Book Image

Hands-on Machine Learning with JavaScript

Book Image

Hands-on Machine Learning with JavaScript

Overview of this book

In over 20 years of existence, JavaScript has been pushing beyond the boundaries of web evolution with proven existence on servers, embedded devices, Smart TVs, IoT, Smart Cars, and more. Today, with the added advantage of machine learning research and support for JS libraries, JavaScript makes your browsers smarter than ever with the ability to learn patterns and reproduce them to become a part of innovative products and applications. Hands-on Machine Learning with JavaScript presents various avenues of machine learning in a practical and objective way, and helps implement them using the JavaScript language. Predicting behaviors, analyzing feelings, grouping data, and building neural models are some of the skills you will build from this book. You will learn how to train your machine learning models and work with different kinds of data. During this journey, you will come across use cases such as face detection, spam filtering, recommendation systems, character recognition, and more. Moreover, you will learn how to work with deep neural networks and guide your applications to gain insights from data. By the end of this book, you'll have gained hands-on knowledge on evaluating and implementing the right model, along with choosing from different JS libraries, such as NaturalNode, brain, harthur, classifier, and many more to design smarter applications.
Table of Contents (14 chapters)

Word embedding and neural networks

Throughout this chapter, we've discussed various NLP techniques, particularly with regards to preprocessing text. In many use cases, we will need to interact with an ANN to perform the final analysis. The type of analysis is not relevant to this section, but imagine you're developing a sentiment analysis ANN. You appropriately tokenize and stem your training text, then, as you attempt to train your ANN on your preprocessed text, you realize you have no idea how to get words into a neural network.

The simplest approach is to map each input neuron in the network to an individual unique word. When processing a document, you can set the input neuron's value to the term frequency (or absolute count) of that word in the document. You'll have a network where one input neuron responds to the word fashion, another neuron responds to...