1. Circular local likelihood.
- Author
-
Di Marzio, Marco, Fensore, Stefania, Panzera, Agnese, and Taylor, Charles C.
- Abstract
We introduce a class of local likelihood circular density estimators, which includes the kernel density estimator as a special case. The idea lies in optimizing a spatially weighted version of the log-likelihood function, where the logarithm of the density is locally approximated by a periodic polynomial. The use of von Mises density functions as weights reduces the computational burden. Also, we propose closed-form estimators which could form the basis of counterparts in the multidimensional Euclidean setting. Simulation results and a real data case study are used to evaluate the performance and illustrate the results. [ABSTRACT FROM AUTHOR]
- Published
- 2018
- Full Text
- View/download PDF