Talks
Fall 2022
Machine Learning for Faster Optimization
Wednesday, September 14th, 2022, 10:00 am–10:45 am
Speaker:
Ben Moseley (Carnegie Mellon University)
Location:
Calvin Lab Auditorium
This talk will discuss a model for augmenting algorithms with useful predictions to improve algorithm performance for running time. The model ensures predictions are formally learnable and robust. Learnability guarantees that predictions can be efficiently constructed from past data. Robustness formally ensures a prediction is robust to modest changes in the problem input. This talk will discuss predictions that satisfy these properties and result in improved run times for matching algorithms.
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Slides | 9.35 MB |