Introduction to Deep Learning
Abstract
This textbook contains no new scientific results, and my only contribution was to
compile existing knowledge and explain it with my examples and intuition. I have
made a great effort to cover everything with citations while maintaining a fluent
exposition, but in the modern world of the ‘electron and the switch’ it is very hard
to properly attribute all ideas, since there is an abundance of quality material online
(and the online world became very dynamic thanks to the social media). I will do
my best to correct any mistakes and omissions for the second edition, and all
corrections and suggestions will be greatly appreciated.
This book uses the feminine pronoun to refer to the reader regardless of the
actual gender identity. Today, we have a highly imbalanced environment when it
comes to artificial intelligence, and the use of the feminine pronoun will hopefully
serve to alleviate the alienation and make the female reader feel more at home while
reading this book.
Throughout this book, I give historical notes on when a given idea was first
discovered. I do this to credit the idea, but also to give the reader an intuitive
timeline. Bear in mind that this timeline can be deceiving, since the time an idea or
technique was first invented is not necessarily the time it was adopted as a technique
for machine learning. This is often the case, but not always.
This book is intended to be a first introduction to deep learning. Deep learning is
a special kind of learning with deep artificial neural networks, although today deep
learning and artificial neural networks are considered to be the same field. Artificial
neural networks are a subfield of machine learning which is in turn a subfield of
both statistics and artificial intelligence (AI). Artificial neural networks are vastly
more popular in artificial intelligence than in statistics. Deep learning today is not
happy with just addressing a subfield of a subfield, but tries to make a run for the
whole AI. An increasing number of AI fields like reasoning and planning, which
were once the bastions of logical AI (also called the Good Old-Fashioned AI, or
GOFAI), are now being tackled successfully by deep learning. In this sense, one
might say that deep learning is an approach in AI, and not just a subfield of a
subfield of AI.