LGMLApr 26, 2019

Learning to Prune: Speeding up Repeated Computations

arXiv:1904.11875v123 citations
Originality Highly original
AI Analysis

This work addresses efficiency issues for users dealing with sequences of similar computational problems, such as in routing or optimization, though it is incremental as it builds on explore-exploit techniques.

The paper tackles the problem of speeding up repeated computations by learning to prune the search space, resulting in a provably optimal algorithm that significantly reduces runtime while maintaining correctness with high probability.

It is common to encounter situations where one must solve a sequence of similar computational problems. Running a standard algorithm with worst-case runtime guarantees on each instance will fail to take advantage of valuable structure shared across the problem instances. For example, when a commuter drives from work to home, there are typically only a handful of routes that will ever be the shortest path. A naive algorithm that does not exploit this common structure may spend most of its time checking roads that will never be in the shortest path. More generally, we can often ignore large swaths of the search space that will likely never contain an optimal solution. We present an algorithm that learns to maximally prune the search space on repeated computations, thereby reducing runtime while provably outputting the correct solution each period with high probability. Our algorithm employs a simple explore-exploit technique resembling those used in online algorithms, though our setting is quite different. We prove that, with respect to our model of pruning search spaces, our approach is optimal up to constant factors. Finally, we illustrate the applicability of our model and algorithm to three classic problems: shortest-path routing, string search, and linear programming. We present experiments confirming that our simple algorithm is effective at significantly reducing the runtime of solving repeated computations.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes