Feature-Rich Long-term Bitcoin Trading Assistant
- URL: http://arxiv.org/abs/2209.12664v1
- Date: Wed, 14 Sep 2022 14:51:39 GMT
- Title: Feature-Rich Long-term Bitcoin Trading Assistant
- Authors: Jatin Nainani (1), Nirman Taterh (1), Md Ausaf Rashid (1), Ankit
Khivasara (1) ((1) K. J. Somaiya College of Engineering)
- Abstract summary: The Bitcoin market follows the emotions and sentiments of the traders, so another element of our trading environment is the overall daily Sentiment Score of the market on Twitter.
The agent is tested for a period of 685 days which also included the volatile period of Covid-19.
It has been capable of providing reliable recommendations which give an average profit of about 69%.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: For a long time predicting, studying and analyzing financial indices has been
of major interest for the financial community. Recently, there has been a
growing interest in the Deep-Learning community to make use of reinforcement
learning which has surpassed many of the previous benchmarks in a lot of
fields. Our method provides a feature rich environment for the reinforcement
learning agent to work on. The aim is to provide long term profits to the user
so, we took into consideration the most reliable technical indicators. We have
also developed a custom indicator which would provide better insights of the
Bitcoin market to the user. The Bitcoin market follows the emotions and
sentiments of the traders, so another element of our trading environment is the
overall daily Sentiment Score of the market on Twitter. The agent is tested for
a period of 685 days which also included the volatile period of Covid-19. It
has been capable of providing reliable recommendations which give an average
profit of about 69%. Finally, the agent is also capable of suggesting the
optimal actions to the user through a website. Users on the website can also
access the visualizations of the indicators to help fortify their decisions.
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