-
タイトル:
-
概説:
-
HI, I'm a Mac.
-
>> [LAUGH] No. >> All right, we'll start over.
-
Let's do this right.
-
Hi, I'm Charles Isbeil.
-
>> True.
-
>> I'm a professor at Georgia Tech.
-
>> True.
-
>> This is Michael Littman.
-
>> True. >> He is also a professor at Georgia Tech.
-
>> False.
-
>> No, that's actually true, while you're a professor at Brown,
-
you're also an adjunct professor here at Georgia Tech.
-
I'm a professional donut thief.
-
>> False.
-
>> That is correct I am not a professional.
-
Together, we are teaching the course Machine Learning.
-
>> True.
-
>> The lectures will only be available on prime number calendar days.
-
>> False.
-
>> The mini course is on supervised learning.
-
>> True.
-
>> Supervised learning itself was invented in the 1830s by Gauss.
-
>> False?
-
>> Actually, I don't really know.
-
It sounds like the sort of thing you'd invent but, probably not,
-
so let's go with that.
-
Okay, supervised learning is the problem of learning to map inputs to
-
predictions of true or false.
-
>> False.
-
>> Good one, it also includes other kinds of predictions such as regression,
-
where the output might be vectors or numbers.
-
>> True.
-
>> It's an important component of all sorts of technologies from stopping credit
-
card fraud.
-
>> True. >> To finding faces in camera images.
-
>> True. >> To making taste your breath mints.
-
>> False?
-
>> I have no idea, but that sounded ridiculous so let's say false.
-
To recognizing spoken language.
-
>> True.
-
>> Our goal here is the give you the skills that you need to recognize how to
-
apply these technologies.
-
>> True.
-
>> And for interpreting their output, so
-
that you can solve a range of data science problems.
-
>> True.
-
>> And for surviving a robot uprising.
-
>> False. >> No, that is absolutely true.
-
The most important thing you could get out of this course is learning how to
-
survive the upcoming robot uprising.
-
Okay, very good.
-
You got an accuracy of 85%.
-
>> True.
-
>> Wrong, though after you answer this question,
-
you will have an accuracy of 85%.
-
>> True.
-
>> That is correct, but false also would have been correct.
-
Congratulations.