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  • This is a three. It's sloppily written and rendered at an extremely low resolution of 28 by 28 pixels.

  • But your brain has no trouble recognizing it as a three and I want you to take a moment to appreciate

  • How crazy it is that brains can do this so effortlessly?

  • I mean this this and this are also recognizable as threes,

  • even though the specific values of each pixel is very different from one image to the next.

  • The particular light-sensitive cells in your eye that are firing when you see this three

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

  • But something in that crazy smart visual cortex of yours

  • resolves these as representing the same idea while at the same time recognizing other images as their own distinct ideas

  • But if I told you hey sit down and write for me a program that takes in a grid of 28 by 28

  • pixels like this and outputs a single number between 0 and 10 telling you what it thinks the digit is

  • Well the task goes from comically trivial to dauntingly difficult

  • Unless you've been living under a rock

  • I think I hardly need to motivate the relevance and importance of machine learning and neural networks to the present into the future

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

  • Assuming no background and to help visualize what it's doing not as a buzzword but as a piece of math

  • My hope is just that you come away feeling like this structure itself is

  • Motivated and to feel like you know what it means when you read or you hear about a neural network quote-unquote learning

  • This video is just going to be devoted to the structure component of that and the following one is going to tackle learning

  • What we're going to do is put together a neural network that can learn to recognize handwritten digits

  • This is a somewhat classic example for

  • Introducing the topic and I'm happy to stick with the status quo here because at the end of the two videos I want to point

  • You to a couple good resources where you can learn more and where you can download the code that does this and play with it?

  • on your own computer

  • There are many many variants of neural networks and in recent years

  • There's been sort of a boom in research towards these variants

  • But in these two introductory videos you and I are just going to look at the simplest plain-vanilla form with no added frills

  • This is kind of a necessary

  • prerequisite for understanding any of the more powerful modern variants and

  • Trust me it still has plenty of complexity for us to wrap our minds around

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

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

  • And at the same time you'll see how it does fall short of a couple hopes that we might have for it

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

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

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

  • Specifically a number between 0 & 1 it's really not more than that

  • For example the network starts with a bunch of neurons corresponding to each of the 28 times 28 pixels of the input image

  • which is

  • 784 neurons in total each one of these holds a number that represents the grayscale value of the corresponding pixel

  • ranging from 0 for black pixels up to 1 for white pixels

  • This number inside the neuron is called its activation and the image you might have in mind here

  • Is that each neuron is lit up when its activation is a high number?

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

  • Now jumping over to the last layer this has ten neurons each representing one of the digits

  • the activation in these neurons again some number that's between zero and one

  • Represents how much the system thinks that a given image?

  • Corresponds with a given digit. There's also a couple layers in between called the hidden layers

  • Which for the time being?

  • Should just be a giant question mark for how on earth this process of recognizing digits is going to be handled

  • In this network I chose two hidden layers each one with 16 neurons and admittedly that's kind of an arbitrary choice

  • to be honest I chose two layers based on how I want to motivate the structure in just a moment and

  • 16 well that was just a nice number to fit on the screen in practice

  • There is a lot of room for experiment with a specific structure here

  • The way the network operates activations in one layer determine the activations of the next layer

  • And of course the heart of the network as an information processing mechanism comes down to exactly how those

  • activations from one layer bring about activations in the next layer

  • It's meant to be loosely analogous to how in biological networks of neurons some groups of neurons firing

  • cause certain others to fire

  • Now the network

  • I'm showing here has already been trained to recognize digits and let me show you what I mean by that

  • It means if you feed in an image lighting up all

  • 784 neurons of the input layer according to the brightness of each pixel in the image

  • That pattern of activations causes some very specific pattern in the next layer

  • Which causes some pattern in the one after it?

  • Which finally gives some pattern in the output layer and?

  • The brightest neuron of that output layer is the network's choice so to speak for what digit this image represents?

  • And before jumping into the math for how one layer influences the next or how training works?

  • Let's just talk about why it's even reasonable to expect a layered structure like this to behave intelligently

  • What are we expecting here? What is the best hope for what those middle layers might be doing?

  • Well when you or I recognize digits we piece together various components a nine has a loop up top and a line on the right

  • an 8 also has a loop up top, but it's paired with another loop down low

  • A 4 basically breaks down into three specific lines and things like that

  • Now in a perfect world we might hope that each neuron in the second-to-last layer

  • corresponds with one of these sub components

  • That anytime you feed in an image with say a loop up top like a 9 or an 8

  • There's some specific

  • Neuron whose activation is going to be close to one and I don't mean this specific loop of pixels the hope would be that any

  • Generally loopy pattern towards the top sets off this neuron that way going from the third layer to the last one

  • just requires learning which combination of sub components corresponds to which digits

  • Of course that just kicks the problem down the road

  • Because how would you recognize these sub components or even learn what the right sub components should be and I still haven't even talked about

