library(plyr) library(dplyr) library(MPDiR) library(quickpsy) library(fitdistrplus) library(ggplot2) source("1-read-and-calculate_errors_time.R") # to read global values # set directory where script is sourceDir <- dirname (rstudioapi::getActiveDocumentContext()$path) defaultpath <- sourceDir #remove(list = ls()) print(defaultpath) setwd(defaultpath) filename <- "results/all_data.csv" dataFile <- read.csv(filename) # aggregating all possible percentages per movement speed aggregatedstable <- ddply(dataFile, c("participant_id","speed_duration"), summarise, mean_abs_error=mean(abs_error), mean_true_error=mean(true_error), mean_time_taken=mean(time_taken_type_ms) ) write.csv(aggregatedstable, file="results/aggregated.csv") ################################################################## # aggregating per movement speed but for each percentage seperately aggregatedstable2 <- ddply(dataFile, c("participant_id","speed_duration","correct_answer"), summarise, mean_abs_error=mean(abs_error), mean_true_error=mean(true_error), mean_time_taken=mean(time_taken_type_ms) ) write.csv(aggregatedstable2, file="results/aggregated_per_percentage.csv") for(c in correct_answer){ tmp <- aggregatedstable2 [which (aggregatedstable2$correct_answer == c),] tmp_file_name <- sprintf("results/aggregated_%d.csv", c) write.csv(tmp, file=tmp_file_name) }