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Machine Learning Quick Reference

You're reading from   Machine Learning Quick Reference Quick and essential machine learning hacks for training smart data models

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Product type Paperback
Published in Jan 2019
Publisher Packt
ISBN-13 9781788830577
Length 294 pages
Edition 1st Edition
Languages
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Author (1):
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 Kumar Kumar
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Kumar
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Table of Contents (13) Chapters Close

Preface 1. Quantifying Learning Algorithms FREE CHAPTER 2. Evaluating Kernel Learning 3. Performance in Ensemble Learning 4. Training Neural Networks 5. Time Series Analysis 6. Natural Language Processing 7. Temporal and Sequential Pattern Discovery 8. Probabilistic Graphical Models 9. Selected Topics in Deep Learning 10. Causal Inference 11. Advanced Methods 12. Other Books You May Enjoy

Bayesian multiple imputation

Bayesian multiple imputation has got the spirit of the Bayesian framework. It is required to specify a parametric model for the complete data and a prior distribution over unknown model parameters, θ. Subsequently, m independent trials are drawn from the missing data, as given by the observed data using Bayes' Theorem. Markov Chain Monte Carlo can be used to simulate the entire joint posterior distribution of the missing data. BMI follows a normal distribution while generating imputations for the missing values.

Let's say that the data is as follows:

Y = (Yobs, Ymiss),

Here, Yobs is the observed Y and Ymiss is the missing Y.

 If P(Y|θ) is the parametric model, the parameter θ is the mean and the covariance matrix that parameterizes a normal distribution. If this is the case, let P(θ...

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