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I am trying to learn some machine learning, but unfortunately unsupervised learning is not treating me well and I was hoping some semi-supervised learning courtesy of StackOverflow might be able to help me out! :)

I am trying to extract the topic of a webpage from the raw HTML as simply as possible. What I have is a list of 10,000 HTML files. I would like to run a program on this list that will output the id of the webpage (it's filename) and the topic of the webpage alongside it, in TSV format.

I've looked at a number of APIs for doing this and tried to implement my own function for this using python and scikit-learn, however, I am sure there is some simple and effective way of doing this that I am overlooking

What I have :

Folder containing over 10,000.html files, labelled from 1 to 10,000.

What I want

A program that runs :

foreach(file in folder){
   //Analyse HTML in file
   //Predict topic from HTML (I believe this is called Latent Semantic Analysis).
   //Write to next line of TSV "file\ttopic" 
}

So we end up with a tsv of the form

1   Recipe
2   Football
3   Technology
...
10,000   Television
share|improve this question
    
show us what you tried so far? –  Karan Goel Dec 8 '13 at 21:25
    
I understand you don't have any background in machine learning. Unfortunately you aren't overlooking something. The problem you describe is hard. Unless you have some serious time to spare on this, that is learn about text analysis and machine learning, I believe the easiest way for you to go is to use a list of words (manually compiled or retrieved from the net) for each topic you are interested in detecting. Then use a simple voting scheme to predict the "correct" topic based on the frequencies of the words. –  iliasfl Dec 23 '13 at 5:23

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