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Free Python Code examples at DataSimple.education https://www.datasimple.education/ml-s... Which is the best Sklearn ML model Decision Trees: Decision trees are hierarchical structures that make decisions based on a sequence of rules. In ensemble methods, they serve as the base models for techniques like Random Forests and Gradient Boosting. Random Forests: Random Forests are an ensemble method that builds multiple decision trees and combines their predictions. They are known for their robustness and ability to handle high-dimensional data. Gradient Boosting: Gradient Boosting is another ensemble technique that builds decision trees sequentially, where each tree corrects the errors of its predecessor. This method is powerful but can be prone to overfitting if not properly tuned. Support Vector Machines (SVM): SVM is a versatile classification algorithm that aims to find the optimal hyperplane to separate data points. It's often used for binary classification tasks and can be included in ensemble methods to boost performance. K-Nearest Neighbors (K-NN): K-NN is a simple yet effective algorithm for classification and regression. It predicts by considering the majority class of its k-nearest neighbors. It's not a traditional choice for ensemble methods but can be combined with others. Naive Bayes: Naive Bayes is a probabilistic algorithm that's particularly useful for text classification and spam detection. It's not a typical choice for ensembles, as its assumptions may not align well with other models. Logistic Regression: Logistic regression is widely used for binary classification problems. It models the probability of a binary outcome and can be part of an ensemble method in certain scenarios. Connect with Data Science teacher Brandyn https://www.datasimple.education/one-... on facebook / datascienceteacherbrandyn on linkedin / 87118408 Python Ai-Enhanced Bootcamps https://www.datasimple.education/boot... Ai Art Collections https://www.datasimple.education/data... dataArt Showcase at DataSimple.education https://www.datasimple.education/data... Showcase your DataArt linkedin / 1038628576726134 Showcase your DataArt facebook / 12736236 #seaborn #python #dataanalytics #project #dataanalysis #machinelearning #ML #code #teacher #data #dataanalysis #machinelearning #deeplearning #python #learnpython #learndatascience #DataSimple #artificialintelligence #ai #nueralnetwork #datascience