""" Implementation of a basic regression decision tree. Input data set: The input data set must be 1-dimensional with continuous labels. Output: The decision tree maps a real number input to a real number output. """ import numpy as np class DecisionTree: def __init__(self, depth=5, min_leaf_size=5): self.depth = depth self.decision_boundary = 0 self.left = None self.right = None self.min_leaf_size = min_leaf_size self.prediction = None def mean_squared_error(self, labels, prediction): """ mean_squared_error: @param labels: a one-dimensional numpy array @param prediction: a floating point value return value: mean_squared_error calculates the error if prediction is used to estimate the labels >>> tester = DecisionTree() >>> test_labels = np.array([1,2,3,4,5,6,7,8,9,10]) >>> test_prediction = float(6) >>> bool(tester.mean_squared_error(test_labels, test_prediction) == ( ... TestDecisionTree.helper_mean_squared_error_test(test_labels, ... test_prediction))) True >>> test_labels = np.array([1,2,3]) >>> test_prediction = float(2) >>> bool(tester.mean_squared_error(test_labels, test_prediction) == ( ... TestDecisionTree.helper_mean_squared_error_test(test_labels, ... test_prediction))) True """ if labels.ndim != 1: print("Error: Input labels must be one dimensional") return np.mean((labels - prediction) ** 2) def train(self, x, y): """ train: @param x: a one-dimensional numpy array @param y: a one-dimensional numpy array. The contents of y are the labels for the corresponding X values train() does not have a return value Examples: 1. Try to train when x & y are of same length & 1 dimensions (No errors) >>> dt = DecisionTree() >>> dt.train(np.array([10,20,30,40,50]),np.array([0,0,0,1,1])) 2. Try to train when x is 2 dimensions >>> dt = DecisionTree() >>> dt.train(np.array([[1,2,3,4,5],[1,2,3,4,5]]),np.array([0,0,0,1,1])) Traceback (most recent call last): ... ValueError: Input data set must be one-dimensional 3. Try to train when x and y are not of the same length >>> dt = DecisionTree() >>> dt.train(np.array([1,2,3,4,5]),np.array([[0,0,0,1,1],[0,0,0,1,1]])) Traceback (most recent call last): ... ValueError: x and y have different lengths 4. Try to train when x & y are of the same length but different dimensions >>> dt = DecisionTree() >>> dt.train(np.array([1,2,3,4,5]),np.array([[1],[2],[3],[4],[5]])) Traceback (most recent call last): ... ValueError: Data set labels must be one-dimensional This section is to check that the inputs conform to our dimensionality constraints """ if x.ndim != 1: raise ValueError("Input data set must be one-dimensional") if len(x) != len(y): raise ValueError("x and y have different lengths") if y.ndim != 1: raise ValueError("Data set labels must be one-dimensional") if len(x) < 2 * self.min_leaf_size: self.prediction = np.mean(y) return if self.depth == 1: self.prediction = np.mean(y) return best_split = 0 min_error = self.mean_squared_error(x, np.mean(y)) * 2 """ loop over all possible splits for the decision tree. find the best split. if no split exists that is less than 2 * error for the entire array then the data set is not split and the average for the entire array is used as the predictor """ for i in range(len(x)): if len(x[:i]) < self.min_leaf_size: # noqa: SIM114 continue elif len(x[i:]) < self.min_leaf_size: continue else: error_left = self.mean_squared_error(x[:i], np.mean(y[:i])) error_right = self.mean_squared_error(x[i:], np.mean(y[i:])) error = error_left + error_right if error < min_error: best_split = i min_error = error if best_split != 0: left_x = x[:best_split] left_y = y[:best_split] right_x = x[best_split:] right_y = y[best_split:] self.decision_boundary = x[best_split] self.left = DecisionTree( depth=self.depth - 1, min_leaf_size=self.min_leaf_size ) self.right = DecisionTree( depth=self.depth - 1, min_leaf_size=self.min_leaf_size ) self.left.train(left_x, left_y) self.right.train(right_x, right_y) else: self.prediction = np.mean(y) return def predict(self, x): """ predict: @param x: a floating point value to predict the label of the prediction function works by recursively calling the predict function of the appropriate subtrees based on the tree's decision boundary """ if self.prediction is not None: return self.prediction elif self.left or self.right is not None: if x >= self.decision_boundary: return self.right.predict(x) else: return self.left.predict(x) else: print("Error: Decision tree not yet trained") return None class TestDecisionTree: """Decision Tres test class""" @staticmethod def helper_mean_squared_error_test(labels, prediction): """ helper_mean_squared_error_test: @param labels: a one dimensional numpy array @param prediction: a floating point value return value: helper_mean_squared_error_test calculates the mean squared error """ squared_error_sum = float(0) for label in labels: squared_error_sum += (label - prediction) ** 2 return float(squared_error_sum / labels.size) def main(): """ In this demonstration we're generating a sample data set from the sin function in numpy. We then train a decision tree on the data set and use the decision tree to predict the label of 10 different test values. Then the mean squared error over this test is displayed. """ x = np.arange(-1.0, 1.0, 0.005) y = np.sin(x) tree = DecisionTree(depth=10, min_leaf_size=10) tree.train(x, y) rng = np.random.default_rng() test_cases = (rng.random(10) * 2) - 1 predictions = np.array([tree.predict(x) for x in test_cases]) avg_error = np.mean((predictions - test_cases) ** 2) print("Test values: " + str(test_cases)) print("Predictions: " + str(predictions)) print("Average error: " + str(avg_error)) if __name__ == "__main__": main() import doctest doctest.testmod(name="mean_squarred_error", verbose=True)