利用lp -范数组合实现最优预测精度。

IF 0.7 Q3 STATISTICS & PROBABILITY
Massimiliano Giacalone
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引用次数: 1

摘要

统计学中一个众所周知的结果是,两点预测的线性组合比两个相互竞争的预测本身具有更小的均方误差(MSE) (Bates和Granger in J Oper Res Soc 20(4):451-468, 1969)。唯一不可能改进的情况是,其中一个预测在MSE方面已经是最优的。组合方法的种类是多种多样的,从简单平均(SA)到更稳健的方法,如基于中位数或修正平均(TA)或最小绝对偏差或优化技术的方法(Stock和Watson in J Forecast 23(6):405-430, 2004)。如果预测结果在某些情况下显示出高度共线性或数据分布不是高斯分布,则基于标准回归的组合方法可能无法得到真实的结果。因此,我们提出了一种基于lp -范数估计的预测组合方法。这些估计是基于广义误差分布的,它是高斯分布的一种推广,可以用来解决多重共线性和非高斯的情况。为了证明lp -norm的潜力,我们进行了模拟研究和实证研究,将其与其他标准-回归组合方法的性能进行了比较。采用异方差和同方差交替的方法,对不同自回归参数值进行了模拟研究。另一方面,实际数据应用是基于每日Bitfinex比特币历史系列(2014-2020)和25个与道琼斯指数中包含的公司相关的历史系列,随后被考虑。我们发现,通过结合不同的GARCH和ARIMA模型,假设高斯分布和非高斯分布,相对于其他基于回归的组合方法,lp -范数方案提高了预测精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Optimal forecasting accuracy using Lp-norm combination.

Optimal forecasting accuracy using Lp-norm combination.

Optimal forecasting accuracy using Lp-norm combination.

Optimal forecasting accuracy using Lp-norm combination.

A well-known result in statistics is that a linear combination of two-point forecasts has a smaller Mean Square Error (MSE) than the two competing forecasts themselves (Bates and Granger in J Oper Res Soc 20(4):451-468, 1969). The only case in which no improvements are possible is when one of the single forecasts is already the optimal one in terms of MSE. The kinds of combination methods are various, ranging from the simple average (SA) to more robust methods such as the one based on median or Trimmed Average (TA) or Least Absolute Deviations or optimization techniques (Stock and Watson in J Forecast 23(6):405-430, 2004). Standard regression-based combination approaches may fail to get a realistic result if the forecasts show high collinearity in several situations or the data distribution is not Gaussian. Therefore, we propose a forecast combination method based on Lp-norm estimators. These estimators are based on the Generalized Error Distribution, which is a generalization of the Gaussian distribution, and they can be used to solve the cases of multicollinearity and non-Gaussianity. In order to demonstrate the potential of Lp-norms, we conducted a simulated and an empirical study, comparing its performance with other standard-regression combination approaches. We carried out the simulation study with different values of the autoregressive parameter, by alternating heteroskedasticity and homoskedasticity. On the other hand, the real data application is based on the daily Bitfinex historical series of bitcoins (2014-2020) and the 25 historical series relating to companies included in the Dow Jonson, were subsequently considered. We showed that, by combining different GARCH and the ARIMA models, assuming both Gaussian and non-Gaussian distributions, the Lp-norm scheme improves the forecasting accuracy with respect to other regression-based combination procedures.

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来源期刊
Metron-International Journal of Statistics
Metron-International Journal of Statistics STATISTICS & PROBABILITY-
CiteScore
1.60
自引率
0.00%
发文量
11
期刊介绍: METRON welcomes original articles on statistical methodology, statistical applications, or discussions of results achieved by statistical methods in different branches of science.
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