Glossary¶
Plain-language definitions of terms used in this guide and in StatPrism’s output.
- p-value
The probability of seeing a result at least as extreme as the one observed if there were really no effect. Small values (commonly < .05) are taken as evidence against “no effect”.
- Confidence interval (CI)
A range that, under repeated sampling, would contain the true value a stated percentage of the time (StatPrism reports 95% CIs). Wider intervals mean more uncertainty.
- Effect size
How big an effect is, independent of sample size — e.g. Cohen’s d (mean differences), r (correlation), η²/η²p (ANOVA), Cramér’s V (contingency). Significance says whether an effect exists; effect size says whether it matters.
- Degrees of freedom (df)
A count tied to sample and model size that calibrates a test’s reference distribution.
- Numeric / Nominal / Ordinal
Column types. Numeric = quantities; Nominal = unordered categories; Ordinal = ordered categories. See Importing data.
- Missing data
Cells with no answer. In numeric columns these stay genuinely missing; in text columns a blank is read as the literal
nan. Handle with Impute Missing or Filter.- Parametric vs non-parametric
Parametric tests (t-test, ANOVA, Pearson) assume things like normality; non-parametric tests (Mann–Whitney, Kruskal–Wallis, Wilcoxon, Friedman, Spearman) make fewer assumptions and use ranks.
- Normality
Whether a variable approximately follows a bell-shaped (normal) distribution — an assumption of several parametric tests. Checked with Shapiro–Wilk, Kolmogorov–Smirnov, or Anderson–Darling.
- Homogeneity of variance
Whether groups have similar spread — an assumption of the standard t-test/ANOVA. Welch’s versions relax it.
- Correlation
The strength and direction of association between two variables, from −1 to +1. Pearson measures linear association; Spearman/Kendall measure rank (monotonic) association.
- Partial correlation
The association between two variables after removing the influence of one or more control variables.
- Reliability (Cronbach’s α / McDonald’s ω)
How consistently a set of items measures the same thing. Higher is better; very low values suggest the items don’t form a coherent scale. See Reliability.
- Factor / loading
In factor analysis, a factor is an underlying dimension; a loading is how strongly an item reflects a factor. See Exploratory factor analysis and Confirmatory factor analysis.
- Statistical power
The chance a study will detect an effect that is really there. Power analysis relates power, sample size, effect size, and significance level. See Power analysis.
- Standardised coefficient (β)
A regression coefficient expressed in standard-deviation units, so predictors on different scales can be compared.
- One-hot / indicator column
A 0/1 column marking whether a category applies. Created by One-hot encoding (from a single-select column) or Split Multi-Select (from a checkbox question).
- APA style
The American Psychological Association’s formatting conventions for tables and statistics, widely used in the social sciences. StatPrism formats output to match.