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    R Deep Learning Essentials

    Posted By: AlenMiler
    R Deep Learning Essentials

    R Deep Learning Essentials by Dr. Joshua F. Wiley
    English | Mar. 30, 2016 | ISBN: 1785280589 | 170 Pages | AZW3/MOBI/EPUB/PDF (conv) | 10.04 MB

    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 and more popular among data scientists in the field of deep learning.

    Key Features

    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

    Book Description

    This book will introduce you to the deep learning package H2O with R and help you understand the concepts of deep learning. We will start by setting up important deep learning packages available in R and then move towards building models related to neural networks, prediction, and deep prediction, all of this with the help of real-life examples.

    After installing the H2O package, you will learn about prediction algorithms. Moving ahead, concepts such as overfitting data, anomalous data, and deep prediction models are explained. Finally, the book will cover concepts relating to tuning and optimizing models.

    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

    About the Author

    Dr. Joshua F. Wiley is a lecturer at Monash University and a senior partner at Elkhart Group Limited, a statistical consultancy. He earned his PhD from the University of California, Los Angeles. His research focuses on using advanced quantitative methods to understand the complex interplays of psychological, social, and physiological processes in relation to psychological and physical health. In statistics and data science, Joshua focuses on biostatistics and is interested in reproducible research and graphical displays of data and statistical models. Through consulting at Elkhart Group Limited and his former work at the UCLA Statistical Consulting Group, Joshua has helped a wide array of clients, ranging from experienced researchers to biotechnology companies. He develops or codevelops a number of R packages including varian, a package to conduct Bayesian scale-location structural equation models, and MplusAutomation, a popular package that links R to the commercial Mplus software.

    Table of Contents

    Getting Started with Deep Learning
    Training a Prediction Model
    Preventing Overfitting
    Identifying Anomalous Data
    Training Deep Prediction Models
    Tuning and Optimizing Models
    Bibliography