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Censored quantile regression with recursive partitioning-based weights
Andrew Wey, Lan Wang,
Kyle Rudser
Statistics (Twin Cities)
Biostatistics
Research output
:
Contribution to journal
›
Article
›
peer-review
16
Scopus citations
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Dive into the research topics of 'Censored quantile regression with recursive partitioning-based weights'. Together they form a unique fingerprint.
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Mathematics
Recursive Partitioning
84%
Censored Regression
74%
Quantile Regression
62%
Covariates
45%
Weighting
32%
Dependent Censoring
31%
Kernel Smoothing
14%
Consistent Estimation
13%
Cox Proportional Hazards Model
13%
Cox Model
13%
Hazard Function
12%
Survival Time
12%
Survival Data
12%
Regression Coefficient
10%
Clinical Trials
10%
Flexibility
10%
Higher Dimensions
9%
Monte Carlo Simulation
9%
Modeling
6%
Alternatives
6%
Demonstrate
6%
Model
3%
Business & Economics
Quantile Regression
100%
Partitioning
63%
Covariates
54%
Weighting
31%
Censoring
30%
Kernel Smoothing
16%
Monte Carlo Simulation
16%
Conditional Quantiles
15%
Cox Proportional Hazards Model
15%
Proportionality
14%
Regression Coefficient
12%
Clinical Trials
12%
Regression Method
11%
Modeling
6%
Alternatives
5%
Medicine & Life Sciences
Proportional Hazards Models
48%
Weights and Measures
34%
Biliary Liver Cirrhosis
32%
Datasets
21%
Clinical Trials
17%