A weighted likelihood technique for robust estimation of multivariate Wrapped distributions of data points scattered on a p- dimensional torus is proposed. The occurrence of outliers in the sample at hand can badly compromise inference for standard techniques such as maximum likelihood method. Therefore, there is the need to handle such model inadequacies in the fitting process by a robust technique and an effective downweighting of observations not following the assumed model. Furthermore, the employ of a robust method could help in situations of hidden and unexpected substructures in the data. Here, it is suggested to build a set of data-dependent weights based on the Pearson residuals and solve the corresponding weighted likelihood estimating equations. In particular, robust estimation is carried out by using a Classification EM algorithm whose M-step is enhanced by the computation of weights based on current parameters’ values. The finite sample behavior of the proposed method has been investigated by a Monte Carlo numerical study and real data examples.
Robust estimation for multivariate wrapped models / Saraceno, Giovanni; Agostinelli, Claudio; Greco, Luca. - In: METRON. - ISSN 0026-1424. - 79:2(2021), pp. 225-240. [10.1007/s40300-021-00214-9]
Robust estimation for multivariate wrapped models
Saraceno, Giovanni;Agostinelli, Claudio;Greco, Luca
2021-01-01
Abstract
A weighted likelihood technique for robust estimation of multivariate Wrapped distributions of data points scattered on a p- dimensional torus is proposed. The occurrence of outliers in the sample at hand can badly compromise inference for standard techniques such as maximum likelihood method. Therefore, there is the need to handle such model inadequacies in the fitting process by a robust technique and an effective downweighting of observations not following the assumed model. Furthermore, the employ of a robust method could help in situations of hidden and unexpected substructures in the data. Here, it is suggested to build a set of data-dependent weights based on the Pearson residuals and solve the corresponding weighted likelihood estimating equations. In particular, robust estimation is carried out by using a Classification EM algorithm whose M-step is enhanced by the computation of weights based on current parameters’ values. The finite sample behavior of the proposed method has been investigated by a Monte Carlo numerical study and real data examples.File | Dimensione | Formato | |
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