# Authors: Gilles Louppe # Peter Prettenhofer # Brian Holt # Joel Nothman # Arnaud Joly # Jacob Schreiber # # License: BSD 3 clause # See _criterion.pyx for implementation details. import numpy as np cimport numpy as np from ._tree cimport DTYPE_t # Type of X from ._tree cimport DOUBLE_t # Type of y, sample_weight from ._tree cimport SIZE_t # Type for indices and counters from ._tree cimport INT32_t # Signed 32 bit integer from ._tree cimport UINT32_t # Unsigned 32 bit integer cdef class Criterion: # The criterion computes the impurity of a node and the reduction of # impurity of a split on that node. It also computes the output statistics # such as the mean in regression and class probabilities in classification. # Internal structures cdef const DOUBLE_t[:, ::1] y # Values of y cdef DOUBLE_t* sample_weight # Sample weights cdef SIZE_t* samples # Sample indices in X, y cdef SIZE_t start # samples[start:pos] are the samples in the left node cdef SIZE_t pos # samples[pos:end] are the samples in the right node cdef SIZE_t end cdef SIZE_t n_outputs # Number of outputs cdef SIZE_t n_samples # Number of samples cdef SIZE_t n_node_samples # Number of samples in the node (end-start) cdef double weighted_n_samples # Weighted number of samples (in total) cdef double weighted_n_node_samples # Weighted number of samples in the node cdef double weighted_n_left # Weighted number of samples in the left node cdef double weighted_n_right # Weighted number of samples in the right node cdef double* sum_total # For classification criteria, the sum of the # weighted count of each label. For regression, # the sum of w*y. sum_total[k] is equal to # sum_{i=start}^{end-1} w[samples[i]]*y[samples[i], k], # where k is output index. cdef double* sum_left # Same as above, but for the left side of the split cdef double* sum_right # same as above, but for the right side of the split # The criterion object is maintained such that left and right collected # statistics correspond to samples[start:pos] and samples[pos:end]. # Methods cdef int init(self, const DOUBLE_t[:, ::1] y, DOUBLE_t* sample_weight, double weighted_n_samples, SIZE_t* samples, SIZE_t start, SIZE_t end) nogil except -1 cdef int reset(self) nogil except -1 cdef int reverse_reset(self) nogil except -1 cdef int update(self, SIZE_t new_pos) nogil except -1 cdef double node_impurity(self) nogil cdef void children_impurity(self, double* impurity_left, double* impurity_right) nogil cdef void node_value(self, double* dest) nogil cdef double impurity_improvement(self, double impurity) nogil cdef double proxy_impurity_improvement(self) nogil cdef class ClassificationCriterion(Criterion): """Abstract criterion for classification.""" cdef SIZE_t* n_classes cdef SIZE_t sum_stride cdef class RegressionCriterion(Criterion): """Abstract regression criterion.""" cdef double sq_sum_total