Cryptosentiment:面向金融交易的情绪感知深度强化学习的数据集和基线

Loukia Avramelou, P. Nousi, N. Passalis, S. Doropoulos, A. Tefas
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引用次数: 2

摘要

深度学习(DL)模型已经在一些研究中应用于解决金融交易问题。大多数方法将这些问题作为分类或强化学习问题来处理,目的是开发有利可图的策略。最近的研究表明,向金融交易代理提供情绪信息可以提高业绩。然而,这些工作大多集中在以粗粒度的方式收集情绪,这并不总是适合于做出细粒度的交易决策,例如,以分钟为基础。在本文中,我们引入了一个细粒度的加密货币情绪数据集,称为CryptoSentiment,其中包含14种加密货币资产的235,907个情绪分数,这些情绪分数是由各种在线来源收集的。此外,我们使用收集的数据集提供深度强化学习(DRL)基线,研究多模态特征对加密货币交易的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cryptosentiment: A Dataset and Baseline for Sentiment-Aware Deep Reinforcement Learning for Financial Trading
Deep Learning (DL) models have been applied in several studies to solve financial trading problems. Most approaches handle these problems as classification or reinforcement learning problems with the objective of developing profitable strategies. Recent works have demonstrated that supplying financial trading agents with sentiment information can lead to improved performance. However, most of these works focus on collecting sentiment in a coarse-grain manner, which is not always appropriate for making fine-grained trading decisions, e.g., on a minute basis. In this paper, we introduce a fine-grained cryptocurrency sentiment dataset, called CryptoSentiment, which contains 235,907 sentiment scores for 14 cryptocurrency assets, gathered by various online sources. Moreover, we provide Deep Reinforcement Learning (DRL) baselines using the collected dataset, investigating the impact of multi-modal features on cryptocurrency trading.
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