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Applying Kaplan-Meier to Item Response Data
Daniel McNeish
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Article
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peer-review
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Scopus citations
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Dive into the research topics of 'Applying Kaplan-Meier to Item Response Data'. Together they form a unique fingerprint.
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Keyphrases
Logistic Regression
100%
Kaplan-Meier
100%
Item Response Data
100%
Time-to-event Data
50%
Well-defined
25%
Nonparametric
25%
Event Logistics
25%
Response Function
25%
Nonparametric Methods
25%
Differential Item Functioning
25%
Model Regression
25%
Item Difficulty
25%
Kaplan-Meier Estimator
25%
IRT Model
25%
Time-to-event Model
25%
Invariant Item Ordering
25%
Computational Formula
25%
Parametric Types
25%
Mathematics
Logistic Regression
100%
Kaplan-Meier
100%
Response Data
100%
Nonparametric Method
25%
Response Function
25%
Parametric
25%
Time Model
25%
Computational Formula
25%
Model Event
25%
Probability of an Event
25%