O'Reilly logo

Deep Learning with TensorFlow - Second Edition by Md. Rezaul Karim, Giancarlo Zaccone

Stay ahead with the world's most comprehensive technology and business learning platform.

With Safari, you learn the way you learn best. Get unlimited access to videos, live online training, learning paths, books, tutorials, and more.

Start Free Trial

No credit card required

Chapter 6. Recurrent Neural Networks

A RNN is a class of ANN where connections between units form a directed cycle. RNNs make use of information from the past. That way, they can make predictions in data with high temporal dependencies. This creates an internal state of the network, which allows it to exhibit dynamic temporal behavior. In this chapter, we will develop several real-life predictive models, using RNNs and their architectural variants, to make predictive analytics easier.

First, we will provide some theoretical background of RNNs. Then we will look at a few examples that will show a systematic way of implementing predictive models for image classification, sentiment analysis of movies, and spam predictions for Natural Language Processing ...

With Safari, you learn the way you learn best. Get unlimited access to videos, live online training, learning paths, books, interactive tutorials, and more.

Start Free Trial

No credit card required