首页> 外国专利> METHOD AND SYSTEM USING MACHINE LEARNING FOR PREDICTION OF STOCKS AND/OR OTHER MARKET INSTRUMENTS PRICE VOLATILITY, MOVEMENTS AND FUTURE PRICING BY APPLYING RANDOM FOREST BASED TECHNIQUES

METHOD AND SYSTEM USING MACHINE LEARNING FOR PREDICTION OF STOCKS AND/OR OTHER MARKET INSTRUMENTS PRICE VOLATILITY, MOVEMENTS AND FUTURE PRICING BY APPLYING RANDOM FOREST BASED TECHNIQUES

机译:机器学习的方法和系统,通过应用基于随机森林的技术预测股票和/或其他市场工具的价格波动性,移动性和未来价格

摘要

A method for providing stock predictive information by a cloud-based computing system implementing a random forest algorithm via a machine learning model by receiving a set of stock data from multiple sources of stock data wherein the set of stock data at least comprises stock prices at the open and close of a market, changes in stock prices during the open and close of a market, and real-time stock data; defining a range in time contained in a window defined of an initial selected month, a day or real-time period and an end of the selected month, day and real-time period; applying the random forest model to the set of stock data by creating multiple decision trees to predict a stock price in a quantified period, amount or percentage change in a stock price; and presenting the predicted stock price in a graphic user interface to an user.
机译:一种用于通过基于云的计算系统通过从多个股票数据源接收一组股票数据,通过机器学习模型实施随机森林算法来提供股票预测信息的方法,其中,该套股票数据至少包括该股票价格在市场的开盘,开盘时股票价格的变化以及实时股票数据;定义包含在窗口中的时间范围,该窗口定义了初始选定的月份,日期或实时时间段以及选定的月份,日期和实时时间段的结束时间;通过创建多个决策树以在量化期内,股价的数量变化或百分比变化中预测股票价格,将随机森林模型应用于股票数据集;并在图形用户界面中向用户呈现预测的股票价格。

著录项

  • 公开/公告号US20200202436A1

    专利类型

  • 公开/公告日2020-06-25

    原文格式PDF

  • 申请/专利权人 Dhruv Siddharth Krishnan;

    申请/专利号US16783457

  • 发明设计人 Dhruv Siddharth Krishnan;

    申请日2020-02-06

  • 分类号

  • 国家 US

  • 入库时间 2022-08-21 10:57:03

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