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首页> 外文期刊>Journal of Forecasting >Forecasting intraday S&P 500 index returns: A functional time series approach
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Forecasting intraday S&P 500 index returns: A functional time series approach

机译:预测盘子内标准普尔500指数返回:功能时间序列方法

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摘要

Financial data often take the form of a collection of curves that can be observed sequentially over time; for example, intraday stock price curves and intraday volatility curves. These curves can be viewed as a time series of functions that can be observed on equally spaced and dense grids. Owing to the so-called curse of dimensionality, the nature of high-dimensional data poses challenges from a statistical perspective; however, it also provides opportunities to analyze a rich source of information, so that the dynamic changes of short time intervals can be better understood. In this paper, we consider forecasting a time series of functions and propose a number of statistical methods that can be used to forecast 1-day-ahead intraday stock returns. As we sequentially observe new data, we also consider the use of dynamic updating in updating point and interval forecasts for achieving improved accuracy. The forecasting methods were validated through an empirical study of 5-minute intraday S&P 500 index returns.
机译:财务数据通常采用曲线集合的形式,这些曲线可以随时间顺序观察;例如,日内股价曲线和日内波动曲线。这些曲线可以被视为一系列函数,可以在等间距密集的网格上观察到。由于所谓的维度诅咒,高维数据的性质从统计学角度提出了挑战;然而,它也提供了分析丰富信息源的机会,以便更好地理解短时间间隔的动态变化。在本文中,我们考虑预测函数的时间序列,并提出了一些统计方法,可以用来预测1天提前日内股票回报。当我们顺序观察新的数据时,我们也考虑在更新点和区间预测中使用动态更新来实现改进的精度。通过对标准普尔500指数日内5分钟收益率的实证研究,对预测方法进行了验证。

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