Remove public access to tree model param. (#8902)
* Make tree model param a private member. * Number of features and targets are immutable after construction. This is to reduce the number of places where we can run configuration.
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@ -178,51 +178,33 @@ class RegTree : public Model {
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}
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/*! \brief index of left child */
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XGBOOST_DEVICE [[nodiscard]] int LeftChild() const {
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return this->cleft_;
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}
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[[nodiscard]] XGBOOST_DEVICE int LeftChild() const { return this->cleft_; }
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/*! \brief index of right child */
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XGBOOST_DEVICE [[nodiscard]] int RightChild() const {
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return this->cright_;
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}
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[[nodiscard]] XGBOOST_DEVICE int RightChild() const { return this->cright_; }
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/*! \brief index of default child when feature is missing */
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XGBOOST_DEVICE [[nodiscard]] int DefaultChild() const {
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[[nodiscard]] XGBOOST_DEVICE int DefaultChild() const {
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return this->DefaultLeft() ? this->LeftChild() : this->RightChild();
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}
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/*! \brief feature index of split condition */
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XGBOOST_DEVICE [[nodiscard]] unsigned SplitIndex() const {
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[[nodiscard]] XGBOOST_DEVICE unsigned SplitIndex() const {
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return sindex_ & ((1U << 31) - 1U);
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}
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/*! \brief when feature is unknown, whether goes to left child */
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XGBOOST_DEVICE [[nodiscard]] bool DefaultLeft() const {
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return (sindex_ >> 31) != 0;
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}
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[[nodiscard]] XGBOOST_DEVICE bool DefaultLeft() const { return (sindex_ >> 31) != 0; }
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/*! \brief whether current node is leaf node */
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XGBOOST_DEVICE [[nodiscard]] bool IsLeaf() const {
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return cleft_ == kInvalidNodeId;
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}
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[[nodiscard]] XGBOOST_DEVICE bool IsLeaf() const { return cleft_ == kInvalidNodeId; }
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/*! \return get leaf value of leaf node */
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XGBOOST_DEVICE [[nodiscard]] float LeafValue() const {
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return (this->info_).leaf_value;
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}
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[[nodiscard]] XGBOOST_DEVICE float LeafValue() const { return (this->info_).leaf_value; }
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/*! \return get split condition of the node */
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XGBOOST_DEVICE [[nodiscard]] SplitCondT SplitCond() const {
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return (this->info_).split_cond;
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}
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[[nodiscard]] XGBOOST_DEVICE SplitCondT SplitCond() const { return (this->info_).split_cond; }
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/*! \brief get parent of the node */
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XGBOOST_DEVICE [[nodiscard]] int Parent() const {
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return parent_ & ((1U << 31) - 1);
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}
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[[nodiscard]] XGBOOST_DEVICE int Parent() const { return parent_ & ((1U << 31) - 1); }
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/*! \brief whether current node is left child */
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XGBOOST_DEVICE [[nodiscard]] bool IsLeftChild() const {
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return (parent_ & (1U << 31)) != 0;
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}
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[[nodiscard]] XGBOOST_DEVICE bool IsLeftChild() const { return (parent_ & (1U << 31)) != 0; }
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/*! \brief whether this node is deleted */
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XGBOOST_DEVICE [[nodiscard]] bool IsDeleted() const {
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return sindex_ == kDeletedNodeMarker;
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}
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[[nodiscard]] XGBOOST_DEVICE bool IsDeleted() const { return sindex_ == kDeletedNodeMarker; }
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/*! \brief whether current node is root */
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XGBOOST_DEVICE [[nodiscard]] bool IsRoot() const { return parent_ == kInvalidNodeId; }
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[[nodiscard]] XGBOOST_DEVICE bool IsRoot() const { return parent_ == kInvalidNodeId; }
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/*!
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* \brief set the left child
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* \param nid node id to right child
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@ -337,15 +319,13 @@ class RegTree : public Model {
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this->ChangeToLeaf(rid, value);
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}
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/*! \brief model parameter */
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TreeParam param;
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RegTree() {
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param.Init(Args{});
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nodes_.resize(param.num_nodes);
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stats_.resize(param.num_nodes);
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split_types_.resize(param.num_nodes, FeatureType::kNumerical);
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split_categories_segments_.resize(param.num_nodes);
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for (int i = 0; i < param.num_nodes; i++) {
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param_.Init(Args{});
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nodes_.resize(param_.num_nodes);
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stats_.resize(param_.num_nodes);
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split_types_.resize(param_.num_nodes, FeatureType::kNumerical);
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split_categories_segments_.resize(param_.num_nodes);
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for (int i = 0; i < param_.num_nodes; i++) {
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nodes_[i].SetLeaf(0.0f);
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nodes_[i].SetParent(kInvalidNodeId);
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}
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@ -354,10 +334,10 @@ class RegTree : public Model {
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* \brief Constructor that initializes the tree model with shape.
