Collaborative Expert Portfolio Management
Stern, David (Microsoft FUSE Labs) | Samulowitz, Horst (National ICT Australia and University of Melbourne) | Herbrich, Ralf (Microsoft FUSE Labs) | Graepel, Thore (Microsoft Research) | Pulina, Luca (Universita di Genova) | Tacchella, Armando (Universita di Genova)
We consider the task of assigning experts from a portfolio of specialists in order to solve a set of tasks. We apply a Bayesian model which combines collaborative filtering with a feature-based description of tasks and experts to yield a general framework for managing a portfolio of experts. The model learns an embedding of tasks and problems into a latent space in which affinity is measured by the inner product. The model can be trained incrementally and can track non-stationary data, tracking potentially changing expert and task characteristics. The approach allows us to use a principled decision theoretic framework for expert selection, allowing the user to choose a utility function that best suits their objectives. The model component for taking into account the performance feedback data is pluggable, allowing flexibility. We apply the model to manage a portfolio of algorithms to solve hard combinatorial problems. This is a well studied area and we demonstrate a large improvement on the state of the art in one domain (constraint solving) and in a second domain (combinatorial auctions) created a portfolio that performed significantly better than any single algorithm.
Jul-15-2010
- Country:
- North America
- Canada > Ontario
- Toronto (0.14)
- United States > New York (0.14)
- Canada > Ontario
- North America
- Genre:
- Research Report > New Finding (0.34)