首页> 外文会议>International symposium on methodologies for intelligent systems >Algorithmic Daily Trading Based on Experts' Recommendations
【24h】

Algorithmic Daily Trading Based on Experts' Recommendations

机译:基于专家建议的算法每日交易

获取原文

摘要

Trading financial products evolved from manual transactions, carried out on investors' behalf by well informed market experts to automated software machines trading with millisecond latencies on continuous data feeds at computerised market exchanges. While high-frequency trading is dominated by the algorithmic robots, mid-frequency spectrum, around daily trading, seems left open for deep human intuition and complex knowledge acquired for years to make optimal trading decisions. Banks, brokerage houses and independent experts use these insights to make daily trading recommendations for individual and business customers. How good and reliable are they? This work explores the value of such expert recommendations for algorithmic trading utilising various state of the art machine learning models in the context of ISMIS 2017 Data Mining Competition. We point at highly unstable nature of market sentiments and generally poor individual expert performances that limit the utility of their recommendations for successful trading. However, upon a thorough investigation of different competitive classification models applied to sparse features derived from experts' recommendations, we identified several successful trading strategies that showed top performance in ISMIS 2017 Competition and retrospectively analysed how to prevent such models from over-fitting.
机译:金融产品的交易已从经验丰富的市场专家代表投​​资者进行的人工交易演变为在计算机化市场交易中连续数据输入具有毫秒延迟的自动化软件机器交易。尽管高频交易由算法机器人主导,但围绕每日交易的中频频谱似乎仍然开放,以供深入的人类直觉和多年积累的复杂知识来做出最佳交易决策。银行,经纪行和独立专家利用这些见解为个人和企业客户提出每日交易建议。它们的质量和可靠性如何?这项工作探索了在ISMIS 2017数据挖掘竞赛中利用各种最先进的机器学习模型进行算法交易的专家建议的价值。我们指出市场情绪高度不稳定,而且个别专家的表现普遍较差,这限制了他们成功进行交易的建议的效用。但是,在对适用于专家建议的稀疏特征的不同竞争分类模型进行彻底调查之后,我们确定了几种成功的交易策略,这些交易策略在ISMIS 2017竞赛中表现出最佳表现,并回顾性分析了如何防止此类模型过度拟合。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号