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*/
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explicit RegTree(bst_target_t n_targets, bst_feature_t n_features) : RegTree{} {
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param.num_feature = n_features;
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param.size_leaf_vector = n_targets;
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param_.num_feature = n_features;
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param_.size_leaf_vector = n_targets;
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if (n_targets > 1) {
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this->p_mt_tree_.reset(new MultiTargetTree{¶m});
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this->p_mt_tree_.reset(new MultiTargetTree{¶m_});
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}
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}
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@ -401,7 +381,7 @@ class RegTree : public Model {
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bool operator==(const RegTree& b) const {
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return nodes_ == b.nodes_ && stats_ == b.stats_ &&
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deleted_nodes_ == b.deleted_nodes_ && param == b.param;
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deleted_nodes_ == b.deleted_nodes_ && param_ == b.param_;
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}
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/* \brief Iterate through all nodes in this tree.
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*
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@ -459,7 +439,9 @@ class RegTree : public Model {
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bst_float loss_change, float sum_hess, float left_sum,
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float right_sum,
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bst_node_t leaf_right_child = kInvalidNodeId);
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/**
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* \brief Expands a leaf node into two additional leaf nodes for a multi-target tree.
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*/
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void ExpandNode(bst_node_t nidx, bst_feature_t split_index, float split_cond, bool default_left,
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linalg::VectorView<float const> base_weight,
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linalg::VectorView<float const> left_weight,
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@ -485,19 +467,48 @@ class RegTree : public Model {
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bst_float base_weight, bst_float left_leaf_weight,
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bst_float right_leaf_weight, bst_float loss_change, float sum_hess,
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float left_sum, float right_sum);
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[[nodiscard]] bool HasCategoricalSplit() const {
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return !split_categories_.empty();
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}
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/**
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* \brief Whether this tree has categorical split.
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*/
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[[nodiscard]] bool HasCategoricalSplit() const { return !split_categories_.empty(); }
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/**
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* \brief Whether this is a multi-target tree.
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*/
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[[nodiscard]] bool IsMultiTarget() const { return static_cast<bool>(p_mt_tree_); }
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[[nodiscard]] bst_target_t NumTargets() const { return param.size_leaf_vector; }
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/**
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* \brief The size of leaf weight.
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*/
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[[nodiscard]] bst_target_t NumTargets() const { return param_.size_leaf_vector; }
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/**
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* \brief Get the underlying implementaiton of multi-target tree.
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*/
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[[nodiscard]] auto GetMultiTargetTree() const {
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CHECK(IsMultiTarget());
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return p_mt_tree_.get();
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}
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/**
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* \brief Get the number of features.
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*/
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[[nodiscard]] bst_feature_t NumFeatures() const noexcept { return param_.num_feature; }
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/**
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* \brief Get the total number of nodes including deleted ones in this tree.
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*/
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[[nodiscard]] bst_node_t NumNodes() const noexcept { return param_.num_nodes; }
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/**
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* \brief Get the total number of valid nodes in this tree.
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*/
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[[nodiscard]] bst_node_t NumValidNodes() const noexcept {
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return param_.num_nodes - param_.num_deleted;
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}
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/**
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* \brief number of extra nodes besides the root
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*/
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[[nodiscard]] bst_node_t NumExtraNodes() const noexcept {
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return param_.num_nodes - 1 - param_.num_deleted;
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}
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/* \brief Count number of leaves in tree. */
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[[nodiscard]] bst_node_t GetNumLeaves() const;
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[[nodiscard]] bst_node_t GetNumSplitNodes() const;
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/*!
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* \brief get current depth
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@ -514,6 +525,9 @@ class RegTree : public Model {
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}
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return depth;
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}
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/**
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* \brief Set the leaf weight for a multi-target tree.
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*/
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void SetLeaf(bst_node_t nidx, linalg::VectorView<float const> weight) {
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CHECK(IsMultiTarget());
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return this->p_mt_tree_->SetLeaf(nidx, weight);
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@ -525,25 +539,13 @@ class RegTree : public Model {
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*/
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[[nodiscard]] int MaxDepth(int nid) const {
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if (nodes_[nid].IsLeaf()) return 0;
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return std::max(MaxDepth(nodes_[nid].LeftChild())+1,
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MaxDepth(nodes_[nid].RightChild())+1);
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return std::max(MaxDepth(nodes_[nid].LeftChild()) + 1, MaxDepth(nodes_[nid].RightChild()) + 1);
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}
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/*!
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* \brief get maximum depth
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*/
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int MaxDepth() {
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return MaxDepth(0);
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}
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/*! \brief number of extra nodes besides the root */
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[[nodiscard]] int NumExtraNodes() const {
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return param.num_nodes - 1 - param.num_deleted;
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}
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/* \brief Count number of leaves in tree. */
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[[nodiscard]] bst_node_t GetNumLeaves() const;
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[[nodiscard]] bst_node_t GetNumSplitNodes() const;
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int MaxDepth() { return MaxDepth(0); }
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/*!
