Article ID Journal Published Year Pages File Type
10327849 Computational Statistics & Data Analysis 2005 21 Pages PDF
Abstract
To asses the sensitivity of conclusions to model choices in the context of selection models for non-random dropout, several methods have been developed. None of them are without limitations. A new method called kernel weighted influence is proposed. While global and local influence approaches look upon the influence of cases, this new method looks at the influence of types of observations. The basic idea is to combine the existing influence approaches with a non-parametric weighting scheme. The kernel weighted global influence offers a possible solution to the problem of masking, while the kernel weighted local influence can be seen as a tool to better understand the source of influence.
Related Topics
Physical Sciences and Engineering Computer Science Computational Theory and Mathematics
Authors
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