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I have a web crawler and the whole web to crawl. what should be my strategy? what kind of classification algorithms should i use ?

I am saying i have a web crawler , i din mean manually crawling the web .

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closed as off topic by Bart Kiers, sll, templatetypedef, Thomas Jungblut, tkone Jan 16 '13 at 21:28

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Umm... manually filling in the data? –  Jan Dvorak Jan 16 '13 at 18:28
Cheapest and best would be buying an Restaurant Guide (No joke!) But you might get problemw with copyright. So also consider if the is an authority which provides that data. –  AlexWien Jan 16 '13 at 18:30
ok then why do you ask people to use Google ? rather buy a relevent text rather then searching over google. My question is i have a web crawler , how to use that crawler to classify relevant text for me , just open ideas i am looking for –  Peter Jan 16 '13 at 19:01

1 Answer 1

up vote 2 down vote accepted

You can try and classify each page you crawl and determine if it is a restaurant or not (binary classifier) and use supervised learning.

You can use the Bag of Words model for it - which means, use the words as "features" and their existence (and number of occurances) determines the value of the feature.

You will also need to first manually label a set of pages and determine for them if they are a restaurant page or not. The data you generate is called your training set.

Note that the bag of words model tend to have a huge feature space - so you are going to need a classifier that is not sensitive to non informative features.

You can later use cross-validation to estimate how good your model is.

Here are some suggestions I found useful when classifying data using the bag of words model:

  • SVM tends to be very useful and yield very good results for the Bag of Words model. I did not see significance different between the performance of linear kernel and gaussian kernel.
  • Use stemming and filter stop words - you don't need the noise it generates.
  • Use bi-grams, they are very informative and at least for me - tend to increase the accuracy of the classifier significantly.
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