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# frozen_string_literal: true require 'rumale/base/evaluator' require 'rumale/evaluation_measure/precision_recall' module Rumale # This module consists of the classes for model evaluation. module EvaluationMeasure # Precision is a class that calculates the preicision of the predicted labels. # # @example # require 'rumale/evaluation_measure/precision' # # evaluator = Rumale::EvaluationMeasure::Precision.new # puts evaluator.score(ground_truth, predicted) class Precision include ::Rumale::Base::Evaluator include ::Rumale::EvaluationMeasure::PrecisionRecall # Return the average type for calculation of precision. # @return [String] ('binary', 'micro', 'macro') attr_reader :average # Create a new evaluation measure calculater for precision score. # # @param average [String] The average type ('binary', 'micro', 'macro') def initialize(average: 'binary') @average = average end # Calculate average precision. # # @param y_true [Numo::Int32] (shape: [n_samples]) Ground truth labels. # @param y_pred [Numo::Int32] (shape: [n_samples]) Predicted labels. # @return [Float] Average precision def score(y_true, y_pred) case @average when 'binary' precision_each_class(y_true, y_pred).last when 'micro' micro_average_precision(y_true, y_pred) when 'macro' macro_average_precision(y_true, y_pred) end end end end end
Version data entries
8 entries across 8 versions & 1 rubygems