  • How one layer influences the next but run with me on this one for a moment

  • recognizing a loop can also break down into subproblems

  • One reasonable way to do this would be to first recognize the various little edges that make it up

  • Similarly a long line like the kind you might see in the digits 1 or 4 or 7

  • Well that's really just a long edge or maybe you think of it as a certain pattern of several smaller edges

  • So maybe our hope is that each neuron in the second layer of the network

  • corresponds with the various relevant little edges

  • Maybe when an image like this one comes in it lights up all of the neurons

  • associated with around eight to ten specific little edges

  • which in turn lights up the neurons associated with the upper loop and a long vertical line and

  • Those light up the neuron associated with a nine

  • whether or not

  • This is what our final network actually does is another question, one that I'll come back to once we see how to train the network

  • But this is a hope that we might have. A sort of goal with the layered structure like this

  • Moreover you can imagine how being able to detect edges and patterns like this would be really useful for other image recognition tasks

  • And even beyond image recognition there are all sorts of intelligent things you might want to do that break down into layers of abstraction

  • Parsing speech for example involves taking raw audio and picking out distinct sounds which combine to make certain syllables

  • Which combine to form words which combine to make up phrases and more abstract thoughts etc

  • But getting back to how any of this actually works picture yourself right now designing

  • How exactly the activations in one layer might determine the activations in the next?

  • The goal is to have some mechanism that could conceivably combine pixels into edges

  • Or edges into patterns or patterns into digits and to zoom in on one very specific example

  • Let's say the hope is for one particular

  • Neuron in the second layer to pick up on whether or not the image has an edge in this region here

  • The question at hand is what parameters should the network have

  • what dials and knobs should you be able to tweak so that it's expressive enough to potentially capture this pattern or

  • Any other pixel pattern or the pattern that several edges can make a loop and other such things?

  • Well, what we'll do is assign a weight to each one of the connections between our neuron and the neurons from the first layer

  • These weights are just numbers

  • then take all those activations from the first layer and compute their weighted sum according to these weights I

  • Find it helpful to think of these weights as being organized into a little grid of their own

  • And I'm going to use green pixels to indicate positive weights and red pixels to indicate negative weights

  • Where the brightness of that pixel is some loose depiction of the weights value?

  • Now if we made the weights associated with almost all of the pixels zero

  • except for some positive weights in this region that we care about

  • then taking the weighted sum of

  • all the pixel values really just amounts to adding up the values of the pixel just in the region that we care about

  • And, if you really want it to pick up on whether there's an edge here what you might do is have some negative weights

  • associated with the surrounding pixels

  • Then the sum is largest when those middle pixels are bright, but the surrounding pixels are darker

  • When you compute a weighted sum like this you might come out with any number

  • but for this network what we want is for activations to be some value between 0 & 1

  • so a common thing to do is to pump this weighted sum

  • Into some function that squishes the real number line into the range between 0 & 1 and

  • A common function that does this is called the sigmoid function also known as a logistic curve

  • basically very negative inputs end up close to zero very positive inputs end up close to 1

  • and it just steadily increases around the input 0

  • So the activation of the neuron here is basically a measure of how positive the relevant weighted sum is

  • But maybe it's not that you want the neuron to light up when the weighted sum is bigger than 0

  • Maybe you only want it to be active when the sum is bigger than say 10

  • That is you want some bias for it to be inactive

  • what we'll do then is just add in some other number like negative 10 to this weighted sum

  • Before plugging it through the sigmoid squishification function

  • That additional number is called the bias

  • So the weights tell you what pixel pattern this neuron in the second layer is picking up on and the bias

  • tells you how high the weighted sum needs to be before the neuron starts getting meaningfully active

  • And that is just one neuron

  • Every other neuron in this layer is going to be connected to all

  • 784 pixels neurons from the first layer and each one of those 784 connections has its own weight associated with it

  • also each one has some bias some other number that you add on to the weighted sum before squishing it with the sigmoid and

  • That's a lot to think about with this hidden layer of 16 neurons

  • that's a total of 784 times 16 weights along with 16 biases

  • And all of that is just the connections from the first layer to the second the connections between the other layers

  • Also, have a bunch of weights and biases associated with them

  • All said and done this network has almost exactly

  • 13,000 total weights and biases

  • 13,000 knobs and dials that can be tweaked and turned to make this network behave in different ways

  • So when we talk about learning?

  • What that's referring to is getting the computer to find a valid setting for all of these many many numbers so that it'll actually solve

  • the problem at hand

  • one thought

  • Experiment that is at once fun and kind of horrifying is to imagine sitting down and setting all of these weights and biases by hand

  • Purposefully tweaking the numbers so that the second layer picks up on edges the third layer picks up on patterns etc

  • I personally find this satisfying rather than just reading the network as a total black box

  • Because when the network doesn't perform the way you

  • anticipate if you've built up a little bit of a relationship with what those weights and biases actually mean you have a starting place for

  • Experimenting with how to change the structure to improve or when the network does work?

