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Scala for Machine Learning, Second Edition

You're reading from   Scala for Machine Learning, Second Edition Build systems for data processing, machine learning, and deep learning

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Product type Paperback
Published in Sep 2017
Publisher Packt
ISBN-13 9781787122383
Length 740 pages
Edition 2nd Edition
Languages
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Author (1):
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Patrick R. Nicolas Patrick R. Nicolas
Author Profile Icon Patrick R. Nicolas
Patrick R. Nicolas
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Table of Contents (21) Chapters Close

Preface 1. Getting Started FREE CHAPTER 2. Data Pipelines 3. Data Preprocessing 4. Unsupervised Learning 5. Dimension Reduction 6. Naïve Bayes Classifiers 7. Sequential Data Models 8. Monte Carlo Inference 9. Regression and Regularization 10. Multilayer Perceptron 11. Deep Learning 12. Kernel Models and SVM 13. Evolutionary Computing 14. Multiarmed Bandits 15. Reinforcement Learning 16. Parallelism in Scala and Akka 17. Apache Spark MLlib A. Basic Concepts B. References Index

Expectation-Maximization (EM)

The EM was originally introduced to estimate the maximum likelihood in the case of incomplete data [4:7]. The EM algorithm is an iterative method to compute the model features that maximize the likely estimate for observed values, considering unobserved values.

The iterative algorithm consists of computing:

  • The expectation, E, of the maximum likelihood for the observed data by inferring the latent values (E-step)
  • The model features that maximize the expectation E (M-step)

The EM algorithm is applied to solve clustering problems by if each latent variable follows a Normal or Gaussian distribution. This is similar to the K-means algorithm for which the distance of each data point to the center of each cluster follows a Gaussian distribution [4:8]. Therefore, a set of latent variables is a mixture of Gaussian distributions.

Gaussian mixture model

Latent variables, Zi can be visualized as the behavior (or symptoms) of a model (observed), X, for which Z are the root-cause...

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