Smoothed empirical likelihood confidence intervals for the relative distribution with left‐truncated and right‐censored data |
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Authors: | Elisa M. Molanes‐lopez Ricardo Cao Ingrid VAN Keilegom |
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Affiliation: | 1. Department of Statistics, Universidad Carlos III de Madrid, Leganés, Madrid 28911, Spain;2. Department of Mathematics, Universidade da Coru?a, Campus de Elvi?a, A Coru?a 15071, Spain;3. Institute of Statistics, Université Catholique de Louvain, Voie du Roman Pays 20, Louvain‐la‐Neuve 1348, Belgium |
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Abstract: | The study of differences among groups is an interesting statistical topic in many applied fields. It is very common in this context to have data that are subject to mechanisms of loss of information, such as censoring and truncation. In the setting of a two‐sample problem with data subject to left truncation and right censoring, we develop an empirical likelihood method to do inference for the relative distribution. We obtain a nonparametric generalization of Wilks' theorem and construct nonparametric pointwise confidence intervals for the relative distribution. Finally, we analyse the coverage probability and length of these confidence intervals through a simulation study and illustrate their use with a real data set on gastric cancer. The Canadian Journal of Statistics 38: 453–473; 2010 © 2010 Statistical Society of Canada |
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Keywords: | Censoring empirical likelihood kernel smoothing ROC curve survival analysis truncation MSC 2000 Primary 62G05 secondaries 62G20 62N02 62G15 62E20. |
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