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There are several data sets for automobile manufacturers and models. Each contains several hundreds data entries like the following:

Mercedes GLK 350 W2

Prius Plug-in Hybrid Advanced Toyota

General Motors Buick Regal 2012 GS 2.4L

How to automatically divide the above entries into the manufacturers (e.g. Toyota ) and models (e.g. Prius Plug-in Hybrid Advanced) by using only those files?

Thanks in advance.

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Welcome to StackOverflow! To get a positive response here, please tell us what you have tried so far. –  S.L. Barth Nov 11 '12 at 7:06
So far so good. Is there a specific forum for machine-learning and natural-language-processing? –  suod Nov 11 '12 at 17:40
There was a Machine Learning StackExchange, but it didn't pass the beta phase. It was merged into Cross Validated. –  S.L. Barth Nov 12 '12 at 6:10

1 Answer 1

up vote 1 down vote accepted

Machine Learning (ML) typically relies on training data which allows the ML logic to produce and validate a model of the underlying data. With this model, it is then in a position to infer the class of new data presented to it (in the classifier application, as the one at hand) or to infer the value of some variable (in the regression case, as would be, say, an ML application predicting the amount of rain a particular region will receive next month).

The situation presented in the question is a bit puzzling, at several levels.
Firstly, the number of automobile manufacturers is finite and relatively small. It would therefore be easy to manually make the list of these manufacturers and then simply use this lexicon to parse out the manufacturers from the model numbers, using plain string parsing techniques, i.e. no ML needed or even desired here. (alas the requirement that one would be using "...only those files" seems to preclude this option.
Secondly, one can think of a few patterns or heuristics that could be used to produce the desired classifier (tentatively a relatively weak one, as the patterns/heuristics that come to mind ATM seem relatively unreliable). Furthermore, such an approach is also not quite an ML approach in the common understanding of the word.

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mjv, thank you for addressing those issues. Perhaps the first is a better approach given that the data are limited. –  suod Nov 11 '12 at 18:31
If there are about one hundred manufacturers and five hundreds of data entries in each file, is the lexicon the better approach? –  suod Nov 14 '12 at 23:12
100 and 500 (even multiplied by, say, several hundred files) is still relatively "small data". As such and if there was some benefits in terms of improved quality in the output (which is a "if"...), these small counts would allow one to consider the slower throughput associated with CPU intensive and fancy processing, without fearing the performance to degrade very much. The simpler [in memory] lexicon based approach would be yet faster and easier. –  mjv Nov 15 '12 at 0:44

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