--- title: "Go/No Go - D-prime" output: rmarkdown::html_vignette vignette: > %\VignetteIndexEntry{gng_dprime} %\VignetteEngine{knitr::rmarkdown} %\VignetteEncoding{UTF-8} --- ```{r, include = FALSE} knitr::opts_chunk$set( collapse = TRUE, message = FALSE, warning = FALSE, comment = "#>" ) ``` ```{r setup, message = FALSE, warning = FALSE} library(splithalfr) ``` This vignette describes the d-prime; a scoring method introduced by [Miller (1996)](https://doi.org/https://doi.org/10.3758/BF03205476).
# Dataset Load the included Go/No Go dataset and inspect its documentation. ``` data("ds_gng", package = "splithalfr") ?ds_gng ``` ## Relevant variables The columns used in this example are: * condition, 0 = go, 2 = no go * response. Correct (1) or incorrect (0) * rt. Reaction time (seconds) * participant. Participant ID ## Counterbalancing The variables `condition` and `stim` were counterbalanced. Below we illustrate this for the first participant. ``` ds_1 <- subset(ds_gng, participant == 1) table(ds_1$condition, ds_1$stim) ```
# Scoring the Go/No Go ## Scoring function The scoring function receives the data from a single participant. For the proportion of hits and false alarms, it calculates their quantiles given a standard normal distribution. Extreme values are adjusted for via the log-linear approach ([Hautus, 1995](https://doi.org/10.3758/BF03203619)). ``` fn_score <- function(ds) { n_hit <- sum(ds$condition == 0 & ds$response == 1) n_miss <- sum(ds$condition == 0 & ds$response == 0) n_cr <- sum(ds$condition == 2 & ds$response == 1) n_fa <- sum(ds$condition == 2 & ds$response == 0) p_hit <- (n_hit + 0.5) / ((n_hit + 0.5) + n_miss + 1) p_fa <- (n_fa + 0.5) / ((n_fa + 0.5) + n_cr + 1) return (qnorm(p_hit) - qnorm(p_fa)) } ``` ## Scoring a single participant Let's calculate the d-prime score for the participant with UserID 1. ``` fn_score(subset(ds_gng, participant == 1)) ``` ## Scoring all participants To calculate the d-prime score for each participant, we will use R's native `by` function and convert the result to a data frame. ``` scores <- by( ds_gng, ds_gng$participant, fn_score ) data.frame( participant = names(scores), score = as.vector(scores) ) ```
# Estimating split-half reliability ## Calculating split scores To calculate split-half scores for each participant, use the function `by_split`. The first three arguments of this function are the same as for `by`. An additional set of arguments allow you to specify how to split the data and how often. In this vignette we will calculate scores of 1000 permutated splits. The trial properties `condition` and `stim` were counterbalanced in the Go/No Go design. We will stratify splits by these trial properties. See the vignette on splitting methods for more ways to split the data. The `by_split` function returns a data frame with the following columns: * `participant`, which identifies participants * `replication`, which counts replications * `score_1` and `score_2`, which are the scores calculated for each of the split datasets *Calculating the split scores may take a while. By default, `by_split` uses all available CPU cores, but no progress bar is displayed. Setting `ncores = 1` will display a progress bar, but processing will be slower.* ``` split_scores <- by_split( ds_gng, ds_gng$participant, fn_score, replications = 1000, stratification = paste(ds_gng$condition, ds_gng$stim) ) ``` ## Calculating reliability coefficients Next, the output of `by_split` can be analyzed in order to estimate reliability. By default, functions are provided that calculate Spearman-Brown adjusted Pearson correlations (`spearman_brown`), Flanagan-Rulon (`flanagan_rulon`), Angoff-Feldt (`angoff_feldt`), and Intraclass Correlation (`short_icc`) coefficients. Each of these coefficient functions can be used with `split_coef` to calculate the corresponding coefficients per split, which can then be plotted or averaged, for instance via a simple `mean`. ``` # Spearman-Brown adjusted Pearson correlations per replication coefs <- split_coefs(split_scores, spearman_brown) # Distribution of coefficients hist(coefs) # Mean of coefficients mean(coefs) ``` ## Calculating bootstrapped confidence intervals for population reliability coefficient Finally, we can estimate the Calculate bootstrapped confidence intervals for the value of the reliability coefficient in the population by bootstrapping participants. For this, we'll need to repeatedly sample participants from the population, calculate a collection of reliability coefficients between the split scores of that sample of participants, and average those coefficients together. Hence, the call to `split_ci` below, takes (1) the split scores produced by calling `by_split` (`split_scores`), (2) the reliability coefficient we used above (`spearman_brown`), and (3) the method for averaging coefficients we used above (`mean`). *The bootstrap can take even longer than the split, and doesn't show any progress bar, but it also uses all available CPU cores by default.* ``` # Conduct a bootstrap (of participants) bootstrap_result <- split_ci(split_scores, spearman_brown, mean) # Report confidence intervals library(boot) print(boot.ci(bootstrap_result, type="bca")) ```