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B1 중급 영어 17:16 Educational

Eigenvectors and eigenvalues | Chapter 14, Essence of linear algebra

3Blue1Brown · 5,967,369 조회수 · 추가됨 3주 전

학습 통계

B1

CEFR 레벨

5/10

난이도

자막 (228 세그먼트)

00:19

Eigenvectors and eigenvalues is one of those topics

00:22

that a lot of students find particularly unintuitive.

00:25

Questions like, why are we doing this and what does this actually mean,

00:29

are too often left just floating away in an unanswered sea of computations.

00:33

And as I've put out the videos of this series,

00:36

a lot of you have commented about looking forward to visualizing this topic in particular.

00:40

I suspect that the reason for this is not so much that

00:43

eigenthings are particularly complicated or poorly explained.

00:46

In fact, it's comparatively straightforward, and

00:49

I think most books do a fine job explaining it.

00:51

The issue is that it only really makes sense if you have a

00:54

solid visual understanding for many of the topics that precede it.

00:59

Most important here is that you know how to think about matrices as

01:02

linear transformations, but you also need to be comfortable with things

01:06

like determinants, linear systems of equations, and change of basis.

01:10

Confusion about eigenstuffs usually has more to do with a shaky foundation in

01:14

one of these topics than it does with eigenvectors and eigenvalues themselves.

01:19

To start, consider some linear transformation in two dimensions, like the one shown here.

01:25

It moves the basis vector i-hat to the coordinates 3, 0, and j-hat to 1, 2.

01:31

So it's represented with a matrix whose columns are 3, 0, and 1, 2.

01:36

Focus in on what it does to one particular vector,

01:39

and think about the span of that vector, the line passing through its origin and its tip.

01:44

Most vectors are going to get knocked off their span during the transformation.

01:48

I mean, it would seem pretty coincidental if the place where

01:52

the vector landed also happened to be somewhere on that line.

01:57

But some special vectors do remain on their own span,

02:00

meaning the effect that the matrix has on such a vector is just to stretch it or

02:05

squish it, like a scalar.

02:09

For this specific example, the basis vector i-hat is one such special vector.

02:14

The span of i-hat is the x-axis, and from the first column of the matrix,

02:19

we can see that i-hat moves over to 3 times itself, still on that x-axis.

02:26

What's more, because of the way linear transformations work,

02:30

any other vector on the x-axis is also just stretched by a factor of 3,

02:34

and hence remains on its own span.

02:38

A slightly sneakier vector that remains on its own

02:41

span during this transformation is negative 1, 1.

02:44

It ends up getting stretched by a factor of 2.

02:49

And again, linearity is going to imply that any other vector on the diagonal

02:53

line spanned by this guy is just going to get stretched out by a factor of 2.

02:59

And for this transformation, those are all the vectors

03:02

with this special property of staying on their span.

03:05

Those on the x-axis getting stretched out by a factor of 3,

03:08

and those on this diagonal line getting stretched by a factor of 2.

03:12

Any other vector is going to get rotated somewhat during the transformation,

03:16

knocked off the line that it spans.

03:22

As you might have guessed by now, these special vectors are called the eigenvectors of

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