- R Deep Learning Projects
- Yuxi (Hayden) Liu Pablo Maldonado
- 310字
- 2021-06-24 19:26:50
What this book covers
Chapter 1, Handwritten Digit Recognition Using Convolutional Neural Networks, is where we start working on the first project of the book. We will begin with a recap of logistic regression and multilayer perceptron. We'll solve the problem with these two algorithms. We will then move on to the biologically inspired variants of multilayer perceptron—convolutional neural networks (CNNs). We will also cover the basics and core concepts of deep learning.
Chapter 2, Traffic Sign Recognition for Intelligent Vehicles, explains how to use CNNs for another application—traffic sign detection. We will also cover several important concepts of deep learning in this chapter and get readers familiar with other popular frameworks and libraries, such as Keras and TensorFlow. We will also introduce the dropout technique as a regularization approach and utilize data augmentation techniques to deal with a lack of training data.
Chapter 3, Fraud Detection with Autoencoders, introduces a type of deep learning model that can be used for anomaly detection. Outliers can be found within a collection of images, a text corpus, or transactional data. We will dive into applications of autoencoders and how they can be used for outlier detection in this domain.
Chapter 4, Text Generation Using Recurrent Neural Networks, introduces different models of neural networks that try to capture the elusive properties of memory and abstraction to produce powerful models. We will apply different methods to tackle the text generation problem and suggest directions of further exploration.
Chapter 5, Sentiment Analysis with Word Embeddings, shows how to use the popular GloVe algorithm for sentiment analysis, as well as other, less abstract tools. Although this algorithm is, strictly speaking, not a deep learning application, it belongs to the modern (as of 2018) toolkit of the data scientist, and it can be combined with other deep learning techniques.
- 大學計算機基礎:基礎理論篇
- 構(gòu)建高質(zhì)量的C#代碼
- TIBCO Spotfire:A Comprehensive Primer(Second Edition)
- 機器自動化控制器原理與應用
- Windows游戲程序設計基礎
- Apache Superset Quick Start Guide
- 愛犯錯的智能體
- 工業(yè)機器人維護與保養(yǎng)
- Applied Data Visualization with R and ggplot2
- 液壓機智能故障診斷方法集成技術
- 從零開始學JavaScript
- 基于Proteus的單片機應用技術
- 簡明學中文版Photoshop
- Mastering OpenStack(Second Edition)
- 工業(yè)機器人操作