SOTAVerified

Generalizing the theory of cooperative inference

2018-10-04Unverified0· sign in to hype

Pei Wang, Pushpi Paranamana, Patrick Shafto

Unverified — Be the first to reproduce this paper.

Reproduce

Abstract

Cooperation information sharing is important to theories of human learning and has potential implications for machine learning. Prior work derived conditions for achieving optimal Cooperative Inference given strong, relatively restrictive assumptions. We relax these assumptions by demonstrating convergence for any discrete joint distribution, robustness through equivalence classes and stability under perturbation, and effectiveness by deriving bounds from structural properties of the original joint distribution. We provide geometric interpretations, connections to and implications for optimal transport, and connections to importance sampling, and conclude by outlining open questions and challenges to realizing the promise of Cooperative Inference.

Tasks

Reproductions