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* \brief dense feature vector that can be taken by RegTree
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@ -735,6 +737,8 @@ class RegTree : public Model {
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template <bool typed>
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void LoadCategoricalSplit(Json const& in);
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void SaveCategoricalSplit(Json* p_out) const;
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/*! \brief model parameter */
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TreeParam param_;
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// vector of nodes
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std::vector<Node> nodes_;
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// free node space, used during training process
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@ -752,20 +756,20 @@ class RegTree : public Model {
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// allocate a new node,
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// !!!!!! NOTE: may cause BUG here, nodes.resize
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bst_node_t AllocNode() {
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if (param.num_deleted != 0) {
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if (param_.num_deleted != 0) {
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int nid = deleted_nodes_.back();
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deleted_nodes_.pop_back();
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nodes_[nid].Reuse();
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--param.num_deleted;
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--param_.num_deleted;
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return nid;
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}
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int nd = param.num_nodes++;
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CHECK_LT(param.num_nodes, std::numeric_limits<int>::max())
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int nd = param_.num_nodes++;
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CHECK_LT(param_.num_nodes, std::numeric_limits<int>::max())
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<< "number of nodes in the tree exceed 2^31";
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nodes_.resize(param.num_nodes);
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stats_.resize(param.num_nodes);
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split_types_.resize(param.num_nodes, FeatureType::kNumerical);
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split_categories_segments_.resize(param.num_nodes);
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nodes_.resize(param_.num_nodes);
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stats_.resize(param_.num_nodes);
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split_types_.resize(param_.num_nodes, FeatureType::kNumerical);
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split_categories_segments_.resize(param_.num_nodes);
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return nd;
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}
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// delete a tree node, keep the parent field to allow trace back
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@ -780,7 +784,7 @@ class RegTree : public Model {
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deleted_nodes_.push_back(nid);
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nodes_[nid].MarkDelete();
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++param.num_deleted;
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++param_.num_deleted;
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}
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};
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@ -360,8 +360,8 @@ void GBTree::BoostNewTrees(HostDeviceVector<GradientPair>* gpair, DMatrix* p_fma
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<< "Set `process_type` to `update` if you want to update existing "
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"trees.";
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// create new tree
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std::unique_ptr<RegTree> ptr(new RegTree());
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ptr->param.UpdateAllowUnknown(this->cfg_);
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std::unique_ptr<RegTree> ptr(new RegTree{this->model_.learner_model_param->LeafLength(),
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this->model_.learner_model_param->num_feature});
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new_trees.push_back(ptr.get());
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ret->push_back(std::move(ptr));
