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had exam today in Machine learning and I am unsure about a question. What of the following alternatives would you guys select?

Question: What is the advantage of using a single layered artificial neural network (as opposed to a multi-layered)?

  • a) Learning is faster
  • b) All input variables are independent
  • c) Arbitrarily complex decisions can be learned
  • d) Less restriction bias

only one alternative is correct.

Thanks in advance

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Which do you think is correct and why? ;) –  NPE Oct 29 '13 at 17:08
    
its e all of the above! –  meda Oct 29 '13 at 17:09
    
well it cant be in my opinion b c cuz they are typically for multi-layered networks. More nods you have it can take more complex decisions and I know that in multil-layered the input values is independent. The neuron learns from its output and iterate through i singel layered is much shorter then in a multi-layered where it can be many iterations and you uses backpropagation so I chose a. for d I have no ide actually –  Mert Avci Oct 29 '13 at 17:24

1 Answer 1

up vote 1 down vote accepted

I actually find this quite interesting question, I do not understand the downvotes (and no close votes - which would be reasonable if someone thinks it is out-of-the-scope).

  • Learning is faster - rather true, in one layer neural network we have simplier function model, less parameters, so it should converge faster. Even though, I would say rather true because for very specific data it may be actually the other way around - everything depends on the initialization, processing etc.
  • All input variables are independent - independent on what? This answer seems weird, this is not a feature of the model, but the data based one, so in case of this particular test - also false
  • Arbitrary complex decisions can be learned - false for both one and multi layer neural network unless we have more assumptions (at least 2 layers, continuous, differentable, nonlear activation functions, arbitrary number of hidden units, existance of bias)
  • Less restriction bias - false, restriction bias is a restriction made on the classes of models searched. In case of one layer NN we restrict to linear classifiers (more or less, depending on usage of activation functions/kernelization), which is a very small subset of possible models (much narrower then the one avaliable in the MLP)
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I think b) is referring to the model being linear in the input variables, i.e. of the form w.x. Or perhaps it should say "input variables are assumed to be independent", which is obviously false since NNs (and discriminative methods in general) make no assumptions about the input data. In any case, the wording is horrible: was this translated from another language? –  Ben Allison Oct 30 '13 at 12:11
    
I also dont understand why people downvotes but I got result today and the right answer was a) Learning is faster. –  Mert Avci Oct 30 '13 at 13:58

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