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Classification methods for students and professionals. Learn k-Nearest Neighbors & Bayes Classification & code in python
An excellent training about Data Science
Artificial Intelligence #3:kNN & Bayes Classification method
In this Course you learnk-Nearest Neighbors & Naive Bayes Classification Methods. In pattern recognition, the k-nearest neighbors algorithm (k-NN) is a non-parametric method used for classification and regression.k-NN is a type of instance-based learning, or lazy learning, where the function is only approximated locally and all computation is deferred until classification. The k-NN algorithm is among the simplest of all machine learning algorithms. For classification, a useful technique can be to assign weight to the contributions of the neighbors, so that the nearer neighbors contribute more to the average than the more distant ones. The neighbors are taken from a set of objects for which the class (for k-NN classification).This can be thought of as the training set for the algorithm, though no explicit training step is required. In machine learning, naive Bayes classifiers are a family of simple probabilistic classifiers based on applying Bayes’ theorem with strong (naive) independence assumptions between the features. Naive Bayes classifiers are highly scalable, requiring a number of parameters linear in the number of variables (features/predictors) in a learning problem. Maximum-likelihood training can be done by evaluating a closed-form expression, which takes linear time, rather than by expensive iterative approximation as used for many other types of classifiers. In the statistics and computer science literature, Naive Bayes models are known under a variety of names, including simple Bayes and independence Bayes. All these names reference the use of Bayes’ theorem in the classifier’s decision rule, but naive Bayes is not (necessarily) a Bayesian method. In this course you learn how to classify datasets byk-Nearest Neighbors Classification Methodto find the correct class for data and reduce error. Thenyou go furtherYou will learn how to classify output of model by usingNaive BayesClassification Method. In the first section you learn how to use python to estimate output of your system. In this section you can classify: Python DatasetIRIS FlowersMake your own k Nearest Neighbors AlgorithmIn the Second section you learn how to use python to classifyoutput of your system with nonlinear structure. In this section you can classify: IRIS FlowersPima Indians Diabetes DatabaseMake your own Naive Bayes Algorithm Important information before you enroll: In case you find the course useless for your career, don’t forget you are covered by a30 day money back guarantee, full refund, no questions asked! Once enrolled, you haveunlimited, lifetime access to the course! You will haveinstant and free access to any updatesI’ll add to the course.I will give youmy full supportregarding any issues or suggestions related to the course. Check out the curriculum andFREE PREVIEWlecturesfor a quick insight. It’s time to takeAction! Click the “Take This Course” button at the top right now. Don’t waste time! Every second of every day is valuable.I can’t wait to see youin the course! Best Regrads, Sobhan
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