Introduction to deep learning using R : a step-by-step guide to learning and implementing deep learning models using R
著者
書誌事項
Introduction to deep learning using R : a step-by-step guide to learning and implementing deep learning models using R
(Books for professionals by professionals)
Apress , Springer Science+Business Media [distributor], c2017
- : pbk
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注記
Includes index
内容説明・目次
内容説明
Understand deep learning, the nuances of its different models, and where these models can be applied.
The abundance of data and demand for superior products/services have driven the development of advanced computer science techniques, among them image and speech recognition. Introduction to Deep Learning Using R provides a theoretical and practical understanding of the models that perform these tasks by building upon the fundamentals of data science through machine learning and deep learning. This step-by-step guide will help you understand the disciplines so that you can apply the methodology in a variety of contexts. All examples are taught in the R statistical language, allowing students and professionals to implement these techniques using open source tools.
What You'll Learn
Understand the intuition and mathematics that power deep learning models
Utilize various algorithms using the R programming language and its packages
Use best practices for experimental design and variable selection
Practice the methodology to approach and effectively solve problems as a data scientist
Evaluate the effectiveness of algorithmic solutions and enhance their predictive power
Who This Book Is For
Students, researchers, and data scientists who are familiar with programming using R. This book also is also of use for those who wish to learn how to appropriately deploy these algorithms in applications where they would be most useful.
目次
Chapter 1: What is Deep Learning?
Chapter Goal: Review the history of Deep Learning, how where the field is today, and discuss the general goals that the book has for the reader in their progression.
No of pages 10
Chapter 2: A Review of Notation, Vectors and Matrices
Chapter Goal: Establish a sense of understanding in the aforementioned topics within the reader to allow them to understand the models described later. Topics discussed includes the following: Notation, vectors, matrices, inner products, norms, and linear equations.
No of Pages: 50
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Chapter 3: A Review of Optimization
Chapter Goal: Discuss/Review Optimization concepts and how it is used in Deep Learning models. Topics discussed include the following: constrained and unconstrained optimization, gradient descent, and newton's method.
No of pages : 60
Chapter 4: Single Layer Artificial Neural Network (ANNs)
Chapter Goal: Introduce readers to ANNs, it's uses, the math that powers the model, as well as discussing its limitations
No of pages: 10
Chapter 5: Deep Neural Networks (Multi-layer ANNs)
Chapter Goal: Establish the difference between single and multilayer ANNs as well as discuss the nuances that are created as a product of having multiple hidden layers
No of pages: 10
Chapter 6: Convolutional Neural Networks (CNNs)
Chapter Goal: Build upon the knowledge of neural networks described earlier and begin to branch in the other models, such as CNNs. Here, we will establish what a convolutional layer is, in addition to what the uses of this model are, such as computer vision and processing visual data.
No of pages: 10
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Chapter 7: Recurrent Neural Networks (RNNs)
Chapter Goal: Describe the mathematics and intuition behind RNNs and their use cases, such as handwriting recognition and speech recognition. Also describe how the unique structure behind them differentiates themselves from feed forward networks.
No of pages: 10
Chapter 8: Deep Belief Networks and Deep Boltzman Machines
Chapter Goal: Discuss the similarities between these two models and how their disadvantages and advantages in contrast to the prior Deep Learning Models described
No. of pages: 20
Chapter 9: Tuning and Training Deep Network Architectures
Chapter Goal: Establish an understanding of how to properly train Deep Network models and tune their parameters as to avoid common pitfalls such as overfitting.
No. of Pages: 20
Chapter 10: Experimental Design and Variable Selection
Chapter Goal: Now that the reader has an understanding of various Deep Learning Models, and the concepts that power them, it is time to establish an understanding of how to properly perform experiments, including the examples given in the later part of the text. Topics discussed include the following: Fisher's priciples, Plackett-Burman designs, statistical control, and variable selection techniques.No. of Pages: 60
Chapter 11: Example Problems
Chapter Goal: In this Chapter, the user will be given questions and detailed answer guides in solving the supervised and unsupervised learning example problems. Problems covered are the following: Regression, Classification, and Image Recognition.
No of Pages: 60
Chapter 12: Conclusion and Closing Commentary
Chapter Goal: Give readers recommendations on what resources they should seek moving forward given specific interests, as well as recommendations for what tools they should use related to R.
No. of Pages: 5
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