Cryptocurrency Trading based on Heuristic Guided Approach with Feature Engineering

Cagri Karahan, Ş. Öğüdücü
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引用次数: 0

Abstract

In recent years, machine learning and deep learning techniques have been frequently used in Algorithmic Trading. Algorithmic Trading means trading Forex, stock market, commodities, and many markets with the help of computers using systems created with various technical analysis indicators. The BTC/USD market is a market that allows buying and selling of products. People aim to profit by buying and selling in the Bitcoin market. Reinforcement Learning (RL) was also helpful in achieving those kinds of goals. Reinforcement learning is a sub-topic of machine learning. RL addresses the problem of a computational agent learning to make decisions by trial and error. For our application, it is aimed to make as much profit as possible. This study focuses on developing a novel tool to automate currency trading like a BTC/USD in a simulated market with maximum profit and minimum loss. RL technique with a modified version of the Collective Decision Optimization Algorithm is used to implement the proposed model. Feature engineering is also performed to create features that improve the result.
基于特征工程的启发式引导方法的加密货币交易
近年来,机器学习和深度学习技术在算法交易中被频繁使用。算法交易是指在计算机的帮助下交易外汇、股票市场、商品和许多市场,使用具有各种技术分析指标的系统。BTC/USD市场是一个允许买卖产品的市场。人们的目标是通过在比特币市场上买卖来获利。强化学习(RL)在实现这些目标方面也很有帮助。强化学习是机器学习的一个分支。强化学习解决了计算代理通过试错来学习做出决策的问题。对于我们的应用来说,它的目的是尽可能多地赚取利润。本研究的重点是开发一种新的工具,在模拟市场中实现像BTC/USD这样的自动化货币交易,实现利润最大化和损失最小化。RL技术与改进版本的集体决策优化算法被用于实现所提出的模型。特征工程还用于创建改进结果的特征。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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