Sign up ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free.

I am just starting out with nltk, and I am following the book. Chapter six is about text classification, and i am a bit confused about something. In the examples (the names, and movie reviews) the classifier is trained to select between two well-defined labels (male-female, and pos-neg). But how to train if you have only one label.

Say I have a bunch of movie plot outlines, and I am only interested in fishing out movies from the sci-fi genre. Can I train a classifier to only recognize sci-fi plots, en say f.i. if classification confidence is > 80%, then put it in the sci-fi group, otherwise, just ignore it.

Hope somebody can clarify, thank you,

share|improve this question
You should usually classify as positive at >.5, not .8. – larsmans Apr 26 '13 at 8:29

2 Answers 2

up vote 0 down vote accepted

You can simply train a binary classifier to distinguish between sci-fi and not sci-fi

So train on the movie plots that are labeled as sci-fi and also on a selection of all other genres. It might be a good idea to have a representative sample of the same size for the other genres such that not all are of the romantic comedy genre, for instance.

share|improve this answer
I see. Actually a bit more obvious than i thought, thank you. – devboell Apr 26 '13 at 8:02

I see two questions

  1. How to train the system?
  2. Can the system consist of "sci-fi" and "others"?

The answer to 2 is yes. Having a 80% confidence threshold idea also makes sense, as long as you see with your data, features and algorithm that 80% is a good threshold. (If not, you may want to consider lowering it if not all sci-fi movies are being classified as sci-fi, or lowering it, if too many non-sci-fi movies are being categorized as sci-fi.)

The answer to 1 depends on the data you have, the features you can extract, etc. Jared's approach seems reasonable. Like Jared, I'd also to emphasize the importance of enough and representative data.

share|improve this answer
P.S. By the way, notice that they talk about "male" and "female" as being two labels. "Pos" and "neg" are two other labels, so really we're talking about four labels/classes/categories in total! – arturomp Apr 26 '13 at 7:50
Thanks amp, I accepted Jared's answer just because he was a bit sooner, but both your answers make sense. Although I don't understand your P.S., because in the book they are treated as separate examples. – devboell Apr 26 '13 at 8:02
No worries! Initially I read your question as if all the labels were in a single example, in which case we would have been talking about four labels. With your clarification, saying that there's two labels makes sense. – arturomp Apr 26 '13 at 15:06

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.