Next, the network is asked to solve a problem, which it attempts to do over and over, each time strengthening the connections that lead to success and diminishing those that lead to failure. Humans instruct a computer to solve a problem by specifying each and every step through many lines of code. But with machine learning and neural networks , you can let the computer try to solve the problem itself.
A neural network is a function that learns the expected output for a given input from training datasets. That sai we still recommend starting with ReLU. Now our model has all the standard components of what people usually mean when they say neural network : A set of nodes, analogous to neurons, organized in layers. The two models we will use here are the Inception-vand Inception-v4.
In essence, neural networks learn the appropriate feature crosses for you. Because this tutorial uses the Keras Sequential API, creating and training our model will take just a few lines of code. Tensor Networks in a Nutshell.
What is a neural tensor network? Deep neural networks are used to perform complex machine learning tasks such as image recognition, handwriting recognition, Natural language processing, chatbots, and more. These neural networks are trained to learn the tasks it is supposed to perform.