首页> 外文期刊>Information Processing & Management >A quantitative stock prediction system based on financial news
【24h】

A quantitative stock prediction system based on financial news

机译:基于财经新闻的定量库存预测系统

获取原文
获取原文并翻译 | 示例
       

摘要

We examine the problem of discrete stock price prediction using a synthesis of linguistic, financial and statistical techniques to create the Arizona Financial Text System (AZFinText). The research within this paper seeks to contribute to the AZFinText system by comparing AZFinText's predictions against existing quantitative funds and human stock pricing experts. We approach this line of research using textual representation and statistical machine learning methods on financial news articles partitioned by similar industry and sector groupings. Through our research, we discovered that stocks partitioned by Sectors were most predictable in measures of Closeness, Mean Squared Error (MSE) score of 0.1954, predicted Directional Accuracy of 71.18% and a Simulated Trading return of 8.50% (compared to 5.62% for the S&P 500 index). In direct comparisons to existing market experts and quantitative mutual funds, our system's trading return of 8.50% outperformed well-known trading experts. Our system also performed well against the top 10 quantitative mutual funds of 2005, where our system would have placed fifth. When comparing AZFinText against only those quantitative funds that monitor the same securities, AZFinText had a 2% higher return than the best performing quant fund.
机译:我们使用语言,财务和统计技术的综合方法来研究创建亚利桑那金融文本系统(AZFinText)的离散股票价格预测问题。本文中的研究旨在通过将AZFinText的预测与现有的定量基金和人力股票定价专家进行比较,为AZFinText系统做出贡献。我们使用文本表示法和统计机器学习方法对按类似行业和行业分组划分的金融新闻文章进行这一研究。通过我们的研究,我们发现按行业划分的股票在收盘性,均方误差(MSE)得分0.1954,预测方向准确性为71.18%和模拟交易收益为8.50%(相比之下为5.62%)方面最可预测。标普500指数)。与现有市场专家和定量共同基金进行直接比较,我们系统的交易收益率为8.50%,优于知名交易专家。我们的系统在2005年排名前10的定量共同基金中也表现出色,在该排名中,我们的系统排名第五。将AZFinText与仅监视相同证券的那些定量基金进行比较时,AZFinText的收益比表现最佳的量化基金高2%。

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