The feedback that users provide through their choices (e.g., clicks,
pur...
Algorithms are used to aid human decision makers by making predictions a...
Datasets for training recommender systems are often subject to distribut...
Online convex optimization (OCO) is a widely used framework in online
le...
Content creators compete for user attention. Their reach crucially depen...
Prediction systems face exogenous and endogenous distribution shift – th...
Many projects (both practical and academic) have designed algorithms to ...
The desire to build good systems in the face of complex societal effects...
In the long term, reinforcement learning (RL) is considered by many AI
t...
In this work, we consider how preference models in interactive recommend...
The development of artificial intelligence (AI) technologies has far exc...
Despite interest in communicating ethical problems and social contexts w...
Modern nonlinear control theory seeks to endow systems with properties s...
Recommender systems operate in an inherently dynamical setting. Past
rec...
Modern nonlinear control theory seeks to develop feedback controllers th...
In order to certify performance and safety, feedback control requires pr...
While real-world decisions involve many competing objectives, algorithmi...
Recommender systems often rely on models which are trained to maximize
a...
Motivated by vision based control of autonomous vehicles, we consider th...
We study the constrained linear quadratic regulator with unknown dynamic...
Machine learning (ML) is increasingly deployed in real world contexts,
s...
We consider adaptive control of the Linear Quadratic Regulator (LQR), wh...
Fairness in machine learning has predominantly been studied in static
cl...
This paper addresses the optimal control problem known as the Linear
Qua...