FaiR-IoT: Fairness-aware Human-in-the-Loop Reinforcement Learning for Harnessing Human Variability in Personalized IoT
Salma Elmalaki (University of California, Irvine)

TL;DR
FaiR-IoT is a reinforcement learning framework designed to create fair, personalized IoT systems that adapt to human variability, improving performance and fairness in multi-human environments.
Contribution
The paper introduces FaiR-IoT, a novel multi-level reinforcement learning framework that addresses human variability for personalized and fair IoT applications.
Findings
Performance improved by 40%-60% over non-personalized systems.
Enhanced fairness in multi-human systems by 1.5 orders of magnitude.
Validated on automotive and smart house applications.
Abstract
Thanks to the rapid growth in wearable technologies, monitoring complex human context becomes feasible, paving the way to develop human-in-the-loop IoT systems that naturally evolve to adapt to the human and environment state autonomously. Nevertheless, a central challenge in designing such personalized IoT applications arises from human variability. Such variability stems from the fact that different humans exhibit different behaviors when interacting with IoT applications (intra-human variability), the same human may change the behavior over time when interacting with the same IoT application (inter-human variability), and human behavior may be affected by the behaviors of other people in the same environment (multi-human variability). To that end, we propose FaiR-IoT, a general reinforcement learning-based framework for adaptive and fairness-aware human-in-the-loop IoT applications.…
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