Feature-based matrix factorization

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Feature-based matrix factorization is an abstract matrix factorization model that uses features to describe the global bias and user/item factors. The the model allows development of new model simply by feature defining. We can incorporate information such as temporal information, neighborhood information, taxonomy information into feature-based matrix factorization to make the model informative. If we have a solver for feature-based matrix factorization, we only need to design context-aware or informative collaborative filtering(or ranking) models by feature-defining, without engineering efforts for writing codes for each new model.

Related Models

  • Factorization Machine: feature-based matrix factorization can be viewed as a restricted case of factorization machine to distinguish different types of features, allowing us to overcome some shortcomings of FM. We call the model feature-based matrix factorization instead of restricted FM because the idea descends more naturally from matrix factorization.

Implementation

  • SVDFeature is an efficient and scalable implementation of feature-based matrix factorization.

References