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} else if (tparam_.process_type == TreeProcessType::kUpdate) {
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@ -775,8 +775,6 @@ class LearnerConfiguration : public Learner {
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}
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CHECK_NE(mparam_.num_feature, 0)
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<< "0 feature is supplied. Are you using raw Booster interface?";
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// Remove these once binary IO is gone.
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cfg_["num_feature"] = common::ToString(mparam_.num_feature);
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}
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void ConfigureGBM(LearnerTrainParam const& old, Args const& args) {
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@ -275,7 +275,7 @@ float FillNodeMeanValues(RegTree const *tree, bst_node_t nidx, std::vector<float
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}
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void FillNodeMeanValues(RegTree const* tree, std::vector<float>* mean_values) {
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size_t num_nodes = tree->param.num_nodes;
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size_t num_nodes = tree->NumNodes();
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if (mean_values->size() == num_nodes) {
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return;
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}
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@ -815,9 +815,9 @@ void RegTree::ExpandNode(bst_node_t nidx, bst_feature_t split_index, float split
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linalg::VectorView<float const> left_weight,
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linalg::VectorView<float const> right_weight) {
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CHECK(IsMultiTarget());
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CHECK_LT(split_index, this->param.num_feature);
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CHECK_LT(split_index, this->param_.num_feature);
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CHECK(this->p_mt_tree_);
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CHECK_GT(param.size_leaf_vector, 1);
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CHECK_GT(param_.size_leaf_vector, 1);
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this->p_mt_tree_->Expand(nidx, split_index, split_cond, default_left, base_weight, left_weight,
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right_weight);
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@ -826,7 +826,7 @@ void RegTree::ExpandNode(bst_node_t nidx, bst_feature_t split_index, float split
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split_categories_segments_.resize(this->Size());
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this->split_types_.at(nidx) = FeatureType::kNumerical;
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this->param.num_nodes = this->p_mt_tree_->Size();
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this->param_.num_nodes = this->p_mt_tree_->Size();
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}
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void RegTree::ExpandCategorical(bst_node_t nid, bst_feature_t split_index,
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@ -850,13 +850,13 @@ void RegTree::ExpandCategorical(bst_node_t nid, bst_feature_t split_index,
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}
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void RegTree::Load(dmlc::Stream* fi) {
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CHECK_EQ(fi->Read(¶m, sizeof(TreeParam)), sizeof(TreeParam));
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CHECK_EQ(fi->Read(¶m_, sizeof(TreeParam)), sizeof(TreeParam));
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if (!DMLC_IO_NO_ENDIAN_SWAP) {
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param = param.ByteSwap();
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param_ = param_.ByteSwap();
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}
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nodes_.resize(param.num_nodes);
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stats_.resize(param.num_nodes);
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CHECK_NE(param.num_nodes, 0);
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nodes_.resize(param_.num_nodes);
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stats_.resize(param_.num_nodes);
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CHECK_NE(param_.num_nodes, 0);
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CHECK_EQ(fi->Read(dmlc::BeginPtr(nodes_), sizeof(Node) * nodes_.size()),
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sizeof(Node) * nodes_.size());
