I actually stayed up two nights to watch the Rangers play, since Im rather fan of Henrik Lundqvist, he's more or less the reason Sweden got to the finals of the past 10 years worth of world cups and olympics
I just wasn't sure about the programming of an n64 game and what it requires from the connectors.. I guess what I am saying is that I don't know from an electronics standpoint how the games are coded
@AndrasDeak today is hockey day, this weekend I'll have to do SO MUCH homework... I missed the first two weeks because my books didnt arrive till yesterday
@Adriaan I can get you a link for this book if you send me an email to deak dot andris not-at-but-some-other-character-against-bots-which-is-supposed-to-be-here before gmail
they're not even walking... their legs slide across the floor lol
Actually they're bended on one knee and they're sliding.
anyone ever teach you the remote mine detonate trick?
You throw a remote mine, and instead of waiting to take your watch out to detonate it, there's a shortcut button stroke you can use to detonate it in midair.
I was banned from using it. My buddies got pissed off lol
very useful when you're above ground and everyone else is fighting on the floor
How about this edit: stackoverflow.com/questions/32637615/… someone accepted my edit, since it was good, but then proceeded to create a single highlight out of the complete bottom half of the question
pff, imho highlights are to stress certain parts. If you stress the whole question it's completely superfluous and feels like you're shouting or trying to represent a disco in full swing
I think it's about classification - "if there's a feature x that perfectly predicts y, whenever x < c for some constant c, then linear regression will obtain zero classification error"
It's on a quiz for machine learning but this is only 3 weeks in and I've never heard that term in my life
So minimizing this cost function with regularization in ensures that not only is the cost minimized, but the parameters you used to minimize this cost function are in such a way that prevent the model from being overfit.
@OneRaynyDay - Correct.
Overfitting is usually caused by highly varying features.
If you take these features and penalize them where a small increase in these parameters makes the cost function skyrocket, it minimizes their contribution to the final parameter output.
it's square because you don't want any negative values
because your parameters have the possibility of being negative, and so not removing the negative gives you false indication that the error is going down
You want the parameters to be small, and so squaring is one approach.
the absolute value is another approach, but computing the gradient of an absolute value is a pretty shitty thing to do lol
Squaring is much better as you'll remember from Calculus.
In fact, the absolute value is not a convex function, so gradient descent is probably not well suited for it
The second-order (parabola) is definitely convex because there's one unique minimum.
It isn't convex because there is a first-order discontinuity right at x=0, because the slope changes instantaneously... but I'm digressing :)
room topic changed to MATLAB and Octave: Room to discuss MATLAB and Octave related topics - Divakar: Putting the "fun" back in bsxfun... one SO question at a time [matlab] [octave]
@OneRaynyDay - Yeah. The gradient of the absolute value is not defined at x=0 so it will cause problems when using gradient descent or other cost minimization techniques.
I'm looking for Chuck Norris Facts style answers. In case anyone is curious, this question was inspired by Jon's own comment to this question.
EDIT: If you're into cryptography, you may enjoy these facts.
Now with official sanction from the powers that be!
Simply put: no and no.
You can try to access the actual .m-file (e.g. open(fitgmdist)) and try to copy it and then edit it to your purposes, but there is no straight-forward implemented way to obtain the two things you want.
I would like to point you to the OpenCV documentation on the cv2.idft function: http://docs.opencv.org/modules/core/doc/operations_on_arrays.html#idft . There is a note at the end of it, which says:
Note: None of dft and idft scales the result by default. So, you should pass DFT_SCALE to on...
I had an equally embarrassing question from my boss today. He thought my program had a bug because the class "vegetation" was completely set tot NaN. So I checked, and checked, and checked, and eventually found out that in the classification he wrote "vegitation" and in the plot he wrote "vegetation", so the strcmp threw a false and deleted the whole lot.