  • But not for the reasons you might expect

  • Digging into what the weights and biases are doing is a good way to challenge your assumptions and really expose the full space of possible

  • solutions

  • By the way the actual function here is a little cumbersome to write down. Don't you think?

  • So let me show you a more notationally compact way that these connections are represented. This is how you'd see it

  • If you choose to read up more about neural networks

  • Organize all of the activations from one layer into a column as a vector

  • Then organize all of the weights as a matrix where each row of that matrix

  • corresponds to the connections between one layer and a particular neuron in the next layer

  • What that means is that taking the weighted sum of the activations in the first layer according to these weights?

  • Corresponds to one of the terms in the matrix vector product of everything we have on the left here

  • By the way so much of machine learning just comes down to having a good grasp of linear algebra

  • So for any of you who want a nice visual understanding for matrices and what matrix vector multiplication means take a look at the series I did on linear algebra

  • especially chapter three

  • Back to our expression instead of talking about adding the bias to each one of these values independently we represent it by

  • Organizing all those biases into a vector and adding the entire vector to the previous matrix vector product

  • Then as a final step

  • I'll rap a sigmoid around the outside here

  • And what that's supposed to represent is that you're going to apply the sigmoid function to each specific

  • component of the resulting vector inside

  • So once you write down this weight matrix and these vectors as their own symbols you can

  • communicate the full transition of activations from one layer to the next in an extremely tight and neat little expression and

  • This makes the relevant code both a lot simpler and a lot faster since many libraries optimize the heck out of matrix multiplication

  • Remember how earlier I said these neurons are simply things that hold numbers

  • Well of course the specific numbers that they hold depends on the image you feed in

  • So it's actually more accurate to think of each neuron as a function one that takes in the

  • outputs of all the neurons in the previous layer and spits out a number between zero and one

  • Really the entire network is just a function one that takes in

  • 784 numbers as an input and spits out ten numbers as an output

  • It's an absurdly

  • Complicated function one that involves thirteen thousand parameters in the forms of these weights and biases that pick up on certain patterns and which involves

  • iterating many matrix vector products and the sigmoid squish evocation function

  • But it's just a function nonetheless and in a way it's kind of reassuring that it looks complicated

  • I mean if it were any simpler what hope would we have that it could take on the challenge of recognizing digits?

  • And how does it take on that challenge? How does this network learn the appropriate weights and biases just by looking at data? Oh?

  • That's what I'll show in the next video, and I'll also dig a little more into what this particular network we are seeing is really doing

  • Now is the point I suppose I should say subscribe to stay notified about when that video or any new videos come out

  • But realistically most of you don't actually receive notifications from YouTube, do you ?

  • Maybe more honestly I should say subscribe so that the neural networks that underlie YouTube's

  • Recommendation algorithm are primed to believe that you want to see content from this channel get recommended to you

  • anyway stay posted for more

  • Thank you very much to everyone supporting these videos on patreon

  • I've been a little slow to progress in the probability series this summer

  • But I'm jumping back into it after this project so patrons you can look out for updates there

  • To close things off here I have with me Lisha Li

  • Lee who did her PhD work on the theoretical side of deep learning and who currently works at a venture capital firm called amplify partners

  • Who kindly provided some of the funding for this video so Lisha one thing

  • I think we should quickly bring up is this sigmoid function

  • As I understand it early networks used this to squish the relevant weighted sum into that interval between zero and one

  • You know kind of motivated by this biological analogy of neurons either being inactive or active (Lisha) - Exactly

  • (3B1B) - But relatively few modern networks actually use sigmoid anymore. That's kind of old school right ? (Lisha) - Yeah or rather

  • ReLU seems to be much easier to train (3B1B) - And ReLU really stands for rectified linear unit

  • (Lisha) - Yes it's this kind of function where you're just taking a max of 0 and a where a is given by

  • what you were explaining in the video and what this was sort of motivated from I think was a

  • partially by a biological

  • Analogy with how

  • Neurons would either be activated or not and so if it passes a certain threshold

  • It would be the identity function

  • But if it did not then it would just not be activated so be zero so it's kind of a simplification

  • Using sigmoids didn't help training, or it was very difficult to train

  • It's at some point and people just tried relu and it happened to work

  • Very well for these incredibly

  • Deep neural networks. (3B1B) - All right

  • Thank You Lisha

  • for background amplify partners in early-stage VC invests in technical founders building the next generation of companies focused on the

  • applications of AI if you or someone that you know has ever thought about starting a company someday

  • Or if you're working on an early-stage one right now the Amplify folks would love to hear from you

  • they even set up a specific email for this video 3blue1brown@amplifypartners.com

  • so feel free to reach out to them through that

This is a three. It's sloppily written and rendered at an extremely low resolution of 28 by 28 pixels.

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