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if (!DMLC_IO_NO_ENDIAN_SWAP) {
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@ -873,29 +873,29 @@ void RegTree::Load(dmlc::Stream* fi) {
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}
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// chg deleted nodes
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deleted_nodes_.resize(0);
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for (int i = 1; i < param.num_nodes; ++i) {
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for (int i = 1; i < param_.num_nodes; ++i) {
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if (nodes_[i].IsDeleted()) {
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deleted_nodes_.push_back(i);
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}
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}
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CHECK_EQ(static_cast<int>(deleted_nodes_.size()), param.num_deleted);
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CHECK_EQ(static_cast<int>(deleted_nodes_.size()), param_.num_deleted);
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split_types_.resize(param.num_nodes, FeatureType::kNumerical);
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split_categories_segments_.resize(param.num_nodes);
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split_types_.resize(param_.num_nodes, FeatureType::kNumerical);
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split_categories_segments_.resize(param_.num_nodes);
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}
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void RegTree::Save(dmlc::Stream* fo) const {
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CHECK_EQ(param.num_nodes, static_cast<int>(nodes_.size()));
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CHECK_EQ(param.num_nodes, static_cast<int>(stats_.size()));
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CHECK_EQ(param.deprecated_num_roots, 1);
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CHECK_NE(param.num_nodes, 0);
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CHECK_EQ(param_.num_nodes, static_cast<int>(nodes_.size()));
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CHECK_EQ(param_.num_nodes, static_cast<int>(stats_.size()));
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CHECK_EQ(param_.deprecated_num_roots, 1);
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CHECK_NE(param_.num_nodes, 0);
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CHECK(!HasCategoricalSplit())
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<< "Please use JSON/UBJSON for saving models with categorical splits.";
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if (DMLC_IO_NO_ENDIAN_SWAP) {
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fo->Write(¶m, sizeof(TreeParam));
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fo->Write(¶m_, sizeof(TreeParam));
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} else {
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TreeParam x = param.ByteSwap();
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TreeParam x = param_.ByteSwap();
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fo->Write(&x, sizeof(x));
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}
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@ -1081,7 +1081,7 @@ void RegTree::LoadModel(Json const& in) {
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bool typed = IsA<I32Array>(in[tf::kParent]);
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auto const& in_obj = get<Object const>(in);
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// basic properties
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FromJson(in["tree_param"], ¶m);
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FromJson(in["tree_param"], ¶m_);
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// categorical splits
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bool has_cat = in_obj.find("split_type") != in_obj.cend();
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if (has_cat) {
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@ -1092,55 +1092,55 @@ void RegTree::LoadModel(Json const& in) {
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}
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}
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// multi-target
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if (param.size_leaf_vector > 1) {
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this->p_mt_tree_.reset(new MultiTargetTree{¶m});
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if (param_.size_leaf_vector > 1) {
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this->p_mt_tree_.reset(new MultiTargetTree{¶m_});
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this->GetMultiTargetTree()->LoadModel(in);
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return;
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}
