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Self projecting time series forecast: an online stock trend forecast system

机译:自我预测时间序列预测:在线库存趋势预测系统

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This paper explores the applicability of time series analysis for stock trend forecast and presents the Self projecting Time Series Forecasting (STSF) System which we have developed. The basic idea behind this system is the online discovery of mathematical formulae that can approximately generate historical patterns from given time series. SPTF offers a set of combined prediction functions for stocks, including Point Forecast and Confidence Interval Forecast, where the latter could be considered as a subsidiary index of the former in the process of decision making. We propose a new approach to determine the support line and resistance line that are essential for market assessment. Empirical tests have shown that the hit rate of the prediction is impressively high if the model is properly selected, indicating a good accuracy and efficiency of this approach. The numerical forecast result of STSF is superior to normal descriptive investment recommendation offered by most web brokers. Furthermore, SPTF is an online system and investors and analysts can upload their real time data to get the forecast result on the web.
机译:本文探讨了时间序列分析在股票趋势预测中的适用性,并介绍了我们开发的自投影时间序列预测(STSF)系统。该系统的基本思想是在线发现数学公式,该数学公式可以根据给定的时间序列大致生成历史模式。 SPTF为股票提供了一组组合的预测功能,包括点预测和置信区间预测,在决策过程中后者可被视为前者的辅助指数。我们提出一种新方法来确定对于市场评估至关重要的支撑线和阻力线。经验测试表明,如果正确选择模型,则预测的命中率非常高,表明此方法具有良好的准确性和效率。 STSF的数值预测结果优于大多数网络经纪人提供的常规描述性投资建议。此外,SPTF是一个在线系统,投资者和分析人员可以上传其实时数据以在网上获取预测结果。

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