Pruning Random Forests for Prediction on a Budget
Nan, Feng, Wang, Joseph, Saligrama, Venkatesh
–Neural Information Processing Systems
We propose to prune a random forest (RF) for resource-constrained prediction. We first construct a RF and then prune it to optimize expected feature cost & accuracy. We pose pruning RFs as a novel 0-1 integer program with linear constraints that encourages feature re-use. We establish total unimodularity of the constraint set to prove that the corresponding LP relaxation solves the original integer program. We then exploit connections to combinatorial optimization and develop an efficient primal-dual algorithm, scalable to large datasets.
Neural Information Processing Systems
Feb-14-2020, 11:12:41 GMT
- Technology: