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stree/trees/Snode.py

71 lines
2.0 KiB
Python

'''
__author__ = "Ricardo Montañana Gómez"
__copyright__ = "Copyright 2020, Ricardo Montañana Gómez"
__license__ = "MIT"
__version__ = "0.9"
Node of the Stree (binary tree)
'''
import os
import numpy as np
from sklearn.svm import LinearSVC
class Snode:
def __init__(self, clf: LinearSVC, X: np.ndarray, y: np.ndarray, title: str):
self._clf = clf
self._vector = None if clf is None else clf.coef_
self._interceptor = 0. if clf is None else clf.intercept_
self._title = title
self._belief = 0. # belief of the prediction in a leaf node based on samples
# Only store dataset in Testing
self._X = X if os.environ.get('TESTING', 'NS') != 'NS' else None
self._y = y
self._down = None
self._up = None
self._class = None
def set_down(self, son):
self._down = son
def set_up(self, son):
self._up = son
def is_leaf(self,) -> bool:
return self._up is None and self._down is None
def get_down(self) -> 'Snode':
return self._down
def get_up(self) -> 'Snode':
return self._up
def make_predictor(self):
"""Compute the class of the predictor and its belief based on the subdataset of the node
only if it is a leaf
"""
# Clean memory
#self._X = None
#self._y = None
if not self.is_leaf():
return
classes, card = np.unique(self._y, return_counts=True)
if len(classes) > 1:
max_card = max(card)
min_card = min(card)
try:
self._belief = max_card / (max_card + min_card)
except:
self._belief = 0.
self._class = classes[card == max_card][0]
else:
self._belief = 1
self._class = classes[0]
def __str__(self) -> str:
if self.is_leaf():
return f"{self._title} - Leaf class={self._class} belief={self._belief:.6f} counts={np.unique(self._y, return_counts=True)}"
else:
return f"{self._title}"