Let be the number of events experienced by a subject over the time interval
. Let
be the increment of the counting process N over
. The rate function is given by
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where is an unknown continuous function. If the
are time independent, the rate model is reduced to the mean model
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The partial likelihood for n independent triplets , of counting, at-risk, and covariate processes is the same as that of the multiplicative hazards model. However, a robust
sandwich estimate is used for the covariance matrix of the parameter estimator instead of the model-based estimate.
Let be the kth event time of the ith subject. Let
be the censoring time of the ith subject. The at-risk indicator and the failure indicator are, respectively,
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Denote
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Let be the maximum likelihood estimate of
, and let
be the observed information matrix. The robust sandwich covariance matrix estimate is given by
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where
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For a given realization of the covariates , the Nelson estimator is used to predict the mean function
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with standard error estimate given by
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where
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Since the cumulative mean function is always nonnegative, the log transform is used to compute confidence intervals. The % pointwise confidence limits for
are
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where is the upper
percentage point of the standard normal distribution.