April 28, 2024
Hossein Haghbin

Hossein Haghbin

Academic Rank: Assistant professor
Address:
Degree: Ph.D in Statistics
Phone: 077322
Faculty: Faculty of Intelligent Systems and Data Science

Research

Title Improved functional portmanteau tests
Type Article
Keywords
Journal JOURNAL OF STATISTICAL COMPUTATION AND SIMULATION
DOI
Researchers Hossein Haghbin (Third researcher)

Abstract

Functional time series is a popular method of forecasting in functional data analysis. The Box-Jenkins methodology for model building, with the aim of forecasting, includes three iterative steps of model identification, parameter estimation and diagnostic checking. Portmanteau tests are one of the most popular diagnostic checking tools. In particular, they are applied to find if the residuals of the fitted model are white noise. Gabrys and Kokoszka [Portmanteau test of independence for functional observations. J Am Stat Assoc. 2007;102(480):1338–1348.] proposed a portmanteau test of independence for functional observation based on Box and Pierce's statistic. Their statistic is too sensitive to the lag value, specially when the sample size is small. Here, two modifications of Gabrys and Kokoszka statistic are presented, which have superior properties in small samples. The efficiency of the modified statistics is demonstrated through a simulation study.