In anticipation of a larger overhaul of the projpred user interface, this release comes with several new functions for accessing and investigating solution paths (which are now termed predictor rankings by these new functions, a term that is hopefully easier to grasp for new users):
ranking() which returns the predictor ranking from the full-data search and possibly also the predictor rankings from fold-wise searches in case of cross-validation (CV). (More precisely, ranking() is a generic. The only method is ranking.vsel(), applicable to objects returned by varsel() or cv_varsel(). The output is of class ranking.)cv_proportions() which computes ranking proportions (across CV folds, see ?cv_proportions for details) from fold-wise predictor rankings. (More precisely, cv_proportions() is a generic. The main method is cv_proportions.ranking(), but as a shortcut, cv_proportions.vsel() has also been added. The output is of class cv_proportions.)plot() method called plot.cv_proportions() for plotting ranking proportions from fold-wise predictor rankings. (As a shortcut, plot.ranking() has also been added.)Because of these new functions, a message has been added to print.vselsummary(), mentioning how to access and investigate the fold-wise predictor rankings (if they exist). Furthermore, due to these changes, element pct_solution_terms_cv of vsel objects has been replaced with element solution_terms_cv which contains the fold-wise predictor rankings instead of the corresponding ranking proportions. However, elements of vsel objects are not meant to be accessed directly, so this replacement should not be a breaking change for most users. Finally, method solution_terms.vsel() (which---until now---was the only possibility to extract the full-data predictor ranking) has now been deprecated and will be removed in a future release. Please use the new function ranking() instead (more precisely, ranking()'s output element fulldata contains the full-data predictor ranking that is also extracted by solution_terms.vsel(); ranking()'s output element foldwise contains the fold-wise predictor rankings---if available---which were previously not accessible via a built-in function). (GitHub: #289, #406, #411)
Added function predictor_terms() which retrieves the predictor terms used in a project() run. Correspondingly, method solution_terms.projection() has now been deprecated and will be removed in a future release. Please use predictor_terms() instead. (GitHub: #411)
seed (and .seed) arguments now have a default of NA instead of sample.int(.Machine$integer.max, 1) and the pseudorandom number generator (PRNG) state is reset only if the user-supplied seed is not NA. This allows setting a seed once at the beginning of any projpred-related code and then leaving all seed (and .seed) arguments at their default. Previously, such practice could lead to results which were "less random" than they should have been because the former default of sample.int(.Machine$integer.max, 1) caused projpred functions with a seed (or .seed) argument to reset the PRNG state upon exit, meaning that two repeated calls to cv_varsel() (for example) with no PRNG-using code between them would use the same seed internally. (GitHub: #412)
Added the main diagonal of the matrix returned by cv_proportions() to a new column called cv_proportions_diag of the summary table computed by summary.vsel(). The purpose of this new column is to give a basic sense for the (CV) variability in the ranking of the predictors. Argument cumulate of cv_proportions() has been added to summary.vsel() as well (to allow the ranking proportions in the newly added column to be cumulated ranking proportions, if desired). (GitHub: #289, #413)
Added the full-data predictor ranking and the main diagonal of the matrix returned by cv_proportions() to the plot created by plot.vsel(). These new elements can be omitted by setting plot.vsel()'s new argument ranking_nterms_max to NA (setting it to some specific submodel size causes the full-data predictor ranking and the corresponding ranking proportions to be omitted after that size). Argument cumulate of cv_proportions() has been added to plot.vsel() as well (to allow the ranking proportions to be cumulated ranking proportions, if desired). Other new arguments are ranking_abbreviate (together with ranking_abbreviate_args), ranking_repel (together with ranking_repel_args), and text_angle (see the plot.vsel() documentation for details). (GitHub: #289, #414, #416, #417)