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bool feature_is_64 = IsA<I64Array>(in["split_indices"]);
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if (typed && feature_is_64) {
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LoadModelImpl<true, true>(in, param, &stats_, &nodes_);
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LoadModelImpl<true, true>(in, param_, &stats_, &nodes_);
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} else if (typed && !feature_is_64) {
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LoadModelImpl<true, false>(in, param, &stats_, &nodes_);
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LoadModelImpl<true, false>(in, param_, &stats_, &nodes_);
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} else if (!typed && feature_is_64) {
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LoadModelImpl<false, true>(in, param, &stats_, &nodes_);
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LoadModelImpl<false, true>(in, param_, &stats_, &nodes_);
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} else {
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||||
LoadModelImpl<false, false>(in, param, &stats_, &nodes_);
|
||||
LoadModelImpl<false, false>(in, param_, &stats_, &nodes_);
|
||||
}
|
||||
|
||||
if (!has_cat) {
|
||||
this->split_categories_segments_.resize(this->param.num_nodes);
|
||||
this->split_types_.resize(this->param.num_nodes);
|
||||
this->split_categories_segments_.resize(this->param_.num_nodes);
|
||||
this->split_types_.resize(this->param_.num_nodes);
|
||||
std::fill(split_types_.begin(), split_types_.end(), FeatureType::kNumerical);
|
||||
}
|
||||
|
||||
deleted_nodes_.clear();
|
||||
for (bst_node_t i = 1; i < param.num_nodes; ++i) {
|
||||
for (bst_node_t i = 1; i < param_.num_nodes; ++i) {
|
||||
if (nodes_[i].IsDeleted()) {
|
||||
deleted_nodes_.push_back(i);
|
||||
}
|
||||
}
|
||||
// easier access to [] operator
|
||||
auto& self = *this;
|
||||
for (auto nid = 1; nid < param.num_nodes; ++nid) {
|
||||
for (auto nid = 1; nid < param_.num_nodes; ++nid) {
|
||||
auto parent = self[nid].Parent();
|
||||
CHECK_NE(parent, RegTree::kInvalidNodeId);
|
||||
self[nid].SetParent(self[nid].Parent(), self[parent].LeftChild() == nid);
|
||||
}
|
||||
CHECK_EQ(static_cast<bst_node_t>(deleted_nodes_.size()), param.num_deleted);
|
||||
CHECK_EQ(this->split_categories_segments_.size(), param.num_nodes);
|
||||
CHECK_EQ(static_cast<bst_node_t>(deleted_nodes_.size()), param_.num_deleted);
|
||||
CHECK_EQ(this->split_categories_segments_.size(), param_.num_nodes);
|
||||
}
|
||||
|
||||
void RegTree::SaveModel(Json* p_out) const {
|
||||
auto& out = *p_out;
|
||||
// basic properties
|
||||
out["tree_param"] = ToJson(param);
|
||||
out["tree_param"] = ToJson(param_);
|
||||
// categorical splits
|
||||
this->SaveCategoricalSplit(p_out);
|
||||
// multi-target
|
||||
if (this->IsMultiTarget()) {
|
||||
CHECK_GT(param.size_leaf_vector, 1);
|
||||
CHECK_GT(param_.size_leaf_vector, 1);
|
||||
this->GetMultiTargetTree()->SaveModel(p_out);
|
||||
return;
|
||||
}
|
||||
@ -1150,11 +1150,11 @@ void RegTree::SaveModel(Json* p_out) const {
|
||||
* pruner, and this pruner can be used inside another updater so leaf are not necessary
|
||||
* at the end of node array.
|
||||
*/
|
||||
CHECK_EQ(param.num_nodes, static_cast<int>(nodes_.size()));
|
||||
CHECK_EQ(param.num_nodes, static_cast<int>(stats_.size()));
|
||||
CHECK_EQ(param_.num_nodes, static_cast<int>(nodes_.size()));
|
||||
CHECK_EQ(param_.num_nodes, static_cast<int>(stats_.size()));
|
||||
|
||||
CHECK_EQ(get<String>(out["tree_param"]["num_nodes"]), std::to_string(param.num_nodes));
|
||||
auto n_nodes = param.num_nodes;
|
||||
CHECK_EQ(get<String>(out["tree_param"]["num_nodes"]), std::to_string(param_.num_nodes));
|
||||
auto n_nodes = param_.num_nodes;
|
||||
|
||||
// stats
|
||||
F32Array loss_changes(n_nodes);
|
||||
@ -1168,7 +1168,7 @@ void RegTree::SaveModel(Json* p_out) const {
|
||||
|
||||
F32Array conds(n_nodes);
|
||||
U8Array default_left(n_nodes);
|
||||
CHECK_EQ(this->split_types_.size(), param.num_nodes);
|
||||
CHECK_EQ(this->split_types_.size(), param_.num_nodes);
|
||||
|
||||
namespace tf = tree_field;
|
||||
|
||||
@ -1189,7 +1189,7 @@ void RegTree::SaveModel(Json* p_out) const {
|
||||
default_left.Set(i, static_cast<uint8_t>(!!n.DefaultLeft()));
|
||||
}
|
||||
};
|
||||
if (this->param.num_feature > static_cast<bst_feature_t>(std::numeric_limits<int32_t>::max())) {
|
||||
if (this->param_.num_feature > static_cast<bst_feature_t>(std::numeric_limits<int32_t>::max())) {
|
||||
I64Array indices_64(n_nodes);
|
||||
save_tree(&indices_64);
|
||||
out[tf::kSplitIdx] = std::move(indices_64);
|
||||
|
||||
@ -190,7 +190,7 @@ class ColMaker: public TreeUpdater {
|
||||
(*p_tree)[nid].SetLeaf(snode_[nid].weight * param_.learning_rate);
|
||||
}
|
||||
// remember auxiliary statistics in the tree node
|
||||
for (int nid = 0; nid < p_tree->param.num_nodes; ++nid) {
|
||||
for (int nid = 0; nid < p_tree->NumNodes(); ++nid) {
|
||||
p_tree->Stat(nid).loss_chg = snode_[nid].best.loss_chg;
|
||||
p_tree->Stat(nid).base_weight = snode_[nid].weight;
|
||||
p_tree->Stat(nid).sum_hess = static_cast<float>(snode_[nid].stats.sum_hess);
|
||||
@ -255,9 +255,9 @@ class ColMaker: public TreeUpdater {
|
||||
{
|
||||
// setup statistics space for each tree node
|
||||
for (auto& i : stemp_) {
|
||||
i.resize(tree.param.num_nodes, ThreadEntry());
|
||||
i.resize(tree.NumNodes(), ThreadEntry());
|
||||
}
|
||||
snode_.resize(tree.param.num_nodes, NodeEntry());
|
||||
snode_.resize(tree.NumNodes(), NodeEntry());
|
||||
}
|
||||
const MetaInfo& info = fmat.Info();
|
||||
// setup position
|
||||
|
||||
@ -72,7 +72,7 @@ class TreePruner : public TreeUpdater {
|
||||
void DoPrune(TrainParam const* param, RegTree* p_tree) {
|
||||
auto& tree = *p_tree;
|
||||
bst_node_t npruned = 0;
|
||||
for (int nid = 0; nid < tree.param.num_nodes; ++nid) {
|
||||
for (int nid = 0; nid < tree.NumNodes(); ++nid) {
|
||||
if (tree[nid].IsLeaf() && !tree[nid].IsDeleted()) {
|
||||
npruned = this->TryPruneLeaf(param, p_tree, nid, tree.GetDepth(nid), npruned);
|
||||
}
|
||||
|
||||
@ -50,11 +50,11 @@ class TreeRefresher : public TreeUpdater {
|
||||
int tid = omp_get_thread_num();
|
||||
int num_nodes = 0;
|
||||
for (auto tree : trees) {
|
||||
num_nodes += tree->param.num_nodes;
|
||||
num_nodes += tree->NumNodes();
|
||||
}
|
||||
stemp[tid].resize(num_nodes, GradStats());
|
||||
std::fill(stemp[tid].begin(), stemp[tid].end(), GradStats());
|
||||
fvec_temp[tid].Init(trees[0]->param.num_feature);
|
||||
fvec_temp[tid].Init(trees[0]->NumFeatures());
|
||||
});
|
||||
}
|
||||
exc.Rethrow();
|
||||
@ -77,7 +77,7 @@ class TreeRefresher : public TreeUpdater {
|
||||
for (auto tree : trees) {
|
||||
AddStats(*tree, feats, gpair_h, info, ridx,
|
||||
dmlc::BeginPtr(stemp[tid]) + offset);
|
||||
offset += tree->param.num_nodes;
|
||||
offset += tree->NumNodes();
|
||||
}
|
||||
feats.Drop(inst);
|
||||
});
|
||||
@ -96,7 +96,7 @@ class TreeRefresher : public TreeUpdater {
|
||||
int offset = 0;
|
||||
for (auto tree : trees) {
|
||||
this->Refresh(param, dmlc::BeginPtr(stemp[0]) + offset, 0, tree);
|
||||
offset += tree->param.num_nodes;
|
||||
offset += tree->NumNodes();
|
||||
}
|
||||
}
|
||||
|
||||
|
||||
@ -40,8 +40,7 @@ TEST(GrowHistMaker, InteractionConstraint)
|
||||
ObjInfo task{ObjInfo::kRegression};
|
||||
{
|
||||
// With constraints
|
||||
RegTree tree;
|
||||
tree.param.num_feature = kCols;
|
||||
RegTree tree{1, kCols};
|
||||
|
||||
std::unique_ptr<TreeUpdater> updater{TreeUpdater::Create("grow_histmaker", &ctx, &task)};
|
||||
TrainParam param;
|
||||
@ -58,8 +57,7 @@ TEST(GrowHistMaker, InteractionConstraint)
|
||||
}
|
||||
{
|
||||
// Without constraints
|
||||
RegTree tree;
|
||||
tree.param.num_feature = kCols;
|
||||
RegTree tree{1u, kCols};
|
||||
|
||||
std::unique_ptr<TreeUpdater> updater{TreeUpdater::Create("grow_histmaker", &ctx, &task)};
|
||||
std::vector<HostDeviceVector<bst_node_t>> position(1);
|
||||
@ -76,7 +74,7 @@ TEST(GrowHistMaker, InteractionConstraint)
|
||||
}
|
||||
|
||||
namespace {
|
||||
void TestColumnSplit(int32_t rows, int32_t cols, RegTree const& expected_tree) {
|
||||
void TestColumnSplit(int32_t rows, bst_feature_t cols, RegTree const& expected_tree) {
|
||||
auto p_dmat = GenerateDMatrix(rows, cols);
|
||||
auto p_gradients = GenerateGradients(rows);
|
||||
Context ctx;
|
||||
@ -87,8 +85,7 @@ void TestColumnSplit(int32_t rows, int32_t cols, RegTree const& expected_tree) {
|
||||
std::unique_ptr<DMatrix> sliced{
|
||||
p_dmat->SliceCol(collective::GetWorldSize(), collective::GetRank())};
|
||||
|
||||
RegTree tree;
|
||||
tree.param.num_feature = cols;
|
||||
RegTree tree{1u, cols};
|
||||
TrainParam param;
|
||||
param.Init(Args{});
|
||||
updater->Update(¶m, p_gradients.get(), sliced.get(), position, {&tree});
|
||||
@ -107,8 +104,7 @@ TEST(GrowHistMaker, ColumnSplit) {
|
||||
auto constexpr kRows = 32;
|
||||
auto constexpr kCols = 16;
|
||||
|
||||
RegTree expected_tree;
|
||||
expected_tree.param.num_feature = kCols;
|
||||
RegTree expected_tree{1u, kCols};
|
||||
ObjInfo task{ObjInfo::kRegression};
|
||||
{
|
||||
auto p_dmat = GenerateDMatrix(kRows, kCols);
|
||||
|
||||
@ -17,8 +17,8 @@ TEST(MultiTargetTree, JsonIO) {
|
||||
linalg::Vector<float> right_weight{{3.0f, 4.0f, 5.0f}, {3ul}, Context::kCpuId};
|
||||
tree.ExpandNode(RegTree::kRoot, /*split_idx=*/1, 0.5f, true, base_weight.HostView(),
|
||||
left_weight.HostView(), right_weight.HostView());
|
||||
ASSERT_EQ(tree.param.num_nodes, 3);
|
||||
ASSERT_EQ(tree.param.size_leaf_vector, 3);
|
||||
ASSERT_EQ(tree.NumNodes(), 3);
|
||||
ASSERT_EQ(tree.NumTargets(), 3);
|
||||
ASSERT_EQ(tree.GetMultiTargetTree()->Size(), 3);
|
||||
ASSERT_EQ(tree.Size(), 3);
|
||||
|
||||
@ -26,20 +26,19 @@ TEST(MultiTargetTree, JsonIO) {
|
||||
tree.SaveModel(&jtree);
|
||||
|
||||
auto check_jtree = [](Json jtree, RegTree const& tree) {
|
||||
ASSERT_EQ(get<String const>(jtree["tree_param"]["num_nodes"]),
|
||||
std::to_string(tree.param.num_nodes));
|
||||
ASSERT_EQ(get<String const>(jtree["tree_param"]["num_nodes"]), std::to_string(tree.NumNodes()));
|
||||
ASSERT_EQ(get<F32Array const>(jtree["base_weights"]).size(),
|
||||
tree.param.num_nodes * tree.param.size_leaf_vector);
|
||||
ASSERT_EQ(get<I32Array const>(jtree["parents"]).size(), tree.param.num_nodes);
|
||||
ASSERT_EQ(get<I32Array const>(jtree["left_children"]).size(), tree.param.num_nodes);
|
||||
ASSERT_EQ(get<I32Array const>(jtree["right_children"]).size(), tree.param.num_nodes);
|
||||
tree.NumNodes() * tree.NumTargets());
|
||||
ASSERT_EQ(get<I32Array const>(jtree["parents"]).size(), tree.NumNodes());
|
||||
ASSERT_EQ(get<I32Array const>(jtree["left_children"]).size(), tree.NumNodes());
|
||||
ASSERT_EQ(get<I32Array const>(jtree["right_children"]).size(), tree.NumNodes());
|
||||
};
|
||||
check_jtree(jtree, tree);
|
||||
|
||||
RegTree loaded;
|
||||
loaded.LoadModel(jtree);
|
||||
ASSERT_TRUE(loaded.IsMultiTarget());
|
||||
ASSERT_EQ(loaded.param.num_nodes, 3);
|
||||
ASSERT_EQ(loaded.NumNodes(), 3);
|
||||
|
||||
Json jtree1{Object{}};
|
||||
loaded.SaveModel(&jtree1);
|
||||
|
||||
@ -32,8 +32,7 @@ TEST(Updater, Prune) {
|
||||
auto ctx = CreateEmptyGenericParam(GPUIDX);
|
||||
|
||||
// prepare tree
|
||||
RegTree tree = RegTree();
|
||||
tree.param.UpdateAllowUnknown(cfg);
|
||||
RegTree tree = RegTree{1u, kCols};
|
||||
std::vector<RegTree*> trees {&tree};
|
||||
// prepare pruner
|
||||
TrainParam param;
|
||||
|
||||
@ -28,9 +28,8 @@ TEST(Updater, Refresh) {
|
||||
{"num_feature", std::to_string(kCols)},
|
||||
{"reg_lambda", "1"}};
|
||||
|
||||
RegTree tree = RegTree();
|
||||
RegTree tree = RegTree{1u, kCols};
|
||||
auto ctx = CreateEmptyGenericParam(GPUIDX);
|
||||
tree.param.UpdateAllowUnknown(cfg);
|
||||
std::vector<RegTree*> trees{&tree};
|
||||
|
||||
ObjInfo task{ObjInfo::kRegression};
|
||||
|
||||
@ -11,9 +11,8 @@
|
||||
namespace xgboost {
|
||||
TEST(Tree, ModelShape) {
|
||||
bst_feature_t n_features = std::numeric_limits<uint32_t>::max();
|
||||
RegTree tree;
|
||||
tree.param.UpdateAllowUnknown(Args{{"num_feature", std::to_string(n_features)}});
|
||||
ASSERT_EQ(tree.param.num_feature, n_features);
|
||||
RegTree tree{1u, n_features};
|
||||
ASSERT_EQ(tree.NumFeatures(), n_features);
|
||||
|
||||
dmlc::TemporaryDirectory tempdir;
|
||||
const std::string tmp_file = tempdir.path + "/tree.model";
|
||||
@ -27,7 +26,7 @@ TEST(Tree, ModelShape) {
|
||||
RegTree new_tree;
|
||||
std::unique_ptr<dmlc::Stream> fi(dmlc::Stream::Create(tmp_file.c_str(), "r"));
|
||||
new_tree.Load(fi.get());
|
||||
ASSERT_EQ(new_tree.param.num_feature, n_features);
|
||||
ASSERT_EQ(new_tree.NumFeatures(), n_features);
|
||||
}
|
||||
{
|
||||
// json
|
||||
@ -39,7 +38,7 @@ TEST(Tree, ModelShape) {
|
||||
|
||||
auto j_loaded = Json::Load(StringView{dumped.data(), dumped.size()});
|
||||
new_tree.LoadModel(j_loaded);
|
||||
ASSERT_EQ(new_tree.param.num_feature, n_features);
|
||||
ASSERT_EQ(new_tree.NumFeatures(), n_features);
|
||||
}
|
||||
{
|
||||
// ubjson
|
||||
@ -51,7 +50,7 @@ TEST(Tree, ModelShape) {
|
||||
|
||||
auto j_loaded = Json::Load(StringView{dumped.data(), dumped.size()}, std::ios::binary);
|
||||
new_tree.LoadModel(j_loaded);
|
||||
ASSERT_EQ(new_tree.param.num_feature, n_features);
|
||||
ASSERT_EQ(new_tree.NumFeatures(), n_features);
|
||||
}
|
||||
}
|
||||
|
||||
@ -488,8 +487,7 @@ TEST(Tree, JsonIO) {
|
||||
|
||||
RegTree loaded_tree;
|
||||
loaded_tree.LoadModel(j_tree);
|
||||
ASSERT_EQ(loaded_tree.param.num_nodes, 3);
|
||||
|
||||
ASSERT_EQ(loaded_tree.NumNodes(), 3);
|
||||
ASSERT_TRUE(loaded_tree == tree);
|
||||
|
||||
auto left = tree[0].LeftChild();
|
||||
|
||||
@ -37,8 +37,7 @@ class UpdaterTreeStatTest : public ::testing::Test {
|
||||
: CreateEmptyGenericParam(Context::kCpuId));
|
||||
auto up = std::unique_ptr<TreeUpdater>{TreeUpdater::Create(updater, &ctx, &task)};
|
||||
up->Configure(Args{});
|
||||
RegTree tree;
|
||||
tree.param.num_feature = kCols;
|
||||
RegTree tree{1u, kCols};
|
||||
std::vector<HostDeviceVector<bst_node_t>> position(1);
|
||||
up->Update(¶m, &gpairs_, p_dmat_.get(), position, {&tree});
|
||||
|
||||
@ -95,16 +94,14 @@ class UpdaterEtaTest : public ::testing::Test {
|
||||
param1.Init(Args{{"eta", "1.0"}});
|
||||
|
||||
for (size_t iter = 0; iter < 4; ++iter) {
|
||||
RegTree tree_0;
|
||||
RegTree tree_0{1u, kCols};
|
||||
{
|
||||
tree_0.param.num_feature = kCols;
|
||||
std::vector<HostDeviceVector<bst_node_t>> position(1);
|
||||
up_0->Update(¶m0, &gpairs_, p_dmat_.get(), position, {&tree_0});
|
||||
}
|
||||
|
||||
RegTree tree_1;
|
||||
RegTree tree_1{1u, kCols};
|
||||
{
|
||||
tree_1.param.num_feature = kCols;
|
||||
std::vector<HostDeviceVector<bst_node_t>> position(1);
|
||||
up_1->Update(¶m1, &gpairs_, p_dmat_.get(), position, {&tree_1});
|
||||
}
|
||||
|
||||
Loading…
x
Reference in New Issue
Block a user