2018-12-04
Introduction
What is machine learning
In this video we will try to define what it is and also try to give you a sense of when you want to use machine learning.
Even among machine learning practitioners, there isn't a well accepted definition of what is and what isn't machine learning. But let me show you a couple of examples of the ways that people have tried to define it.
Here's the definition of what is machine learning that is due to Arthur Samuel.
He defined machine learning as the field of study that
gives computers the ability to learn without being explicitly programmed.
Samuel's claim to fame was that back in the 1950's, he wrote a checkers paying program. And the amazing thing about this checkers playing program, was that Arthur Samuel himself, wasn't a very good checkers player. But what he did was, he had a program play tens of thousands of games against itself. And by watching what sorts of board positions tended to lead to wins, and what sort of board positions tended to lead to losses, the checkers playing program learns overtime, what are good board positions and what are bad board positions. And eventually learn to play checkers better than
Arthur Samuel himself was able to. This was a remarkable result. Arthur Samuel himself turned out not to be a very good checkers player. But because the computer has the patience to play tens of thousands of games itself. No human has the patience to play that many games. By doing this the computer was able to get so much checkers-playing experience that it eventually became a better checkers player than Arthur Samuel himself. This is somewhat informal definition, and an older one. Here's a slightly more recent definition by Tom Mitchell, who's a friend in Carnegie Mellon. So Tom defines machine learning by saying that, a well-posed learning problem is defined as follows. He says, a computer program is said to learn from experience E, with respect to some task T,and some performance measure P, if its performance on T as measured by P improves with experience E. Actually think he came up with this definition just to make it rhyme. For the checkers playing example, the experience E will be the experience of having the program play tensor thousands of games against itself. The task T, will be the task of playing checkers. And the performance measure p, will be the probability that it wins the next game of checkers against some new opponent. Throughout these videos, besides me trying to teach you stuff. I will occasionally ask you a question to make sure you understand the content. Here's one. On top is a definition of machine learning by Tom Michell. Let's say your email program watches which email you do or not flag as spam. So in an email client like this you might click this spam button to report some email as spam, but not other emails. Based on which emails you mark as spam, so your e-mail program learns better how to filter spam e-mail. What is the task T in this setting? In a few seconds, the video will pause. And when it does so, you can use your mouse to select one of these four radio buttons to let me know which of these four you think is the right answer to this question. So hopefully you got that this is the right answer. Classifying emails is the task T. In fact, this definition defines task T, performance measure P, and this experience E. And so watching you label emails as spam or not spam, this would be the experience E. And the fraction of emails correctly classified, that might be a performance measure P. And so ,our system's performance on the task T, on the performance measure P will improve after the experience E. In this class I hope to teach you about various different types of learning algorithms. There are several different types of learning algorithms. The main two types are what we call supervised learning and unsupervised learning. I'll define what these terms mean more in the next couple videos. But it turns out that in supervised learning, the idea is that we're going to teach the computer how to do something, whereas in unsupervised learning we're going let it learn by itself.
Don't worry if these two terns don't make sense yet, in the next two videos, I'm going to say exactly what these two types of learning are. You will also hear other buzz terms, such as reinforcement learning and recommender systems. These are other types of machine learning algorithms that we'll talk about later. but the two most used types of learning algorithms are probably supervised learning and unsupervised learning. and I'll define them in the next two videos, and we'll spend most of this class talking about these tow types of learning algorithms. It turns out one of the other things we'll spend a lot of time on in this class is practical advice for applying learning algorithms. This is something that I feel pretty strongly about , and it's actually something that I don't know of any other university teaches. Teaching about learning algorithms is like giving you a set of tools, and equally important or more important to giving you the tools is to teach you how to apply these tools. I like to make an analogy to learning to become a carpenter. Imagine that someone is teaching you how to be a carpenter and they say here's a hammer, here's a screwdriver, here's a saw , gook luck. Well, that's no good, right? You have all these tools, but the more important thing, is to learn how to use have all these tools these tools properly. There's a huge difference between people that know how to use these machines learning algorithms, versus people who don't know how to use these tools well. Here in Silicon Valley where I live, when I go visit different companies, even at the top Silicon Valley companies, very often I see people are trying to apply machine learning algorithms to some problem. And sometimes they have been going at it for six months. But sometimes when I look at what they're doing , I say, you know, I could have tole them like ,gee, I could have told you six months ago. that you should be taking learning algorithms and applying it in like the slightly modified way, and your chance of success would have been much higher. So what we're going todo in this class is actually spend a lot of time talking about how, if you actually tried to develop a machine learning system, how to make those best practices type decisions about the way in which you build your system, so that when you're applying learning algorithm, you're less likely to end up one of those people who end up pursuing some path for six months that, you know someone else could have figured out it just wasn't gonna work at all, and it's just a waste of time for six months. So I'm actually going to spend a lot of the time teaching you those sorts of best practices in machine learning and AI, and how to get this stuff to work and how we do it, how the best people do ti in Silicon Valley and around the world. I hope to make you one of the best people in knowing how to design and build serious machine learning and AI systems. So, that's machine learning and these are the main topics I hope to teach. In the next video ,I'm going to define what is supervised learning and after that, what is unsupervised learning. And also, start to talk about when you would use each of them.