Stack Overflow is a community of 4.7 million programmers, just like you, helping each other.

Join them; it only takes a minute:

Sign up
Join the Stack Overflow community to:
  1. Ask programming questions
  2. Answer and help your peers
  3. Get recognized for your expertise

I would like to use a supervised machine learning algorithm to predict a binary function (true or false) for a set of sentences based on the presence or absence of words in the sentences.

Ideally, I would like to avoid having to hardcode the set of words used to decide on the output so that the algorithm automatically learns which words are (together ?) most likely to trigger specific outputs. (Programming Collective Intelligence) has a nice section in chapter 4 titled "Learning From Clicks" which describes how to do this by using 1 layer of hiden nodes in a neural network with one new hidden node for each new combination of input words.

Similarly, it is possible to create a feature for each word in the training data set and train pretty much any classic machine learning algorithm using these features. Adding new training data will generate new features which will require me to re-train the algorithm from scratch.

Which brings me to my questions:

  • is it actually a problem if I have to retrain everything from scratch whenever the training data set is extended ?
  • what kind of algorithm would more experience machine learning users recommend to use for this kind of problem ?
  • what criteria should I use in picking an algorithm versus another ? (other than actually trying them all and see which perform better with precision/recall metrics)
  • if you have worked on similar problems, what about extending the features with 2-grams (1 if a specific 2-gram is present, 0 if not) ? 3-grams ?
share|improve this question
up vote 1 down vote accepted

You could look into the general area of topic modelling if you want to find words which are generally found together.

The most simple approach would be to use latent semantic analysis ( ), which is just applying SVD to a term document matrix. You'd then need to do some additional post hoc analysis to fit this to your particular outcome.

A more involved, and much more complex approach would be to use latent dirichlet allocation ( )

In terms of just adding new features (words) that is fine as long as you are going to retrain. You can also use TF/IDF to give that particular word a value when representing the matrix (Instead of just a 1 or 0).

I don't know what programming language you are trying to do this in, but I know there are libraries out there in Java and Pythont hat do all of the above.

share|improve this answer
I can see how I could use LSA to gain insight in the words that happen together in each of the 2 categories of my training data but using these words to classify new input is not obvious. i.e., there will likely be words that appear in both categories... – mathieu Aug 9 '12 at 10:15
Sorry I meant to build topics based on the relationships of a reduced matrix using LSA. In topic detection what you will get back is Topic X and words that are associated with that particular topic. Generally LDA is used for this, LSA is the basis of LDA, LDA will then incorporate what I'd personally find very technical statistical methods. But your end result is a bunch of words which have a strong probability of appearing together. There is always a likelihood that something might be similar to two topics, but ultimitly one will win out (Maybe only marginally). – steve Aug 9 '12 at 12:17

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.