I blog about statistics and research design with an audience consisting of researchers in bilingualism, multilingualism, and applied linguistics in mind.
Latest blog posts
A quick introduction to isotonic regression
graphs
non-linearities
R
Does multilingualism really protect against accelerated ageing? Some critical comments
correlational studies
R
The population model and the randomisation model of statistical inference
assumptions
experiments
design features
nonparametric tests
R
significance
Clarifying research questions by sketching possible outcomes
research questions
research design
Exact significance tests for 2 × 2 tables
R
significance
Adjusting to Julia: Piecewise regression
Julia
piecewise regression
non-linearities
In research, don’t do things you don’t see the point of
simplicity
silly tests
research questions
The consequences of controlling for a post-treatment variable
R
multiple regression
Capitalising on covariates in cluster-randomised experiments
R
power
significance
design features
cluster-randomised experiments
preprint
Tutorial: Visualising statistical uncertainty using model-based graphs
R
graphs
logistic regression
mixed-effects models
multiple regression
Bayesian statistics
brms
Interpreting regression models: a reading list
measurement error
logistic regression
correlational studies
mixed-effects models
multiple regression
predictive modelling
research questions
contrast coding
reliability
Tutorial: Obtaining directly interpretable regression coefficients by recoding categorical predictors
R
contrast coding
mixed-effects models
multiple regression
tutorial
research questions
Nonparametric tests aren’t a silver bullet when parametric assumptions are violated
R
power
significance
simplicity
assumptions
nonparametric tests
Baby steps in Bayes: Incorporating reliability estimates in regression models
R
Stan
Bayesian statistics
measurement error
correlational studies
reliability
Baby steps in Bayes: Accounting for measurement error on a control variable
R
Stan
Bayesian statistics
measurement error
correlational studies
Five suggestions for simplifying research reports
simplicity
silly tests
graphs
cluster-randomised experiments
open science
Drawing scatterplot matrices
R
graphs
correlational studies
non-linearities
multiple regression
Adjusting for a covariate in cluster-randomised experiments
R
power
significance
simplicity
mixed-effects models
cluster-randomised experiments
Collinearity isn’t a disease that needs curing
R
multiple regression
assumptions
collinearity
Interactions in logistic regression models
R
logistic regression
tutorial
bootstrapping
Bayesian statistics
brms
Before worrying about model assumptions, think about model relevance
simplicity
graphs
non-linearities
assumptions
Guarantees in the long run vs. interpreting the data at hand: Two analyses of clustered data
R
mixed-effects models
cluster-randomised experiments
Baby steps in Bayes: Recoding predictors and homing in on specific comparisons
Bayesian statistics
brms
R
graphs
mixed-effects models
contrast coding
Looking for comments on a paper on model assumptions
R
graphs
tutorial
preprint
assumptions
cannonball
Baby steps in Bayes: Piecewise regression with two breakpoints
R
piecewise regression
non-linearities
Bayesian statistics
Stan
A data entry form with failsafes
data entry
Baby steps in Bayes: Piecewise regression
R
Stan
piecewise regression
non-linearities
Bayesian statistics
A brief comment on research questions
research questions
Checking model assumptions without getting paranoid
assumptions
R
tutorial
graphs
Consider generalisability
design features
mixed-effects models
Suggestions for more informative replication studies
design features
mixed-effects models
Increasing power and precision using covariates
power
design features
generalised additive models
non-linearities
Confidence interval-based optional stopping
R
design features
significance
Abandoning standardised effect sizes and opening up other roads to power
power
effect sizes
measurement error
design features
R
Fitting interactions between continuous variables
R
graphs
generalised additive models
non-linearities
Tutorial: Adding confidence bands to effect displays
R
graphs
logistic regression
mixed-effects models
multiple regression
tutorial
Tutorial: Plotting regression models
R
graphs
logistic regression
mixed-effects models
multiple regression
tutorial
Confidence intervals for standardised mean differences
R
effect sizes
Which predictor is most important? Predictive utility vs. construct importance
effect sizes
correlational studies
measurement error
A few examples of bootstrapping
bootstrapping
R
What data patterns can lie behind a correlation coefficient?
effect sizes
graphs
correlational studies
non-linearities
R
The Centre for Open Science’s Preregistration Challenge: Why it’s relevant and some recommended background reading
significance
multiple comparisons
organisation
open science
R tip: Ordering factor levels more easily
R
graphics
Classifying second-language learners as native- or non-nativelike: Don’t neglect classification error rates
R
machine learning
random forests
Tutorial: Drawing a line chart
R
graphs
tutorial
Tutorial: Drawing a scatterplot
R
graphs
tutorial
Surviving the ANOVA onslaught
simplicity
Why reported R² values are often too high
effect sizes
multiple comparisons
multiple regression
R
On correcting for multiple comparisons: Five scenarios
significance
power
multiple comparisons
Silly significance tests: The main effects no one is interested in
simplicity
silly tests
Experiments with intact groups: spurious significance with improperly weighted t-tests
significance
design features
cluster-randomised experiments
R
Some advantages of sharing your data and code
open science
Drawing a scatterplot with a non-linear trend line
graphs
non-linearities
R
The problem with cutting up continuous variables and what to do when things aren’t linear
power
generalised additive models
non-linearities
R
Analysing experiments with intact groups: the problem and an easy solution
significance
power
design features
cluster-randomised experiments
R
Covariate adjustment in logistic mixed models: Is it worth the effort?
power
effect sizes
logistic regression
mixed-effects models
R
Controlling for confounding variables in correlational research: Four caveats
correlational studies
measurement error
Covariate adjustment in logistic regression — and some counterintuitive findings
power
effect sizes
logistic regression
R
Silly significance tests: Tests unrelated to the genuine research questions
silly tests
simplicity
power
multiple comparisons
Power simulations for comparing independent correlations
significance
power
R
More on why I don’t like standardised effect sizes
effect sizes
power
measurement error
A more selective approach to reporting statistics
effect sizes
graphs
simplicity
Explaining key concepts using permutation tests
significance
design features
R
Thinking about graphs
graphs
R
Why I don’t like standardised effect sizes
effect sizes
measurement error
Overaccuracy and false precision
simplicity
Some alternatives to bar plots
graphs
R
Assessing differences of significance
significance
R
Silly significance tests: Tautological tests
silly tests
simplicity
Silly significance tests: Balance tests
silly tests
simplicity
R
A purely graphical explanation of p-values
significance
R
Calibrating p-values in ‘flexible’ piecewise regression models
significance
piecewise regression
multiple comparisons
R
Analysing pretest/posttest data
significance
power
simplicity
R
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