View source: R/HPS-ES-functions.R
| effect_size_ABk | R Documentation | 
Calculates the HPS effect size estimator based on data from an (AB)^k design, as described in Hedges, Pustejovsky, & Shadish (2012). Note that the data must contain one row per measurement occasion per subject.
effect_size_ABk(
  outcome,
  treatment,
  id,
  phase,
  time,
  data = NULL,
  phi = NULL,
  rho = NULL
)
| outcome | vector of outcome data or name of variable within  | 
| treatment | vector of treatment indicators or name of variable within  | 
| id | factor vector indicating unique cases or name of variable within  | 
| phase | factor vector indicating unique phases (each containing one contiguous control 
condition and one contiguous treatment condition) or name of variable within  | 
| time | vector of measurement occasion times or name of variable within  | 
| data | (Optional) dataset to use for analysis. Must be data.frame. | 
| phi | (Optional) value of the auto-correlation nuisance parameter, to be used in calculating the small-sample adjusted effect size | 
| rho | (Optional) value of the intra-class correlation nuisance parameter, to be used in calculating the small-sample adjusted effect size | 
A list with the following components
| M_a | Matrix reporting the total number of time points with data for all ids, by phase and treatment condition | 
| M_dot | Total number of time points used to calculate the total variance (the sum of M_a) | 
| D_bar | numerator of effect size estimate | 
| S_sq | sample variance, pooled across time points and treatment groups | 
| delta_hat_unadj | unadjusted effect size estimate | 
| phi | corrected estimate of first-order auto-correlation | 
| sigma_sq_w | corrected estimate of within-case variance | 
| rho | estimated intra-class correlation | 
| theta | estimated scalar constant | 
| nu | estimated degrees of freedom | 
| delta_hat | corrected effect size estimate | 
| V_delta_hat | estimated variance of the effect size | 
If phi or rho is left unspecified (or both), estimates for the nuisance parameters will be calculated.
Hedges, L. V., Pustejovsky, J. E., & Shadish, W. R. (2012). A standardized mean difference effect size for single case designs. Research Synthesis Methods, 3, 224-239. \Sexpr[results=rd]{tools:::Rd_expr_doi("10.1002/jrsm.1052")}
data(Lambert)
effect_size_ABk(outcome = outcome, treatment = treatment, id = case, 
                phase = phase, time = time, data = Lambert)
   
data(Anglesea)
effect_size_ABk(outcome = outcome, treatment = condition, id = case, 
                phase = phase, time = session, data = Anglesea)
Add the following code to your website.
For more information on customizing the embed code, read Embedding Snippets.