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Posts tagged truncated

Bayesian regression with truncated or censored data

  • 27 September 2022
  • Category: beginner
  • Tags: generalized linear model regression truncated censored

The notebook provides an example of how to conduct linear regression when your outcome variable is either censored or truncated.

Read more ...


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