articleJan 1, 2005Closed access
Fast maximum margin matrix factorization for collaborative prediction
Massachusetts Institute of Technology · University of Toronto
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Abstract
Maximum Margin Matrix Factorization (MMMF) was recently suggested (Srebro et al., 2005) as a convex, infinite dimensional alternative to low-rank approximations and standard factor models. MMMF can be formulated as a semi-definite programming (SDP) and learned using standard SDP solvers. However, current SDP solvers can only handle MMMF problems on matrices of dimensionality up to a few hundred. Here, we investigate a direct gradient-based optimization method for MMMF and demonstrate it on large collaborative prediction problems. We compare against results obtained by Marlin (2004) and find that MMMF substantially outperforms all nine methods he tested.
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Authors
2Topics & keywords
Topics
Keywords
- Margin (machine learning)
- Curse of dimensionality
- Regular polygon
- Matrix decomposition
- Computer science
- Rank (graph theory)
- Matrix (chemical analysis)
- Factorization
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