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Kind: captions Language: en so what concept or theorem in linear algebra or in math you find most beautiful it gives you pause that leaves you and oh well I'll stick with linear algebra here I hope that viewer knows that really mathematics is amazing amazing subject and deep deep connections between ideas that didn't look connected something they turned out they were but if we stick with linear algebra so we have a matrix that's like the basic thing a rectangle of numbers and might be a rectangle of data you're probably going to ask me later about data science where and often data comes in a matrix you have you know maybe every column corresponds to a to a drug in every row corresponds to a patient and and if the patient reacted favorably to the drug then you put up some positive number in there anyway rectangle of numbers a matrix is basic so the big problem is to understand all those numbers you got a big big set of numbers and what are the patterns what's going on and so one of the ways to break down that matrix into simple pieces is uses something called singular values and that's come on as fundamental in the last and certainly in my lifetime I can values bro you if you have viewers who've done engineering math or or or basically in your algebra eigen values were in there but those are restricted to square matrices and data comes in rectangular matrices so you got to take that you got to take that next step I'm I'm always pushing math faculty get on do it don't do it do it singular values so those are a way to break too to make to find these the important pieces of the matrix which add up to the whole matrix so so you're breaking a matrix into simple pieces and the first piece is the most important part of the data the second piece is the second most important part and then often so a data scientist will like if you if a data scientist can find those first and second pieces stop there the rest of of the data is probably round off you know we're experimental error maybe so you're looking for the important part yeah so what do you find beautiful about singular values well yeah I didn't give the theorem so here's the here's the idea of singular values every matrix every matrix rectangular square whatever you can be written as a product of three very simple special matrices so that's the theorem every matrix can be written as a rotation times a stretch which is just a matrix diagonal matrix otherwise all zeros except on the one diagonal and then a third and the third factor is another rotation so rotation stretch rotation is the breakup of a of any matrix the structure that the ability that you can do that what do you find appealing what do you find beautiful bottom well geometrically as I freely admit the mate action of a matrix this is not so easy to visualize but everybody can visualize a rotation take-take-take two-dimensional space and just turn it around the around the center take three dimensional space so a pilot has to know about well what are the three the yaw is one of them I've forgotten all the three turns that a pilot makes up to ten dimensions you've got ten ways to turn but you can visualize a rotation take this base and turn it and you can visualize a stretch so to break a matrix with all those numbers in it into something you can visualize rotate stretch rotate is pretty neat pretty neat that's pretty powerful you
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