Data-driven smooth tests of the proportional hazards assumption |
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Authors: | David Kraus |
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Affiliation: | (1) Institute of Information Theory and Automation, Pod Vodárenskou věží 4, CZ-182 08 Prague 8, Czech Republic;(2) Department of Statistics, Charles University in Prague, Prague, Czech Republic |
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Abstract: | A new test of the proportional hazards assumption in the Cox model is proposed. The idea is based on Neyman’s smooth tests. The Cox model with proportional hazards (i.e. time-constant covariate effects) is embedded in a model with a smoothly time-varying covariate effect that is expressed as a combination of some basis functions (e.g., Legendre polynomials, cosines). Then the smooth test is the score test for significance of these artificial covariates. Furthermore, we apply a modification of Schwarz’s selection rule to choosing the dimension of the smooth model (the number of the basis functions). The score test is then used in the selected model. In a simulation study, we compare the proposed tests with standard tests based on the score process. |
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Keywords: | Cox model Neyman’ s smooth test Proportional hazards assumption Schwarz’ s selection rule |
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