R Deep Learning Essentials

Author: Dr. Joshua F. Wiley  

Publisher: Packt Publishing‎

Publication year: 2016

E-ISBN: 9781785284717

P-ISBN(Paperback): 9781785280580

Subject: TP3 Computers;TP39 computer application

Keyword: 算法理论,计算机软件,自动化技术、计算机技术,计算机的应用,计算技术、计算机技术

Language: ENG

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Description

Build automatic classification and prediction models using unsupervised learning About This Book • Harness the ability to build algorithms for unsupervised data using deep learning concepts with R • Master the common problems faced such as overfitting of data, anomalous datasets, image recognition, and performance tuning while building the models • Build models relating to neural networks, prediction and deep prediction Who This Book Is For This book caters to aspiring data scientists who are well versed with machine learning concepts with R and are looking to explore the deep learning paradigm using the packages available in R. You should have a fundamental understanding of the R language and be comfortable with statistical algorithms and machine learning techniques, but you do not need to be well versed with deep learning concepts. What You Will Learn • Set up the R package H2O to train deep learning models • Understand the core concepts behind deep learning models • Use Autoencoders to identify anomalous data or outliers • Predict or classify data automatically using deep neural networks • Build generalizable models using regularization to avoid overfitting the training data In Detail Deep learning is a branch of machine learning based on a set of algorithms that attempt to model high-level abstractions in data by using model architectures. With the superb memory management and the full integration with multi-node big data platforms, the H2O engine has become more

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