May 2019
Intermediate to advanced
456 pages
11h 38m
English
Over the course of this book, we will build powerful neural networks that are able to approximate extremely complex functions. We will be mapping text to named entities, images to their content, and even news articles to their summaries. But for now, we will work with a simple problem that can be solved with logistic regression, a popular technique used in both economics and finance.
We will be working with a simple problem. Given an input matrix, X, we want to output the first column of the matrix, X1. In this example, we will be approaching the problem from a mathematical perspective in order to gain some intuition for what is going on.
Later on in this chapter, we will implement what we have described in Python. We already know ...