* [R] make sure things work for a single split model; fixes #2191 * [R] add option use_int_id to xgb.model.dt.tree * [R] add example of exporting tree plot to a file * [R] set save_period = NULL as default in xgboost() to be the same as in xgb.train; fixes #2182 * [R] it's a good practice after CRAN releases to bump up package version in dev * [R] allow xgb.DMatrix construction from integer dense matrices * [R] xgb.DMatrix: silent parameter; improve documentation * [R] xgb.model.dt.tree code style changes * [R] update NEWS with parameter changes * [R] code safety & style; handle non-strict matrix and inherited classes of input and model; fixes #2242 * [R] change to x.y.z.p R-package versioning scheme and set version to 0.6.4.3 * [R] add an R package versioning section to the contributors guide * [R] R-package/README.md: clean up the redundant old installation instructions, link the contributors guide
78 lines
3.4 KiB
R
78 lines
3.4 KiB
R
% Generated by roxygen2: do not edit by hand
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% Please edit documentation in R/xgb.model.dt.tree.R
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\name{xgb.model.dt.tree}
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\alias{xgb.model.dt.tree}
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\title{Parse a boosted tree model text dump}
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\usage{
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xgb.model.dt.tree(feature_names = NULL, model = NULL, text = NULL,
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trees = NULL, use_int_id = FALSE, ...)
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}
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\arguments{
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\item{feature_names}{character vector of feature names. If the model already
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contains feature names, those would be used when \code{feature_names=NULL} (default value).
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Non-null \code{feature_names} could be provided to override those in the model.}
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\item{model}{object of class \code{xgb.Booster}}
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\item{text}{\code{character} vector previously generated by the \code{xgb.dump}
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function (where parameter \code{with_stats = TRUE} should have been set).
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\code{text} takes precedence over \code{model}.}
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\item{trees}{an integer vector of tree indices that should be parsed.
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If set to \code{NULL}, all trees of the model are parsed.
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It could be useful, e.g., in multiclass classification to get only
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the trees of one certain class. IMPORTANT: the tree index in xgboost models
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is zero-based (e.g., use \code{trees = 0:4} for first 5 trees).}
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\item{use_int_id}{a logical flag indicating whether nodes in columns "Yes", "No", "Missing" should be
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represented as integers (when FALSE) or as "Tree-Node" character strings (when FALSE).}
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\item{...}{currently not used.}
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}
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\value{
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A \code{data.table} with detailed information about model trees' nodes.
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The columns of the \code{data.table} are:
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\itemize{
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\item \code{Tree}: integer ID of a tree in a model (zero-based index)
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\item \code{Node}: integer ID of a node in a tree (zero-based index)
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\item \code{ID}: character identifier of a node in a model (only when \code{use_int_id=FALSE})
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\item \code{Feature}: for a branch node, it's a feature id or name (when available);
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for a leaf note, it simply labels it as \code{'Leaf'}
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\item \code{Split}: location of the split for a branch node (split condition is always "less than")
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\item \code{Yes}: ID of the next node when the split condition is met
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\item \code{No}: ID of the next node when the split condition is not met
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\item \code{Missing}: ID of the next node when branch value is missing
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\item \code{Quality}: either the split gain (change in loss) or the leaf value
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\item \code{Cover}: metric related to the number of observation either seen by a split
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or collected by a leaf during training.
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}
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When \code{use_int_id=FALSE}, columns "Yes", "No", and "Missing" point to model-wide node identifiers
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in the "ID" column. When \code{use_int_id=TRUE}, those columns point to node identifiers from
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the corresponding trees in the "Node" column.
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}
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\description{
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Parse a boosted tree model text dump into a \code{data.table} structure.
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}
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\examples{
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# Basic use:
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data(agaricus.train, package='xgboost')
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bst <- xgboost(data = agaricus.train$data, label = agaricus.train$label, max_depth = 2,
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eta = 1, nthread = 2, nrounds = 2,objective = "binary:logistic")
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(dt <- xgb.model.dt.tree(colnames(agaricus.train$data), bst))
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# This bst model already has feature_names stored with it, so those would be used when
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# feature_names is not set:
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(dt <- xgb.model.dt.tree(model = bst))
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# How to match feature names of splits that are following a current 'Yes' branch:
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merge(dt, dt[, .(ID, Y.Feature=Feature)], by.x='Yes', by.y='ID', all.x=TRUE)[order(Tree,Node)]
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}
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