Book Image

Deep Learning By Example

Book Image

Deep Learning By Example

Overview of this book

Deep learning is a popular subset of machine learning, and it allows you to build complex models that are faster and give more accurate predictions. This book is your companion to take your first steps into the world of deep learning, with hands-on examples to boost your understanding of the topic. This book starts with a quick overview of the essential concepts of data science and machine learning which are required to get started with deep learning. It introduces you to Tensorflow, the most widely used machine learning library for training deep learning models. You will then work on your first deep learning problem by training a deep feed-forward neural network for digit classification, and move on to tackle other real-world problems in computer vision, language processing, sentiment analysis, and more. Advanced deep learning models such as generative adversarial networks and their applications are also covered in this book. By the end of this book, you will have a solid understanding of all the essential concepts in deep learning. With the help of the examples and code provided in this book, you will be equipped to train your own deep learning models with more confidence.
Table of Contents (18 chapters)
16
Implementing Fish Recognition

Linear models for classification

In this section, we are going to go through logistic regression, which is one of the widely used algorithms for classification.

What's logistic regression? The simple definition of logistic regression is that it's a type of classification algorithm involving a linear discriminant.

We are going to clarify this definition in two points:

  1. Unlike linear regression, logistic regression doesn't try to estimate/predict the value of the numeric variable given a set of features or input variables. Instead, the output of the logistic regression algorithm is the probability that the given sample/observation belongs to a specific class. In simpler words, let's assume that we have a binary classification problem. In this type of problem, we have only two classes in the output variable, for example, diseased or not diseased. So, the probability...