ranking(), cv_proportions(), and plot.cv_proportions() (see "Major changes" above) are now illustrated in the main vignette. (GitHub: #407, #411)I() terms. (GitHub: #404, #408)poly() or polym() terms. Note that just like step() and MASS::stepAIC(), projpred's search algorithms do not split up a poly() or polym() term into its lower-degree polynomial terms (which would be helpful, for example, if the linear part of a poly() term with degrees = 2 was relevant but the quadratic part not). Such a split-up of a poly() or polym() term needs to be performed manually (if desired). (GitHub: #183, #409)seed (or .seed) argument to use the same seed internally when users set a seed once at the beginning (via set.seed()) and then had two or more calls to such projpred functions with their seed (or .seed) argument being at its default and no PRNG-using code between those calls. (GitHub: #412)Setting the new global option projpred.extra_verbose to TRUE will print out which submodel projpred is currently projecting onto. Furthermore, if method = "forward" and verbose = TRUE in varsel() or cv_varsel(), this new option will also make projpred print out which submodel has been selected at those steps of the forward search for which a percentage is printed (the percentage refers to the maximum submodel size that the search is run up to). In general, however, we cannot recommend setting this new global option to TRUE for cv_varsel() with validate_search = TRUE (simply due to the amount of information that will be printed, but also due to the progress bar which will not work anymore as intended). (GitHub: #363; thanks to @jtimonen)
Enhanced verbose output. In particular, varsel() is now more verbose, similarly to how cv_varsel() has already been for a long time. The verbose output for cv_varsel() has also been updated, with the aim to give users a better understanding of the methodology behind projpred. (GitHub: #382)
Slightly improved the calculation of predictive variances to make them less prone to numerical inaccuracies. (GitHub: #199)
Improved computational efficiency by avoiding an unnecessary final full-data performance evaluation (including costly re-projections if refit_prj = TRUE, which is the default for non-datafit reference models) in cv_varsel() with validate_search = TRUE. Due to this change, results from cv_varsel() (with validate_search = TRUE) may slightly change due to a different pseudorandom number generator (PRNG) state when clustering posterior draws. The different PRNG state was necessary to make the PRNG state for the full-data search in the validate_search = TRUE case consistent to the PRNG state for the full-data search in the validate_search = FALSE case. (GitHub: #385)
Reduced dependencies. (GitHub: #388)
Argument digits of print.vselsummary() which used to be passed to an internal round() call was removed. Instead, digits can now be passed to print.data.frame() via ..., thereby determining the minimum number of significant digits to be printed. (GitHub: #389)
Although bad practice (in general), a reference model lacking an intercept can now be used within projpred. However, it will always be projected onto submodels which include an intercept. The reason is that even if the true intercept in the reference model is zero, this does not need to hold for the submodels. An informational message mentioning the projection onto intercept-including submodels is thrown when projpred encounters a reference model lacking an intercept. (GitHub: #96, #391)
In case of non-predictor arguments of s() or t2(), projpred now throws an error. (This had already been documented before, but a suitable error message was missing.) (GitHub: #393, based on #156 and #269)
In case of the brms::categorical() family (supported since version 2.4.0), projpred now strips underscores from response category names in as.matrix.projection() output, as done by brms. (GitHub: #394)
L1 search now throws a warning if an interaction term is selected before all involved main effects have been selected. (GitHub: #395)
Documented that in multilevel (group-level) terms, function calls on the right-hand side of the | character (e.g., (1 | gr(group_variable)), which is possible in brms) are currently not allowed in projpred. A corresponding error message has also been added. (GitHub: #319)
Due to internal refactoring:
project()'s output elements submodl and weights have been renamed to outdmin and wdraws_prj, respectively.varsel()'s and cv_varsel()'s output element d_test has been replaced with new output elements type_test and y_wobs_test.Apart from project()'s output element wdraws_prj, these elements are not meant to be accessed manually, so changes are mentioned here only for the sake of completeness. Output element wdraws_prj of project() is only needed if project() was used for a clustered projection, which is not the default (and discouraged in most applied cases, at least with a small number of clusters). Thus, these renamings are breaking changes only in very rare cases.
print.vselsummary() now also prints K in case of K-fold CV.
The print.vselsummary() output has been slightly improved, e.g., adding a remark what "search included" or "search not included" means.
print.vselsummary() now also prints whether deltas = TRUE or deltas = FALSE was used.
Output element pct_solution_terms_cv has now also been added to vsel objects returned by varsel(), but in that case, it is simply NULL. This (pct_solution_terms_cv being NULL) is now also the case if validate_search = FALSE was used in cv_varsel().
Minor enhancements in the documentation.
Enhancements in the vignettes. In particular, section "Troubleshooting" of the main vignette has been revised.
If proj_predict() is used with observation weights that are not all equal to 1, a warning is now thrown. (GitHub: starts to address #402)
predict.refmodel() to require newdata to contain the response variable in case of a brms reference model. This is similar to paul-buerkner/brms#1457, but concerns predict.refmodel() (paul-buerkner/brms#1457 referred to predictions from the submodels). In order to make this predict.refmodel() fix work, brms version 2.19.0 or later is needed. (GitHub: #381)p_type of project() to be incorrect in case of refit_prj = FALSE, !is.null(nclusters), and an object of class vsel that was created with a non-clustered (thinned) projection during the search phase. The fix comes with a slightly different behavior of proj_predict() for datafits: It will not draw nresample_clusters times from the posterior-projection predictive distribution (which is based on the same single projected draw), but only once. (GitHub: #211, #401)refit_prj = FALSE after an L1 search), a new dataset containing a character predictor variable with only a single unique value (or a new dataset containing a factor predictor variable with a single level) used to cause an error. The case of a character (not factor) predictor variable with only a single unique value occurred, e.g., during the performance evaluation in a LOO CV if a character predictor got selected into a fold's solution path. The character issue existed from version 2.1.0 on (in earlier versions, however, there were other issues which caused character predictors to throw an error). Now, all issues with respect to character predictor variables should be resolved. The issue with single-level factor predictor variables is resolved now as well. (GitHub: #403)refit_prj = FALSE after an L1 search), a new dataset containing a factor predictor with re-ordered levels (compared to this same factor in the original dataset) used to lead to incorrect predictions. This bug existed at least from version 2.0.2 on (possibly even in earlier versions), but has been resolved now. (GitHub: #403)factor. This issue existed at least from version 2.0.2 on (possibly even in earlier versions), but should have only affected rstanarm reference model fits (brms reference model fits were only affected in case of a brms::brm() call with drop_unused_levels = FALSE, which is not the default). (GitHub: #403)refit_prj = FALSE (which is the default only for datafits, not for the reference model objects of class refmodel that are usually employed in practice) to lead to incorrect predictions from the L1-searched submodels (which are L1-penalized GLMs) if the solution path had a main effect ranked after an interaction term. This bug existed at least from version 2.0.2 on (possibly even in earlier versions). The mentioned submodel predictions did not only affect the performance evaluation, but also the projected dispersion parameter and the returned Kullback-Leibler divergence (and the corresponding cross-entropy). (GitHub: #403)resp_oscale = TRUE default in summary.vsel()) is that varsel() and cv_varsel() no longer call suggest_size() internally at the end. Thus, print()-ing an object of class vsel no longer includes the suggested projection size in the output (the stat for this suggested size was fixed to "elpd" anyway, a fact that many users were probably not aware of). (GitHub: #372)projpred.mlvl_pred_new and projpred.mlvl_proj_ref_new. These are explained in detail in the general package documentation (available online or by typing ?`projpred-package`). (GitHub: #379)family (see init_refmodel()) has a non-identity link function: After clustering the reference model's posterior draws, we need to aggregate (within a given cluster) the reference model's fitted values which already take the offsets into account instead of taking the offsets into account after aggregating the fitted values which do not take the offsets into account. This fix should affect results only in a very slight manner. Due to projpred's internal adjustment for numerical stability when averaging a quantity across the draws within a given cluster, this also changes the projected residual standard deviations in Gaussian models in the order of 1e-10. (GitHub: #374)plot.vsel() and summary.vsel(), the default of alpha = 0.32 is replaced by alpha = 2 * pnorm(-1) (= 1 - diff(pnorm(c(-1, 1))), which is only approximately 0.32) so that now, a normal-approximation confidence interval with default alpha stretches by exactly one standard error on either side of the point estimate. Typically, this changes results only slightly. In some cases, however, the new default may lead to a different suggested size, explaining why this is regarded as a major change. (GitHub: #371)ggplot2::aes_string() is not used anymore, thereby avoiding an occasional soft-deprecation warning thrown by ggplot2 3.4.0. (GitHub: #367)ce of project(). The reason for this change is that the former KL divergence assumed the reference model's family to be the same as the submodel's family, which does not need to be the case for custom reference models. This should not be a user-facing change as users are discouraged to make use of specific output elements (like the former element kl of objects of class projection or vsel) directly. (GitHub: #369)family of init_refmodel() and get_refmodel.default()).get_refmodel() and init_refmodel() (thereby also distinguishing more clearly between "typical" and "custom" reference model objects) in (i) the description and several arguments of get_refmodel() and init_refmodel(), (ii) sections "Reference model" and "Supported types of models" of the vignette. (GitHub: #357, #359, #364, #365, #366)validate_search = FALSE case of cv_varsel().search_terms (at least in some instances), also affecting the output of solution_terms(<vsel_object>) in those cases. (GitHub: #360; thanks to @sor16)validate_search = FALSE case of cv_varsel(). This bug was introduced in v2.2.0 (and existed up to---including---v2.2.1).cv_varsel() with cv_method = "LOO" (more precisely, only the LOO posterior predictive expected values <vsel_object>$summaries$ref$mu were affected, not the (pointwise) LOO log posterior predictive density values <vsel_object>$summaries$ref$lppd). (GitHub: #186 (partly), #356)cv_varsel() with custom search_terms (in some instances). (GitHub: #345, #360; thanks to @sor16)stats of summary.vsel()), the bootstrapping results are now also used for inferring the lower and upper confidence interval bounds. (GitHub: #318, #347; thanks to @awd97 and @VisionResearchBlog)datafits, offsets are not supported anymore. (GitHub: #186 (partly), #351)datafits (and other---unlikely---cases where nclusters == S and S <= 20, with S denoting the number of draws in the reference model).datafits). (GitHub: #350)validate_search = FALSE case of cv_varsel() (with cv_method = "LOO"), the PSIS weights are now calculated based on the reference model (they used to be calculated based on the submodels which is incorrect). (GitHub: #325)"mse", "rmse", "acc" (= "pctcorr"), and "auc" (i.e., all performance statistics except for "elpd" and "mlpd").plot.vsel() and suggest_size() gain a new argument thres_elpd. By default, this argument doesn't have any impact, but a non-NA value can be used for a customized model size selection rule (see ?suggest_size for details). (GitHub: #335)suggest_size() heuristic).seed and .seed are now allowed to be NA for not calling set.seed() internally at all.d_test of varsel() is not considered as an internal feature anymore. This was possible after fixing a bug for d_test (see below). (GitHub: #341)<vsel_object>$summaries and <vsel_object>$d_test now corresponds to the order of the observations in the original dataset if <vsel_object> was created by a call to cv_varsel([...], cv_method = "kfold") (formerly, in that case, the observations in those sub-elements were ordered by fold). Thereby, the order of the observations in those sub-elements now always corresponds to the order of the observations in the original dataset, except if <vsel_object> was created by a call to varsel([...], d_test = <non-NULL_d_test_object>), in which case the order of the observations in those sub-elements corresponds to the order of the observations in <non-NULL_d_test_object>. (GitHub: #341)search_terms caused the R session to crash).validate_search = FALSE bug described above in "Major changes": The PSIS weights are now calculated based on the reference model (they used to be calculated based on the submodels which is incorrect). (GitHub: #325)\mbox{} commands displayed incorrectly in the HTML help from R version 4.2.0 on. (GitHub: #326)plot.vsel() now draws the dashed red horizontal line for the reference model (and---if present---the dotted black horizontal line for the baseline model) first (i.e., before the submodel-specific graphical elements), to avoid overplotting.d_test of varsel(): Not only the predictive performance of the reference model needs to be evaluated on the test data, but also the predictive performance of the submodels. (GitHub: #341)cv_varsel() with LOO CV and validate_search = FALSE instead of K-fold CV. (GitHub: #305)search_terms of varsel() and cv_varsel(). (GitHub: #155, #308)NULL) search_terms, method = NULL is internally changed to method = "forward" and method = "L1" throws a warning. This is done because search_terms only takes effect in case of a forward search. (GitHub: #155, #308)search_terms. This is necessary to prevent a bug described below. (GitHub: #308)PIRLS loop resulted in NaN value errors automatically. (GitHub: #314)b of projpred:::bootstrap() to B.search_terms vector which excluded the intercept in conjunction with refit_prj = FALSE (the latter in project(), varsel(), or cv_varsel()) led to incorrect submodels being fetched from the search or to an error while doing so. This has been fixed now by internally forcing the inclusion of the intercept in search_terms. (GitHub: #308)solution_terms of project() to fix a test failure in R versions >= 4.2.cv_varsel() with nloo < n where n denotes the number of observations. (GitHub: #94, #252, commit feea39e)validate_search = FALSE in cv_varsel().nclusters (= 1) and nclusters_pred (= 5) of varsel() and cv_varsel() were set internally (the user-visible defaults were NULL). Now, nclusters and ndraws_pred (note the ndraws_pred, not nclusters_pred) have non-NULL user-visible defaults of 20 and 400, respectively. In general, this increases the runtime of these functions a lot. With respect to cv_varsel(), the new vignette (see vignettes) mentions two ways to quickly obtain some rough preliminary results which in general should not be used as final results, though: (i) varsel() and (ii) cv_varsel() with validate_search = FALSE (which only takes effect for cv_method = "LOO"). (GitHub: #291 and several commits beforehand, in particular bbd0f0a, babe031, 4ef95d3, and ce7d1e0)proj_linpred() and proj_predict(), arguments nterms, ndraws, and seed have been removed to allow the user to pass them to project(). New arguments filter_nterms, nresample_clusters, and .seed have been introduced (see the documentation for details). (GitHub: #92, #135)proj_linpred(), dimensions are not dropped anymore (i.e., output elements pred and lpd are always S x N matrices now). (GitHub: #143)integrated = TRUE, proj_linpred() now averages the LPD (across the projected posterior draws) instead of taking the LPD at the averaged linear predictors. (GitHub: #143)newdata does not contain the response variable, proj_linpred() now returns NULL for output element lpd. (GitHub: #143)stanreg (from package rstanarm) with offsets to have these offsets specified via an offset() term in the model formula (and not via argument offset).NULL to a user-visible value (and NULL is not allowed anymore).data of get_refmodel.stanreg() has been removed. (GitHub: #219)div_minimizer of init_refmodel() now always needs to return a list of submodels (see the documentation for details). Correspondingly, the function passed to argument proj_predfun of init_refmodel() can now always expect a list as input for argument fits (see the documentation for details). (GitHub: #230)proj_predfun of init_refmodel() now always needs to return a matrix (see the documentation for details). (GitHub: #230)?`projpred-package` . (GitHub: #235)Student_t() family is regarded as experimental. Therefore, a corresponding warning is thrown when creating the reference model. (GitHub: #233, #252)Gamma() family is regarded as experimental. Therefore, a corresponding warning is thrown when creating the reference model. (GitHub: paul-buerkner/brms#1255, #240, #252)init_refmodel() in case of argument dis being NULL (the default) was dangerous for custom reference models with a family having a dispersion parameter (in that case, dis values of all-zeros were used silently). The new behavior now requires a non-NULL argument dis in that case. (GitHub: #254)cv_search has been renamed to refit_prj. (GitHub: #154, #265)as.matrix.projection() has gained a new argument nm_scheme which allows to choose the naming scheme for the column names of the returned matrix. The default ("auto") follows the naming scheme of the reference model fit (and uses the "rstanarm" naming scheme if the reference model fit is of an unknown class). (GitHub: #82, #279)seed (and .seed) arguments now have a default of sample.int(.Machine$integer.max, 1) instead of NULL. Furthermore, the value supplied to these arguments is now used to generate new seeds internally on-the-fly. In many cases, this will change results compared to older projpred versions. Also note that now, the internal seeds are never fixed to a specific value if seed (and .seed) arguments are set to NULL. (GitHub: #84, #286)as.matrix.projection() method now also returns the estimated group-level effects themselves. (GitHub: #75)as.matrix.projection() method now returns the variance components (population SD(s) and population correlation(s)) instead of the empirical SD(s) of the group-level effects. (GitHub: #74)README file. (GitHub: #245)nclusters_pred was removed. (GitHub: commit 5062f2f)project(): Warn if elements of solution_terms are not found in the reference model (and therefore ignored). (GitHub: #140)get_refmodel.default() now passes arguments via the ellipsis (...) to init_refmodel(). (GitHub: #153, commit dd3716e)init_refmodel(): The default (NULL) for argument extract_model_data has been removed as it wasn't meaningful anyway. (GitHub: #219)folds of init_refmodel() has been removed as it was effectively unused. (GitHub: #220)solution_terms(). This allowed the introduction of a solution_terms.projection() method. (GitHub: #223)predict.refmodel() now uses a default of newdata = NULL. (GitHub: #223)weights of init_refmodel()'s argument proj_predfun has been removed. (GitHub: #163, #224)div_minimizer functions have been unified into a single div_minimizer which chooses an appropriate submodel fitter based on the formula of the submodel, not based on that of the reference model. Furthermore, the automatic handling of errors in the submodel fitters has been improved. (GitHub: #230)plot.vsel(). (GitHub: #234, #270)cvfun for stanreg fits will now always use inner parallelization in rstanarm::kfold.stanreg() (i.e., across chains, not across CV folds), with getOption("mc.cores", 1) cores. We do so on all systems (not only Windows). (GitHub: #249)fit of init_refmodel()'s argument proj_predfun was renamed to fits. This is a non-breaking change since all calls to proj_predfun in projpred have that argument unnamed. However, this cannot be guaranteed in the future, so we strongly encourage users with a custom proj_predfun to rename argument fit to fits. (GitHub: #263)init_refmodel() has gained argument cvrefbuilder which may be a custom function for constructing the K reference models in a K-fold CV. (GitHub: #271)project(), varsel(), and cv_varsel() to the divergence minimizer. (GitHub: #278)init_refmodel(), any contrasts attributes of the dataset's columns are silently removed. (GitHub: #284)NAs in data supplied to newdata arguments now trigger an error. (GitHub: #285)as.matrix.projection() (causing incorrect column names for the returned matrix). (GitHub: #72, #73)vsel object. (GitHub: #79, #80)varsel(). (GitHub #90)nloo of cv_varsel(). (GitHub: #93)cv_varsel(), causing an error in case of !validate_search && cv_method != "LOO". (GitHub: #95)proj_linpred() to raise an error if argument newdata was NULL. (GitHub: #97)lpd in proj_linpred() (for integrated = TRUE as well as for integrated = FALSE). (GitHub: #105)proj_linpred()'s calculation of output element lpd (for integrated = TRUE). (GitHub: #106, #112)proj_linpred()'s output elements pred and lpd (for integrated = FALSE): Now, they are both S x N matrices, with S denoting the number of (possibly clustered) posterior draws and N denoting the number of observations. (GitHub: #107, #112)proj_predict()'s output matrix to be transposed in case of nrow(newdata) == 1. (GitHub: #112)proj_linpred(). (GitHub: #114)varsel()/make_formula to fail with multidimensional interaction terms. (GitHub: #102, #103)cv_varsel() for models with a single predictor. (GitHub: #115)nterms of proj_linpred() and proj_predict(). (GitHub: #110)as.matrix.projection() in case of 1 (clustered) draw after projection. (GitHub: #130)subfit, make the column names of as.matrix.projection()'s output matrix consistent with other classes of submodels. (GitHub: #132)nterms_max of plot.vsel() if there is just the intercept-only submodel. (GitHub: #138)search_path in, e.g., varsel()'s output. (GitHub: #140)unused argument) when initializing the K reference models in a K-fold CV with CV fits not of class brmsfit or stanreg. (GitHub: #140)get_refmodel.default(), remove old defunct arguments fetch_data, wobs, and offset. (GitHub: #140)get_refmodel.stanreg(). (GitHub: #142, #184)extract_model_data()'s argument extract_y in get_refmodel.default(). (GitHub: #153, commit 39fece8)extract_model_data() in K-fold CV. (GitHub: #153, commit 4f32195)proj_predfun() for GLMMs. (GitHub: #174)proj_predfun() for datafits. (GitHub: #177)summary.vsel()$selection for objects of class vsel created by varsel(). (GitHub: #179)search_terms are not consecutive in size. (GitHub: commit 34e24de)cv_varsel()$pct_solution_terms_cv. (GitHub: #188, commit e529ec1)glm_elnet() (the workhorse for L1 search), causing the grid for lambda to be constructed without taking observation weights into account. (GitHub: #198; note that the second part of #198 did not have any consequences for users)print.vsel() causing argument digits to be ignored. (GitHub: #222)cv_search in varsel() and cv_varsel() to be TRUE for datafits, although it should be FALSE in that case. (GitHub: #223)Error: Levels '<...>' of grouping factor '<...>' cannot be found in the fitted model. Consider setting argument 'allow_new_levels' to TRUE.) when predicting from submodels which are GLMMs for newdata containing new levels for grouping factors. (GitHub: #223)predict.refmodel(): Fix a bug for integer ynew. (GitHub: #223)predict.refmodel(): Fix input checks for offsetnew and weightsnew. (GitHub: #223)extract_model_data(), the weights and offsets are now checked if they are of length 0 (and if yes, then they are set to vectors of ones and zeros, respectively). This is important for extract_model_data() functions which return weights and offsets of length 0 (see, e.g., brms version <= 2.16.1). (GitHub: #223)var (the predictive variances) and regul (amount of ridge regularization) to the internal submodel fitter for GLMs. (GitHub: #230)NAs, an appropriate error is now thrown. Previously, the reference model was created successfully, but this caused opaque errors in downstream code such as project(). (GitHub: #274)We have fully rewritten the internals in several ways. Most importantly, we now leverage maximum likelihood estimation to third parties depending on the reference model's family. This allows a lot of flexibility and extensibility for various models. Functionality wise, the major updates since the last release are:
search_terms that allows the user to specify custom unit building blocks of the projections. New vignette coming up.Better validation of function arguments.
Added print methods for vsel and cvsel objects. Added AUC statistics for binomial family. A few additional minor patches.
Removed the dependency on the rngtools package.
This version contains only a few patches, no new features to the user.
stan_glm(log(y) ~ log(x), ...), that is, it did not allow transformation for y.refmodel-objects using the generic get_refmodel-function, and all the functions use only this object. This makes it much easier to use projpred with other reference models by writing them a new get_refmodel-function. The syntax is now changed so that varsel and cv_varsel both return an object that has similar structure always, and the reference model is stored into this object.plot/summary. Now it is possible to compare also to the best submodel found, not only to the reference model.nloo = n by default in cv_varsel. regul=1e-4 now by default in all functions.cv_search argument for the main functions (varsel,cv_varsel,project and the prediction functions). Now it is possible to make predictions also with those parameter estimates that were computed during the L1-penalized search. This change also allows the user to compute the Lasso-solution by providing the observed data as the 'reference fit' for init_refmodel. An example will be added to the vignette.Until this version, we did not keep record of the changes between different versions. Started to do this from version 0.9.0 onwards.