AIAug 28, 2023

Utilizing Mood-Inducing Background Music in Human-Robot Interaction

arXiv:2308.14269v11 citationsh-index: 94
Originality Incremental advance
AI Analysis

This addresses the problem of enhancing robot adaptability in interactive scenarios for applications like autonomous vehicles, though it is incremental as it builds on known mood-music effects.

The study investigated whether a robot can improve its decision-making in human-robot interaction by considering the background music a person is listening to, and found that incorporating this information effectively predicts human behavior in a simulated driving task.

Past research has clearly established that music can affect mood and that mood affects emotional and cognitive processing, and thus decision-making. It follows that if a robot interacting with a person needs to predict the person's behavior, knowledge of the music the person is listening to when acting is a potentially relevant feature. To date, however, there has not been any concrete evidence that a robot can improve its human-interactive decision-making by taking into account what the person is listening to. This research fills this gap by reporting the results of an experiment in which human participants were required to complete a task in the presence of an autonomous agent while listening to background music. Specifically, the participants drove a simulated car through an intersection while listening to music. The intersection was not empty, as another simulated vehicle, controlled autonomously, was also crossing the intersection in a different direction. Our results clearly indicate that such background information can be effectively incorporated in an agent's world representation in order to better predict people's behavior. We subsequently analyze how knowledge of music impacted both participant behavior and the resulting learned policy.\setcounter{footnote}{2}\footnote{An earlier version of part of the material in this paper appeared originally in the first author's Ph.D. Dissertation~\cite{liebman2020sequential} but it has not appeared in any pear-reviewed conference or journal.}

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes