Scaling up Ranking under Constraints for Live Recommendations by Replacing Optimization with Prediction

02/14/2022
by   Yegor Tkachenko, et al.
0

Many important multiple-objective decision problems can be cast within the framework of ranking under constraints and solved via a weighted bipartite matching linear program. Some of these optimization problems, such as personalized content recommendations, may need to be solved in real time and thus must comply with strict time requirements to prevent the perception of latency by consumers. Classical linear programming is too computationally inefficient for such settings. We propose a novel approach to scale up ranking under constraints by replacing the weighted bipartite matching optimization with a prediction problem in the algorithm deployment stage. We show empirically that the proposed approximate solution to the ranking problem leads to a major reduction in required computing resources without much sacrifice in constraint compliance and achieved utility, allowing us to solve larger constrained ranking problems real-time, within the required 50 milliseconds, than previously reported.

READ FULL TEXT
research
07/25/2020

Improved Analysis of RANKING for Online Vertex-Weighted Bipartite Matching

In this paper, we consider the online vertex-weighted bipartite matching...
research
04/18/2018

An Economic-Based Analysis of RANKING for Online Bipartite Matching

We give a simple proof showing that the RANKING algorithm introduced by ...
research
10/19/2022

On the Perturbation Function of Ranking and Balance for Weighted Online Bipartite Matching

Ranking and Balance are arguably the two most important algorithms in th...
research
02/13/2016

Constrained Multi-Slot Optimization for Ranking Recommendations

Ranking items to be recommended to users is one of the main problems in ...
research
03/14/2016

A ranking approach to global optimization

We consider the problem of maximizing an unknown function over a compact...
research
11/22/2021

A Surrogate Objective Framework for Prediction+Optimization with Soft Constraints

Prediction+optimization is a common real-world paradigm where we have to...
research
04/07/2020

Fail-safe optimization of viscous dampers for seismic retrofitting

This paper presents a new optimization approach for designing minimum-co...

Please sign up or login with your details

Forgot password? Click here to reset