A Hill Climbing Algorithm for Maximum Likelihood Estimation of the Gamma Distributed-lag Model with Multiple Explanatory Variables

IF 0.6 Q4 STATISTICS & PROBABILITY
Alessandro Magrini
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引用次数: 3

Abstract

Linear regression with distributed-lags is a consolidated methodology in time series analysis to assess the impact of several explanatory variables on an outcome that may persist over several periods.Finite polynomial distributed-lags have a long tradition due to a good flexibility accompanied by the advantage of a linear representation, which allows parameter estimation through Ordinary Least Squares (OLS).However, they require to specify polynomial degree and lag length, and entail the loss of some initial observations.Gamma distributed-lags overcome these problems and represents a good compromise between flexibility and number of parameters, however they have not a linear representation in the parameters and currently available estimation methods, like OLS-based grid search and non-linear least squares, are unsatisfactory in the case of multiple explanatory variables.For these reasons, the Gamma lag distribution has not been able to replace finite polynomial lags in applied time series analysis, and it has been mostly employed in the case of a single explanatory variable.In this paper, we propose a hill climbing algorithm for maximum likelihood estimation of multiple linear regression with Gamma distributed-lags.The proposed algorithm is applied to assess the dynamic relationship between Bitcoin's price and three composite indices of the US stock market.
多解释变量分布滞后模型的最大似然估计爬坡算法
具有分布滞后的线性回归是时间序列分析中的一种综合方法,用于评估几个解释变量对可能持续几个时期的结果的影响。有限多项式分布滞后由于其良好的灵活性和线性表示的优势而具有悠久的传统,它允许通过普通最小二乘(OLS)进行参数估计。然而,它们需要指定多项式度和滞后长度,并导致一些初始观测值的损失。Gamma分布滞后克服了这些问题,代表了灵活性和参数数量之间的良好折衷,但是它们在参数中没有线性表示,目前可用的估计方法,如基于ols的网格搜索和非线性最小二乘,在多个解释变量的情况下是不令人满意的。由于这些原因,Gamma滞后分布在应用时间序列分析中还不能代替有限的多项式滞后,它主要用于单一解释变量的情况。本文提出了一种求解Gamma分布滞后的多元线性回归的极大似然估计的爬坡算法。将该算法应用于评估比特币价格与美国股市三大综合指数之间的动态关系。
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来源期刊
Austrian Journal of Statistics
Austrian Journal of Statistics STATISTICS & PROBABILITY-
CiteScore
1.10
自引率
0.00%
发文量
30
审稿时长
24 weeks
期刊介绍: The Austrian Journal of Statistics is an open-access journal (without any fees) with a long history and is published approximately quarterly by the Austrian Statistical Society. Its general objective is to promote and extend the use of statistical methods in all kind of theoretical and applied disciplines. The Austrian Journal of Statistics is indexed in many data bases, such as Scopus (by Elsevier), Web of Science - ESCI by Clarivate Analytics (formely Thompson & Reuters), DOAJ, Scimago, and many more. The current estimated impact factor (via Publish or Perish) is 0.775, see HERE, or even more indices HERE. Austrian Journal of Statistics ISNN number is 1026597X Original papers and review articles in English will be published in the Austrian Journal of Statistics if judged consistently with these general aims. All papers will be refereed. Special topics sections will appear from time to time. Each section will have as a theme a specialized area of statistical application, theory, or methodology. Technical notes or problems for considerations under Shorter Communications are also invited. A special section is reserved for book reviews.
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