Chi-squared goodness-of-fit tests for censored data
โ Scribed by Chimitova, Ekaterina V.; Nikulin, Mikhail Stepanovich
- Publisher
- ISTE
- Year
- 2017
- Tongue
- English
- Leaves
- 153
- Series
- Stochastic models in survival analysis and reliability set volume 3; Mathematics and statistics series (ISTE)
- Category
- Library
No coin nor oath required. For personal study only.
โฆ Table of Contents
Content: 1.1. ML Estimators for right censored data. Asymptotic properties of ML estimators 1.2. Chi-squared goodness-of fit tests for a right-censored sample 1.3. Regularity Hjort s conditions 2.1 Chi-squared tests for specified families: exponential, shape-scale, Weibull, logistic, lognormal, Gompertz families of distributions. 2.2. Chi-squared test for the family of distributions with hyperbolic hazard functions 2.3. Chi-squared goodness of fit-tests for the parametric accelerated failure time model 2.4. Chi-squared goodness of fit-tests for the parametric PH model
โฆ Subjects
Chi-square test;Goodness-of-fit tests
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