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Machine Learning with Spark

You're reading from   Machine Learning with Spark Develop intelligent, distributed machine learning systems

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Product type Paperback
Published in Apr 2017
Publisher Packt
ISBN-13 9781785889936
Length 532 pages
Edition 2nd Edition
Languages
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Authors (2):
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Manpreet Singh Ghotra Manpreet Singh Ghotra
Author Profile Icon Manpreet Singh Ghotra
Manpreet Singh Ghotra
Rajdeep Dua Rajdeep Dua
Author Profile Icon Rajdeep Dua
Rajdeep Dua
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Toc

Table of Contents (13) Chapters Close

Preface 1. Getting Up and Running with Spark FREE CHAPTER 2. Math for Machine Learning 3. Designing a Machine Learning System 4. Obtaining, Processing, and Preparing Data with Spark 5. Building a Recommendation Engine with Spark 6. Building a Classification Model with Spark 7. Building a Regression Model with Spark 8. Building a Clustering Model with Spark 9. Dimensionality Reduction with Spark 10. Advanced Text Processing with Spark 11. Real-Time Machine Learning with Spark Streaming 12. Pipeline APIs for Spark ML

Gaussian Mixture Model

A mixture model is a probabilistic model of a sub-population within a population. These models are used to make statistical inferences about a sub-population, given the observations of pooled populations.

A Gaussian Mixture Model (GMM) is a mixture model represented as a weighted sum of Gaussian component densities. Its model coefficients are estimated from training data using the iterative Expectation-Maximization (EM) algorithm or Maximum A Posteriori (MAP) estimation from a trained model.

The spark.ml implementation uses the EM algorithm.

It has the following parameters:

  • k: Number of desired clusters
  • convergenceTol: Maximum change in log-likelihood at which one considers convergence achieved
  • maxIterations: Maximum number of iterations to perform without reaching convergence
  • initialModel: Optional starting point from which to start the EM algorithm
(if this parameter is omitted, a random...
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