# Machine Learning: Create Ranking From Features

I have one question about machine learning, which I want to explain on the well-known Netflix dataset.

Let's say I have a dataset with users and items like the Netflix dataset.

Let's say, I used any factorization method and found for every movie (item) the action feature i.e. Terminator has a action feature value of 10, Pretty Woman has a action feature value of 0.

Now I want to create a list of action movies ranked by their action feature value.

Can I scientifically prove that this list is correct? How?

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The problem is that you don't know which direction "action" is a priori. The factorization is going to find dimensions that explain the most about movies, and, the basis vectors for that feature space that it finds do not necessarily map directly to a pure idea like "action". If you analyze one you may find a basis vector seems to mean "action, and some sci-fi, but definitely not any romance". "Action", wherever it is, will likewise surely be a combination of basis vectors you found.

Once you find the direction in feature space that you're interested in, yes, you would just dot that vector with all the item vectors and the highest values would be the movies most strongly associated with whatever direction in feature space that is.

Proving it's correct again depends entirely on what you think correct means. The metric above is going to favor items in the same direction from the origin in feature space and that are farther away. That probably maps to an intuitive idea of correct.

It also happens to be the thing matrix factorization algorithms are optimizing for, in the sense that they are trying to make these dot products match the original input as best they can (minimizing L2 norm of difference between original and reconstruction from the product of low-rank factors).

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It depends on what validation data you have.

If you have binary validation data, you can compute the ROC AUC score for example. The value can intuitively be interpreted as given a pair of action and non-action movies, how big is the likelihood that the action movie is ranked prior to the non-action movie.

There are other measures such as MAP (Mean-Average-Precision), but they may or may not be able to handle the unbalancedness that you are probably seeing.

The measures suggested in

• Interpreting and Unifying Outlier Scores
Hans-Peter Kriegel, Peer Kröger, Erich Schubert, Arthur Zimek
SIAM SDM 2012

may also be of help, as outlier detection is also very unbalanced. IIRC they try to compute a distance between a reference ranking and the ranking produced by the algorithm; but taking the unbalancedness into account.

But if you don't have a reference data set that gives the "true action-ness" of the movies it will be hard to do.

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