Uzunoğulları, Ü.Wang, J.-L.2016-02-082016-02-0819920006-3444http://hdl.handle.net/11693/26109SUMMARY: Left truncation and right censoring arise frequently in practice for life data. This paper is concerned with the estimation of the hazard rate function for such data. Two types of nonparametric estimators based on kernel smoothing methods are considered. The first one is obtained by convolving a kernel with a cumulative hazard estimator. The second one is in the form of a ratio of two statistics. Local properties including consistency, asymptotic normality and mean squared error expressions are presented for both estimators. These properties facilitate locally adaptive bandwidth choice. The two types of estimators are then compared based on their theoretical and empirical performances. The effect of overlooking the truncation factor is demonstrated through the Channing House data.EnglishConsistencyKernel estimatorMean squared errorOptimal bandwidthWeak convergenceA comparison of hazard rate estimators for left truncated and right censored dataArticle10.1093/biomet/79.2.297