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B1 中級 英語 18:40 Educational

But what is a neural network? | Deep learning chapter 1

3Blue1Brown · 22,474,667 回視聴 · 追加日 3週間前

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00:04

This is a 3.

00:06

It's sloppily written and rendered at an extremely low resolution of 28x28 pixels,

00:10

but your brain has no trouble recognizing it as a 3.

00:14

And I want you to take a moment to appreciate how

00:16

crazy it is that brains can do this so effortlessly.

00:19

I mean, this, this and this are also recognizable as 3s,

00:22

even though the specific values of each pixel is very different from one

00:27

image to the next.

00:28

The particular light-sensitive cells in your eye that are firing when you

00:32

see this 3 are very different from the ones firing when you see this 3.

00:37

But something in that crazy-smart visual cortex of yours resolves these as representing

00:42

the same idea, while at the same time recognizing other images as their own distinct

00:47

ideas.

00:49

But if I told you, hey, sit down and write for me a program that takes in a grid of

00:54

28x28 pixels like this and outputs a single number between 0 and 10,

00:59

telling you what it thinks the digit is, well the task goes from comically trivial to

01:04

dauntingly difficult.

01:07

Unless you've been living under a rock, I think I hardly need to motivate the relevance

01:10

and importance of machine learning and neural networks to the present and to the future.

01:15

But what I want to do here is show you what a neural network actually is,

01:18

assuming no background, and to help visualize what it's doing,

01:22

not as a buzzword but as a piece of math.

01:25

My hope is that you come away feeling like the structure itself is motivated,

01:28

and to feel like you know what it means when you read,

01:31

or you hear about a neural network quote-unquote learning.

01:35

This video is just going to be devoted to the structure component of that,

01:38

and the following one is going to tackle learning.

01:40

What we're going to do is put together a neural

01:43

network that can learn to recognize handwritten digits.

01:49

This is a somewhat classic example for introducing the topic,

01:52

and I'm happy to stick with the status quo here,

01:54

because at the end of the two videos I want to point you to a couple good

01:57

resources where you can learn more, and where you can download the code that

02:00

does this and play with it on your own computer.

02:05

There are many many variants of neural networks,

02:07

and in recent years there's been sort of a boom in research towards these variants,

02:12

but in these two introductory videos you and I are just going to look at the simplest

02:16

plain vanilla form with no added frills.

02:19

This is kind of a necessary prerequisite for understanding any of the more powerful

02:23

modern variants, and trust me it still has plenty of complexity for us to wrap our minds

02:28

around.

02:29

But even in this simplest form it can learn to recognize handwritten digits,

02:33

which is a pretty cool thing for a computer to be able to do.

02:37

And at the same time you'll see how it does fall

02:39

short of a couple hopes that we might have for it.

02:43

As the name suggests neural networks are inspired by the brain, but let's break that down.

02:48

What are the neurons, and in what sense are they linked together?

02:52

Right now when I say neuron all I want you to think about is a thing that holds a number,

02:58

specifically a number between 0 and 1.

03:00

It's really not more than that.

03:03

For example the network starts with a bunch of neurons corresponding to

03:08

each of the 28x28 pixels of the input image, which is 784 neurons in total.

03:14

Each one of these holds a number that represents the grayscale value of the

03:19

corresponding pixel, ranging from 0 for black pixels up to 1 for white pixels.

03:25

This number inside the neuron is called its activation,

03:28

and the image you might have in mind here is that each neuron is lit up when its

03:32

activation is a high number.

03:36

So all of these 784 neurons make up the first layer of our network.

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