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Mastering Java Machine Learning

You're reading from   Mastering Java Machine Learning A Java developer's guide to implementing machine learning and big data architectures

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Product type Paperback
Published in Jul 2017
Publisher Packt
ISBN-13 9781785880513
Length 556 pages
Edition 1st Edition
Languages
Concepts
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Authors (2):
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Uday Kamath Uday Kamath
Author Profile Icon Uday Kamath
Uday Kamath
Krishna Choppella Krishna Choppella
Author Profile Icon Krishna Choppella
Krishna Choppella
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Table of Contents (13) Chapters Close

Preface 1. Machine Learning Review 2. Practical Approach to Real-World Supervised Learning FREE CHAPTER 3. Unsupervised Machine Learning Techniques 4. Semi-Supervised and Active Learning 5. Real-Time Stream Machine Learning 6. Probabilistic Graph Modeling 7. Deep Learning 8. Text Mining and Natural Language Processing 9. Big Data Machine Learning – The Final Frontier A. Linear Algebra B. Probability Index

Bayes' theorem

The probability of an event E conditioned on evidence X is proportional to the prior probability of the event and the likelihood of the evidence given that the event has occurred. This is Bayes' Theorem:

Bayes' theorem

P(X) is the normalizing constant, which is also called the marginal probability of X. P(E) is the prior, and P(X|E) is the likelihood. P(E|X) is also called the posterior probability.

Bayes' Theorem expressed in terms of the posterior and prior odds is known as Bayes' Rule.

Density estimation

Estimating the hidden probability density function of a random variable from sample data randomly drawn from the population is known as density estimation. Gaussian mixtures and kernel density estimates are examples used in feature engineering, data modeling, and clustering.

Given a probability density function f(X) for a random variable X, the probabilities associated with the values of X can be found as follows:

Density estimation

Density estimation can be parametric, where it is assumed...

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