویلیکا اصل Paper (فول تکست) محسوب نمی شوند و فقط کاربران عضو بدون کسر اعتبار می توانند فایل آنها را دریافت نمایند.

  • Certificate
  • من نویسنده این مقاله هستم

استخراج به نرم افزارهای پژوهشی:

لینک ثابت به این Paper:

شناسه ملی سند علمی:

JR_JIMOB-3-5_003

تاریخ نمایه سازی: 22 اسفند 1402

Abstract:

Objective: Considering the issue of selecting an optimal and desirable stock portfolio, which all investors, both individual and institutional, face.Method: The purpose of the current research is to present trading systems with innovation based on neural networks and metaheuristic algorithms grounded in technical analysis. Therefore, the criteria affecting stock selection in technical analysis have been examined. Consequently, from among the companies listed on the Tehran Stock Exchange during the years ۲۰۱۱ to ۲۰۲۱, ۱۳۵ companies were selected as samples through a systematic elimination method and analyzed using a combination of innovative neural network methods and metaheuristic algorithms.Findings: The results have shown that such a trading system produces comparable or better results compared to Buy & Hold and other trading systems for a wide range of stocks even over relatively longer periods.Conclusion: For future work, it is planned to focus on combining more technical parameters and using convolutional neural networks (CNN) or other deep neural network models.Objective: Considering the issue of selecting an optimal and desirable stock portfolio, which all investors, both individual and institutional, face. Method: The purpose of the current research is to present trading systems with innovation based on neural networks and metaheuristic algorithms grounded in technical analysis. Therefore, the criteria affecting stock selection in technical analysis have been examined. Consequently, from among the companies listed on the Tehran Stock Exchange during the years ۲۰۱۱ to ۲۰۲۱, ۱۳۵ companies were selected as samples through a systematic elimination method and analyzed using a combination of innovative neural network methods and metaheuristic algorithms. Findings: The results have shown that such a trading system produces comparable or better results compared to Buy & Hold and other trading systems for a wide range of stocks even over relatively longer periods. Conclusion: For future work, it is planned to focus on combining more technical parameters and using convolutional neural networks (CNN) or other deep neural network models.

Authors

Mostafa Sohouli Vahed

Ph.D.Candidate Of Accounting ,Department Of Accounting ,Yasuj Branch,Islamic Azad University,Yasuj,Iran

Mohammad Ali Aghaei

Associate Professor,Department Of Accounting,Tarbiat Modares University,Tehran,Iran

Fariborz Avazzadeh Fath

Assistant Professor,Department Of Accounting,Gachsaran Branch ,Islamic Azad University,Gachsaran,Iran.

Ali Pirzad

Assistant Professor,Department Of Management,Yasuj Branch,Islamic Azad University,Yasuj,Iran