An online portfolio strategy based on trend promote price tracing ensemble learning algorithm

How to carry out an investment portfolio efficiently and reasonably has become a hot issue. This study mainly addresses the problem of the instability of forecasting stock price investment and the difficulty in determining investment proportion by proposing the trend peak price tracing (TPPT). First...

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Bibliographic Details
Published in:Knowledge-based systems Vol. 239; p. 107957
Main Authors: Dai, Hong-Liang, Liang, Chu-Xin, Dai, Hong-Ming, Huang, Cui-Yin, Adnan, Rana Muhammad
Format: Journal Article
Language:English
Published: Amsterdam Elsevier B.V 05.03.2022
Elsevier Science Ltd
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ISSN:0950-7051, 1872-7409
Online Access:Get full text
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Summary:How to carry out an investment portfolio efficiently and reasonably has become a hot issue. This study mainly addresses the problem of the instability of forecasting stock price investment and the difficulty in determining investment proportion by proposing the trend peak price tracing (TPPT). First of all, because of the influence of stock price anomaly, TPPT strategy sets adjustable historical window width. It uses slope value to judge prediction direction to track price change, which uses exponential moving average and peak equal weight slope value three-state price prediction method. Secondly, the accumulated wealth target is refined, and the fast error Back Propagation based on gradient projection algorithm (BP) is added. The algorithm solves investment proportion and feedbacks the increasing ability of assets to the investment proportion in order to maximize the accumulated wealth. Finally, comparison of eight empirical strategies in five typical data and statistical tests show that TPPT strategy has great advantages in balancing risk and return, and it is a robust and effective online portfolio strategy.
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ISSN:0950-7051
1872-7409
DOI:10.1016/j.knosys.2021.107957