Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free.

We know there are like a thousand of classifiers, recently I was told that, some people say adaboost is like the out of the shell one.

  • Are There better algorithms (with that voting idea)
  • What is the state of the art in the classifiers.Do you have an example?
share|improve this question

4 Answers 4

up vote 2 down vote accepted

Weka is a very popular and stable Machine Learning library. It has been around for quite a while and written in Java.

share|improve this answer
Recently I saw a Dr. using this, so I have to admit you gave the answer so soon. –  cMinor Mar 1 '11 at 0:34

Weka and Mahout aren't algorithms... they're machine learning libraries. They include implementations of a wide range of algorithms. So, your best bet is to pick a library and try a few different algorithms to see which one works best for your particular problem (where "works best" is going to be a function of training cost, classification cost, and classification accuracy).

If it were me, I'd start with naive Bayes, k-nearest neighbors, and support vector machines. They represent well-established, well-understood methods with very different tradeoffs. Naive Bayes is cheap, but not especially accurate. K-NN is cheap during training but (can be) expensive during classification, and while it's usually very accurate it can be susceptible to overtraining. SVMs are expensive to train and have lots of meta-parameters to tweak, but they are cheap to apply and generally at least as accurate as k-NN.

If you tell us more about the problem you're trying to solve, we may be able to give more focused advice. But if you're just looking for the One True Algorithm, there isn't one -- the No Free Lunch theorem guarantees that.

share|improve this answer

Apache Mahout (open source, java) seems to pick up a lot of steam.

share|improve this answer

First, adaboost is a meta-algorithm which is used in conjunction with (on top of) your favorite classifier. Second, classifiers which work well in one problem domain often don't work well in another. See the No Free Lunch wikipedia page. So, there is not going to be AN answer to your question. Still, it might be interesting to know what people are using in practice.

share|improve this answer
So, what you people use??? –  cMinor Feb 27 '11 at 16:57

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.