tip_coef_with_r2 {tipr}R Documentation

Tip a regression coefficient using the partial R2 for an unmeasured confounder-exposure relationship and unmeasured confounder- outcome relationship

Description

Choose one of the following, and the other will be estimated:

Usage

tip_coef_with_r2(
  effect_observed,
  se,
  df,
  confounder_exposure_r2 = NULL,
  confounder_outcome_r2 = NULL,
  verbose = getOption("tipr.verbose", TRUE),
  alpha = 0.05,
  tip_bound = FALSE,
  ...
)

Arguments

effect_observed

Numeric. Observed exposure - outcome effect from a regression model. This is the point estimate (beta coefficient)

se

Numeric. Standard error of the effect_observed in the previous parameter.

df

Numeric positive value. Residual degrees of freedom for the model used to estimate the observed exposure - outcome effect. This is the total number of observations minus the number of parameters estimated in your model. Often for models estimated with an intercept this is N - k - 1 where k is the number of predictors in the model.

confounder_exposure_r2

Numeric value between 0 and 1. The assumed partial R2 of the unobserved confounder with the exposure given the measured covariates.

confounder_outcome_r2

Numeric value between 0 and 1. The assumed partial R2 of the unobserved confounder with the outcome given the exposure and the measured covariates.

verbose

Logical. Indicates whether to print informative message. Default: TRUE

alpha

Significance level. Default = 0.05.

tip_bound

Do you want to tip at the bound? Default = FALSE, will tip at the point estimate

...

Optional arguments passed to the sensemakr::adjusted_estimate() function.

Value

A data frame.

Examples

tip_coef_with_r2(0.5, 0.1, 102, 0.5)

[Package tipr version 1.0.2 Index]