## ----setup, include = FALSE--------------------------------------------------- knitr::opts_chunk$set(collapse = TRUE, comment = "#>") library(surveyframe) ## ----load--------------------------------------------------------------------- demo <- sframe_demo_data() instr <- demo$instrument responses <- demo$responses dim(responses) ## ----import------------------------------------------------------------------- responses <- read_responses( demo$responses_path, instr, respondent_id = "respondent_id", submitted_at = "submitted_at", meta_cols = "started_at", strict = TRUE ) dim(responses) ## ----screening---------------------------------------------------------------- missing_data_report(responses, instr) quality_report( responses, instr, respondent_id = "respondent_id", submitted_at = "submitted_at", started_at = "started_at" ) ## ----score-------------------------------------------------------------------- scored <- score_scales(responses, instr, keep_items = TRUE, keep_meta = TRUE) scale_ids <- vapply(instr$scales, function(x) x$id, character(1)) head(scored[, intersect(scale_ids, names(scored)), drop = FALSE]) ## ----assumptions-------------------------------------------------------------- assumption_report( scored, predictors = c("digital_marketing", "service_quality", "sustainability"), outcome = "satisfaction" ) ## ----plan--------------------------------------------------------------------- instr$analysis_plan <- list( list(id = "RQ1", research_question = "Is digital marketing perception associated with satisfaction?", family = "association", method = "correlation_pearson", roles = list(x = "digital_marketing", y = "satisfaction"), options = list(alpha = 0.05)), list(id = "RQ2", research_question = "Do the three perception scales predict satisfaction?", family = "regression", method = "regression_linear", roles = list(predictors = c("digital_marketing", "service_quality", "sustainability"), dependent = "satisfaction"), options = list(alpha = 0.05)), list(id = "RQ3", research_question = "Do first-time and repeat visitors differ in behavioural intention?", family = "group_comparison", method = "mann_whitney", roles = list(group = "visit_type", outcome = "behavioural_intention"), options = list(alpha = 0.05)) ) ## ----run---------------------------------------------------------------------- results <- run_analysis_plan(responses, instr) results ## ----single-result------------------------------------------------------------ rq1 <- results[[1]] rq1$apa rq1$effect_label rq1$prompt unlist(rq1$citations) ## ----render, eval = FALSE----------------------------------------------------- # render_results(results, instr, output_file = "results.html", citation_format = "apa") ## ----gui, eval = FALSE-------------------------------------------------------- # launch_studio( # instrument = instr, # responses = responses, # screen = "analysis", # launch.browser = FALSE # )