End to end learning and optimization on graphs
Wilder, Bryan, Ewing, Eric, Dilkina, Bistra, Tambe, Milind
–Neural Information Processing Systems
Real-world applications often combine learning and optimization problems on graphs. For instance, our objective may be to cluster the graph in order to detect meaningful communities (or solve other common graph optimization problems such as facility location, maxcut, and so on). However, graphs or related attributes are often only partially observed, introducing learning problems such as link prediction which must be solved prior to optimization. Standard approaches treat learning and optimization entirely separately, while recent machine learning work aims to predict the optimal solution directly from the inputs. Here, we propose an alternative decision-focused learning approach that integrates a differentiable proxy for common graph optimization problems as a layer in learned systems.
Neural Information Processing Systems
Mar-18-2020, 22:17:48 GMT
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