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Mastering Machine Learning Algorithms

Mastering Machine Learning Algorithms - Second Edition

By : Giuseppe Bonaccorso, Bonaccorso
4 (12)
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Mastering Machine Learning Algorithms

Mastering Machine Learning Algorithms

4 (12)
By: Giuseppe Bonaccorso, Bonaccorso

Overview of this book

Mastering Machine Learning Algorithms, Second Edition helps you harness the real power of machine learning algorithms in order to implement smarter ways of meeting today's overwhelming data needs. This newly updated and revised guide will help you master algorithms used widely in semi-supervised learning, reinforcement learning, supervised learning, and unsupervised learning domains. You will use all the modern libraries from the Python ecosystem – including NumPy and Keras – to extract features from varied complexities of data. Ranging from Bayesian models to the Markov chain Monte Carlo algorithm to Hidden Markov models, this machine learning book teaches you how to extract features from your dataset, perform complex dimensionality reduction, and train supervised and semi-supervised models by making use of Python-based libraries such as scikit-learn. You will also discover practical applications for complex techniques such as maximum likelihood estimation, Hebbian learning, and ensemble learning, and how to use TensorFlow 2.x to train effective deep neural networks. By the end of this book, you will be ready to implement and solve end-to-end machine learning problems and use case scenarios.
Table of Contents (28 chapters)
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26
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Index

Optimizing Neural Networks

In this chapter, we're going to discuss the most important optimization algorithms that have been derived from the basic Stochastic Gradient Descent (SGD) approach. This method can be quite ineffective when working with very high-dimensional functions, forcing the models to remain stuck in sub-optimal solutions. The optimizers discussed in this chapter have the goals of speeding up convergence and avoiding any sub-optimality. Moreover, we'll also discuss how to apply L1 and L2 regularization to a layer of a deep neural network, and how to avoid overfitting using these advanced approaches.

In particular, the topics covered in the chapter are as follows:

  • Optimized SGD algorithms (Momentum, RMSProp, Adam, AdaGrad, and AdaDelta)
  • Regularization techniques and dropout
  • Batch normalization

After having discussed the basic concepts of neural modeling in the previous chapter, we can now start discussing how to improve the...

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