r2mlm_long_manual to be user-facing.r2mlm_manual and r2mlm_comp_manual
documentation to reflect changes to teachsat dataset
implemented in version 0.3.0. (#53)bargraph = FALSE. For example,
r2mlm(model, bargraph = FALSE). (Issue #46)clustermeancentered = TRUE. This update changes the code to
test whether the absolute value of the means are roughly zero,
to address the case in which a cluster has a negative non-zero mean
(that would otherwise mistakenly be assigned to
clustermeancentered = TRUE because the negative number is
less than 0.0000001). (Issue #41)r2mlm_comp() to accept optional data argument. You can now
call r2mlm_comp(modelA, modelB) or
r2mlm_comp(modelA, modelB, data). If data is provided, the
function will use that data. If data is not provided and models are
hierarchically nested, the function will extract data automatically. If
data is not provided and models are not hierarchically nested, the
function will throw an error asking users to input data.r2mlm_manual() documentation (#33)r2mlm() and
r2mlm_comp() to note that models run in lme4
must be formatted with random effects at the end of the formula.
(#30)
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