@thewaywewalk: I also never considered Germany a holiday destination - until I went on a road trip and noticed that there is so much stuff to see and do.
@rayryeng I saw that paper long time ago and remembered it just now. It just tries to fit gaussians with different parameters. That's all it is really (for the identification of body parts).
The Compiler Language With No Pronounceable Acronym, abbreviated INTERCAL, is a very unique programming language. Among its unreproducible qualities are its binary operators.
INTERCAL's two binary operators are interleave (also known as mingle), and select. Interleave is represented with a chang...
room topic changed to MATLAB and Octave: Room to discuss MATLAB and Octave related topics - "It's all fun and games until someone loses an i" - Dev-iL on code golfing [matlab] [octave]
A rectangular box, such as a book or a cell phone, thrown in the air can tumble stably about its longest axis, or about its shortest axis, but not about its middle axis.... read more >>
@thewaywewalk - The OP updated his question. It has more information that makes the problem slightly more difficult.
That's the one thing that pisses me off about people who post questions. They put up a question... then 3 minutes later they make an edit that significantly changes the question
Fun fact: for those who pronounce the accum in accumarray as "akoom" and not "akyoom", the word "akoom" has a meaning in Hebrew slang which is something along the lines of: ugly, disproportionate, twisted, crooked
This word has some other meanings as well (like the proper term for a "mathematical curve"; something that is simply not straight; out of the ordinary in a negative way)
@Amro - I've been reading up on some neural networks stuff... but I haven't figured out this question. Hope you don't mind me asking. In neural networks, how do you figure out how many hidden layers you need, and how many neurons per hidden layer? In terms of classification, the first layer makes sense-that's just the dimensionality of your data, and the output layer can be the total number of classes you have, but how do you design how many hidden layers and neurons per hidden layer you need?
BTW, this neural networks stuff is totally unrelated to the deep learning stuff that has surfaced recently lol. This is just for my own interest. I'm getting my knowledge vamped up in machine learning again
the last time I dealt with it was 4 years ago.
hm. it says to choose between the number of input and output layer neurons.. ok.. that makes sense.
but this particular example only has one hidden layer. How many hidden layers should you choose?
or is there some heuristic where you keep increasing layers until some acceptable error tolerance is met?
"You probably noticed that the artificial neural network model generated from the Pattern Recognition Tool has only one hidden layer. You can build a custom model with more layers if you would like, but this simple architecture is sufficient for most common problems."
Is there a standard and accepted method for selecting the number of layers, and the number of nodes in each layer, in a FF NN? I'm interested in automated ways of building neural networks.
@rayryeng This seems to be an update of Pomerleau's ALVINN. If you go here: cs.cmu.edu/%7Etom/mlbook-chapter-slides.html and look at the pdf for Chapter 4, on page 77 there is a diagram of the 3-layer ANN he used.
@Dev-iL The problem with de2bi and bi2de is they that don't exactly cancel in my code. The t(:)'part (used for the interleave operator) would require a flipud, which costs 8 bytes. Besides, bi2de doesn't accept cell array input, which is the trick I use to avoid the verbose if... else ... end