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function wish list following the 1.0 release #2

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Alcampopiano opened this issue Mar 5, 2020 · 0 comments
Open
31 of 99 tasks

function wish list following the 1.0 release #2

Alcampopiano opened this issue Mar 5, 2020 · 0 comments

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@Alcampopiano
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Alcampopiano commented Mar 5, 2020

one group

  • onesampb 1-alpha percentile boot CI for any estimator
  • trimpb percentile boot CI for trimmed mean
  • trimcibt bootstrap-t CI for trimmed mean
  • mestci CI for M-measure of location based on huber's psi using percentile boot method (might be redundant with onesampb)
  • momci CI for modified one-step M-estimator (might be redundant with onesampb)

two groups

  • yuen yuen-welch method to compare trimmed means (no bootstrap)
  • yuenbt bootstrapped-t CI for ut1 - ut2
  • yhbt seems to be similar to yuenbt but modified for when trimming is <20 (maybe not needed)
  • pb2gen percentile bootstrap CI for difference between any estimators
  • m2ci convenience function func for comparing M-estimators based on huber's psi
  • comvar2 bootstrapped comparison of variances
  • permg permutation bootstrap test, any measure of location of scale
  • t1way non-bootstrap method (but robust) for J indep groups (could be used for J>2 too)
  • t1wayv2 same as t1way but explanatory es is returned for all pairs of groups

two dependent groups

  • ydbt bootstrap-t CI for ut1 - ut2
  • loc2dif difference between estimators using all combinations of difference scores
  • l2drmci significance test for loc2dif using percentile bootstrap
  • bootdpci percentile bootstrap method any estimator; can set options for using difference scores or measures of location based on the marginal distributions
  • pcorb comparing variance of dep groups by extending some correlation-related method (i.e., pcorb(col1 - col1, col1 - col2) )
  • pcorhc4 similar to pcorb; need more information on usage
  • dfried some distance based test for J dependant groups (also used for more than 2 dep groups)

one-way for independent groups

  • t1way non-bootstrap method (but robust) for J indep groups (could be in two indep group section too)
  • t1wayv2 same as t1way but explanatory es is returned as well
  • box1way another J=> 2 method based on trimmed means
  • t1waybt test hyp of equal trimmed means using bootstrap t method (related to btrim which returns explanatory effect size and allows one to structure data a bit differently; btrim may not be needed)
  • b1way percentile boot method for comparing J groups; seeing how deeply nest 0 is (1st method)
  • other methods, especially ones using percentile bootstrap, under "methods based on MCP and linear contrasts" may be applicable here too

one-way methods based on multiple comparisons and linear contrasts

  • lincon test linear contrasts with t means
  • linconb test linear contrasts using bootstrap-t method
  • tmcppb rom/hoch/ben-type methods using percentile bootstrap and trimmed means
  • pbdepth percentile boot method for comparing J groups; seeing how deeply nest 0 is (2nd method)

two-way designs based on trimmed means

  • t2way (no bootstrapping)

three-way designs based on trimmed means

  • t3way (no bootstrapping)

two- and three-way multiple comparisons using contrasts (I believe for independent groups)

  • mcp2atm all pairwise comparisons for each factor and interactions
  • mcp3atm all pairwise comparisons for each factor and interactions
  • bbtrim use bootstrap-t method for comparisons using contrasts
  • bbbtrim use bootstrap-t method for comparisons using contrasts
  • bbmcppb two-way percentile boot and trimmed mean tests
  • bbbmcppb three-way percentile boot and trimmed mean tests

one-way dependant groups

  • dfried some distance based test for J dependant groups
  • rmanova trimmed means, no bootstrapping, for J groups
  • rmmcp mcp for dep groups with trimmed means and Rom's method for FWE (might be able to extend to higher-level designs; 2 & 3-way)
  • rmanovab bootstrap-t method for comparing measure associated with marginal distributions
  • pairepb bootstrap-t method for all multi-comparisons
  • bptd CI for all linear contrasts (very similar to pairdbp; but you can specify certain contrasts)
  • bd1way percentile boot for J dep groups
  • ddep another percentile boot method for J dep groups
  • rmdzero percentile boot method for J group based on diff scores
  • rmmcppb multiple comparisons for J dep groups using percentile boot method
  • lindepbt boot-t method for mcp among J dep groups

within-within (two-way) dependent groups

  • wwtrim non-bootstrap for trimmed means
  • wwtrimbt same as wwtrim but bootstrap-t used
  • wwmcp multi comps for main effects and interactions with linear contrasts (no boot)
  • wwmcppb like wwmcp but percentile boot is used
  • wwmcpbt like wwmcpppb but uses bootstrap-t method instead

mixed designs

  • bwtrim no bootstrapping
  • tsplitbt bootstrap-t for mixed design
  • bwtrimbt same as tsplitbt but reports p values
  • sppba test for factorA using percentile boot
  • sppbb test for factorB using percentile boot
  • sppbi test for interaction using percentile boot
  • bwmcp all main effects and interactions for bw design bootstrap-t tests
  • bwamcp same for factorA
  • bwbmcp same for factorB
  • bwimcp for interaction (non-bootstrap)
  • spmcpa FA; same but with percentile boostrap
  • spmcpb FB; same but with percentile boostrap
  • spmcpi interaction; same but with percentile boostrap
  • bwmcppb only for trimmed means? ; all main effects and interactions with percentile bootstrap method

three-way designs with one or more dependent groups

  • bbwtrim no boot ominbus for main effect and interactions
  • bwwtrim same as above two are within
  • wwwtrim same as above all within
  • bbwtrimbt no boot ominbus for main effect and interactions (bootstrap-t)
  • bwwtrimbt same as above two are within (bootstrap-t)
  • wwwtrimbt same as above all within (bootstrap-t)

three-way methods using multiple comparisons

  • rm3mcp no bootstrap all contrasts
  • bbwmcp bootstrap-t all comparisons with trimmed means
  • bwwmcp bootstrap-t for the corresponding design
  • bbwmcppb using percentile boot
  • bwwmcppb using percentile boot
  • wwwmcppb using percentile boot

effect sizes

  • akp.effect delta (using trimmed mean and winsorized variance)
  • yuenv2 compare two trimmed means and return explanatory effect size (xi2)
  • ees.ci CI for two groups using percentile bootstrap method computes |xi|
  • esmcp explanatory effect size returned for all pairs of J groups (can be used for dep groups)
  • ESmainMCP a two-way method for getting explanatory effect size for FA and then FB
  • esImcp two-way explanatory effect for all interactions

correlations and test of independence

  • pbcor percentage bend correlation
  • pball for a set of variables
  • wincor winsorized correlation
  • winall for a set of variables
  • corb test for zero correlation using bootstrapping
  • twopcor get CI of rho1 - rho2 (CI for difference of correlations) using percentile boot
  • twocor test that two cors are equal (returns a p value and CI)

robust regression

  • lsfitci CIs for reg parameters using percentile bootstrap method
  • hc4wtest tests hypo that all slope parameters are zero using wild bootstrap method

utilities

  • con1way create linear contrasts
  • con2way
  • con3way
@Alcampopiano Alcampopiano changed the title wish list following the 1.0 release function wish list following the 1.0 release Apr 27, 2020
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