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Inicio  /  Applied Sciences  /  Vol: 10 Par: 4 (2020)  /  Artículo
ARTÍCULO
TITULO

Recommending Cryptocurrency Trading Points with Deep Reinforcement Learning Approach

Otabek Sattarov    
Azamjon Muminov    
Cheol Won Lee    
Hyun Kyu Kang    
Ryumduck Oh    
Junho Ahn    
Hyung Jun Oh and Heung Seok Jeon    

Resumen

The net profit of investors can rapidly increase if they correctly decide to take one of these three actions: buying, selling, or holding the stocks. The right action is related to massive stock market measurements. Therefore, defining the right action requires specific knowledge from investors. The economy scientists, following their research, have suggested several strategies and indicating factors that serve to find the best option for trading in a stock market. However, several investors? capital decreased when they tried to trade the basis of the recommendation of these strategies. That means the stock market needs more satisfactory research, which can give more guarantee of success for investors. To address this challenge, we tried to apply one of the machine learning algorithms, which is called deep reinforcement learning (DRL) on the stock market. As a result, we developed an application that observes historical price movements and takes action on real-time prices. We tested our proposal algorithm with three?Bitcoin (BTC), Litecoin (LTC), and Ethereum (ETH)?crypto coins? historical data. The experiment on Bitcoin via DRL application shows that the investor got 14.4% net profits within one month. Similarly, tests on Litecoin and Ethereum also finished with 74% and 41% profit, respectively.

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