I'm trying to figure out a way I could represent a Facebook user as a vector. I decided to go with stacking the different attributes/parameters of the user into one big vector (i.e. age is a vector of size 100, where 100 is the maximum age you can have, if you are lets say 50, the first 50 values of the vector would be 1 just like a thermometer). I just can't figure out a way to represent the Facebook interests as a vector too, they are a collection of words and the space that represents all the words is huge, I can't go for a model like a bag of words or something similar. Does anyone know how I should proceed? I'm still new to this, any reference would be highly appreciated.

In the case of a desire to down vote this question just let me know what is wrong about it so that I could improve the wording and context.


1 Answer 1


The "right" approach depends on what your learning algorithm is and what the decision problem is.

It would often be better, though, to represent age as a single numeric feature rather than 100 indicator features. That way learning algorithms don't have to learn the relationship between those hundred features (it's baked-in), and the problem has 99 fewer dimensions, which'll make everything better.

To model the interests, you might want to start with an extremely high-dimensional bag of words model and then use one of various options to reduce the dimensionality:

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

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