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I am trying to implement an approach following a paper which compares the content vectors of words to a prototype vector, which is representative of the entire class/cluster/type/etc. In the first step, a prototype vector is calculated and I do not quite understand how the way to acquire prototype vectors.

I referred to here to the discussion of this question: However, this post seems to answer what the prototype vector is theoretically, while I need to find a practical solution to implement.

Is there an implementation in Python // Sci-kit learn that can realize the function of

A. defining/indicate a priori or induce from training instances a prototype vector B. then input feature vectors to be compared for similarity against the prototype vector from A.?

Thank you in advance for you help.

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The answer you received on your other question pretty much summarizes what you need to do. If you're having trouble with some specific detail of the implementation, feel free to ask, but as it stands, this amounts to asking 'please implement this for me', so I doubt you'll get an answer –  goncalopp Oct 21 '13 at 14:13
Actually, I was referring to a specific function // implementation available online that perhaps I have not been able to find and someone in the community is aware of ( for instance a software, a tool implementation) and wants to spread or share the information. –  owwoow14 Oct 21 '13 at 14:15
I see. Since this is a technique used in a specific paper, I don't think there'll be an exact match, but maybe someone can find something similar –  goncalopp Oct 21 '13 at 14:30
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1 Answer

up vote 1 down vote accepted

I think you are looking for the Nearest Centroid Classifier: http://scikit-learn.org/dev/modules/neighbors.html#nearest-centroid-classifier

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Thanks for the suggestion. I checked out the Nearest Centroid Classifier and it does seem to offer some very interesting possibilities. However, it seems like it generates its own prototype based on the vectors/matrix provided, rather than permitting the definition of the prototype and then feeding it unseen vectors for comparison. However, I have come across the following (although JAVA): wekax.googlecode.com/svn/trunk/wekaUT/weka/classifiers/misc/… Is there something like this that exists for Python (Scikit) ? –  owwoow14 Oct 22 '13 at 9:46
What you describe can be implemented in one or two lines of numpy. Learn numpy, it is really worth it. –  Andreas Mueller Oct 22 '13 at 16:55
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