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Scala for Machine Learning, Second Edition

Scala for Machine Learning, Second Edition

By : R. Nicolas
4.5 (2)
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Scala for Machine Learning, Second Edition

Scala for Machine Learning, Second Edition

4.5 (2)
By: R. Nicolas

Overview of this book

The discovery of information through data clustering and classification is becoming a key differentiator for competitive organizations. Machine learning applications are everywhere, from self-driving cars, engineering design, logistics, manufacturing, and trading strategies, to detection of genetic anomalies. The book is your one stop guide that introduces you to the functional capabilities of the Scala programming language that are critical to the creation of machine learning algorithms such as dependency injection and implicits. You start by learning data preprocessing and filtering techniques. Following this, you'll move on to unsupervised learning techniques such as clustering and dimension reduction, followed by probabilistic graphical models such as Naïve Bayes, hidden Markov models and Monte Carlo inference. Further, it covers the discriminative algorithms such as linear, logistic regression with regularization, kernelization, support vector machines, neural networks, and deep learning. You’ll move on to evolutionary computing, multibandit algorithms, and reinforcement learning. Finally, the book includes a comprehensive overview of parallel computing in Scala and Akka followed by a description of Apache Spark and its ML library. With updated codes based on the latest version of Scala and comprehensive examples, this book will ensure that you have more than just a solid fundamental knowledge in machine learning with Scala.
Table of Contents (21 chapters)
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20
Index

Summary

Maximizing margin classifiers, such as SVM, are a robust alternative to logistic regression for non-linear models for which appropriate kernel functions exists. Moreover, SVM is less demanding of computation resources for very large datasets.

In a nutshell, this chapter introduces you to the basic concept of kernel functions and the theory and application of SVM classifiers as applied to financial instruments. The chapter concludes with the one-class SVM classification for detecting outliers and an overview of the support vector regression models.

As with other discriminative models, the selection of the optimization method for SVMs has a critical impact not only on the quality of the model, but also on the performance (time complexity) of the training and cross-validation process.

This chapter concludes our overview of discriminative, supervised machine learning models. The next couple of chapters deal with a new universe: evolutionary models and reinforcement learning.

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