View source: R/robincar-linear.R
| robincar_linear | R Documentation | 
Estimate treatment-group-specific response means and (optionally) treatment group contrasts using a linear working model for continuous outcomes.
robincar_linear(
  df,
  treat_col,
  response_col,
  car_strata_cols = NULL,
  covariate_cols = NULL,
  car_scheme = "simple",
  adj_method = "ANOVA",
  contrast_h = NULL,
  contrast_dh = NULL
)
| df | A data.frame with the required columns | 
| treat_col | Name of column in df with treatment variable | 
| response_col | Name of the column in df with response variable | 
| car_strata_cols | Names of columns in df with car_strata variables | 
| covariate_cols | Names of columns in df with covariate variables. **If you want to include the strata variables as covariates also, add them here.** | 
| car_scheme | Name of the type of covariate-adaptive randomization scheme. One of: "simple", "pocock-simon", "biased-coin", "permuted-block". | 
| adj_method | Name of linear adjustment method to use. One of: "ANOVA", "ANCOVA", "ANHECOVA". | 
| contrast_h | An optional function to specify a desired contrast | 
| contrast_dh | An optional jacobian function for the contrast (otherwise use numerical derivative) | 
* Adjustment method "ANOVA" fits a linear model with formula 'Y ~ A' where 'A' is the treatment group indicator and 'Y' is the response. * "ANCOVA" fits a linear model with 'Y ~ A + X' where 'X' are the variables specified in the 'covariate_cols' argument. * "ANHECOVA" fits a linear model with 'Y ~ A*X', the main effects and treatment-by-covariate interactions.
See value of RobinCar::robincar_glm(), this function is a wrapper using a linear link function.
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