Fast Slate Policy Optimization: Going Beyond Plackett-Luce
Abstract
An increasingly important building block of large scale machine learning systems is based on returning slates; an ordered lists of items given a query. Applications of this technology include: search, information retrieval and recommender systems. When the action space is large, decision systems are restricted to a particular structure to complete online queries quickly. This paper addresses the optimization of these large scale decision systems given an arbitrary reward function. We cast this learning problem in a policy optimization framework and propose a new class of policies, born from a novel relaxation of decision functions. This results in a simple, yet efficient learning algorithm that scales to massive action spaces. We compare our method to the commonly adopted Plackett-Luce policy class and demonstrate the effectiveness of our approach on problems with action space sizes in the order of millions.
Cite
@article{arxiv.2308.01566,
title = {Fast Slate Policy Optimization: Going Beyond Plackett-Luce},
author = {Otmane Sakhi and David Rohde and Nicolas Chopin},
journal= {arXiv preprint arXiv:2308.01566},
year = {2024}
}
Comments
Transactions on Machine Learning Research