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Portfolio Optimization in DSE Using Financial Indicators, LSTM & PyportfolioOpt


Hasan M Sami1*, Lana Fardous2 and Debangshu Saha Ruhit3

1School of Business, Canadian University of Bangladesh, Dhaka, Bangladesh, and 2&3Dept. of Finance, Canadian University of Bangladesh, Dhaka, Bangladesh. 

*Correspondence: hasan.sami@cub.edu.bd (Hasan M Sami, Senior Lecturer, School of Business, Canadian University of Bangladesh Dhaka, Bangladesh).

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ABSTRACT

Due to its suitable power to anticipate using Non-Linear forecasting methodologies, LSTM (Long Short-Term Memory) has changed the approach to time series prediction several folds. Process compatibilities of technical identifiers and various financial benchmarks that are defining financial decision-making in international markets are affecting Bangladesh Market as well. Issues like MACD and RSI as a technical investigator and financial ratio aspects of EPS and PE Ratio play an important role in the selection of assets in DSE. Given adequate training in line with intended functionality models, RNN has the potential to think through in a similar manner and the probable results are exhibited in this paper. Because of the Gated Structure, which refers to retaining important information and discarding irrelevant information through diminishing gradient and exploding gradient, LSTM has achieved significant advances in nonlinear forecasting that is based on human behavior. In this study, we compared two alternative portfolios that will be dependent on LSTM's future forecasting capabilities in terms of projecting the greatest potential output, which is demonstrated using Portfolio Optimization principles. 

Keywords: PE Ratio, Markowitz portfolio theory, LSTM, Performance, and Non-linear price prediction.

Citation: Sami HM, Fardous L, and Ruhit DS. (2021). Portfolio optimization in DSE using financial indicators, LSTM & PyportfolioOpt, Int. J. Mat. Math. Sci., 3(4), 74-84. 

https://doi.org/10.34104/ijmms.021.074084


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