The Limitations of Optimization from Samples

Author:

Balkanski Eric1ORCID,Rubinstein Aviad2ORCID,Singer Yaron3ORCID

Affiliation:

1. Columbia University, New York, NY

2. Stanford University, Stanford, CA

3. Harvard University, Boston, MA

Abstract

In this article, we consider the following question: Can we optimize objective functions from the training data we use to learn them? We formalize this question through a novel framework we call optimization from samples ( OPS ). In OPS , we are given sampled values of a function drawn from some distribution and the objective is to optimize the function under some constraint. While there are interesting classes of functions that can be optimized from samples, our main result is an impossibility. We show that there are classes of functions that are statistically learnable and optimizable, but for which no reasonable approximation for optimization from samples is achievable. In particular, our main result shows that there is no constant factor approximation for maximizing coverage functions under a cardinality constraint using polynomially-many samples drawn from any distribution. We also show tight approximation guarantees for maximization under a cardinality constraint of several interesting classes of functions including unit-demand, additive, and general monotone submodular functions, as well as a constant factor approximation for monotone submodular functions with bounded curvature.

Funder

Smith Family Graduate Science and Engineering Fellowship

NSF

Aviad Rubinstein by a Microsoft Research PhD Fellowship, NSF

Publisher

Association for Computing Machinery (ACM)

Subject

Artificial Intelligence,Hardware and Architecture,Information Systems,Control and Systems Engineering,Software

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4. Maria-Florina Balcan, Florin Constantin, Satoru Iwata, and Lei Wang. 2012. Learning valuation functions. In Proceedings of the 25th Annual Conference on Learning Theory.

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