TruVR: Trustworthy Cybersickness Detection using Explainable Machine Learning
Ripan Kumar Kundu, Rifatul Islam, Prasad Calyam, Khaza Anuarul Hoque

TL;DR
This paper introduces explainable machine learning models for detecting and predicting cybersickness in VR, providing high accuracy and interpretability to improve trust and understanding of the underlying causes.
Contribution
The paper presents three explainable ML models for cybersickness detection and prediction, emphasizing model transparency and feature importance analysis.
Findings
EBM achieves up to 99.75% accuracy in detection
Key features identified include exposure length, rotation, and acceleration
EBM provides both global and local explanations for cybersickness factors
Abstract
Cybersickness can be characterized by nausea, vertigo, headache, eye strain, and other discomforts when using virtual reality (VR) systems. The previously reported machine learning (ML) and deep learning (DL) algorithms for detecting (classification) and predicting (regression) VR cybersickness use black-box models; thus, they lack explainability. Moreover, VR sensors generate a massive amount of data, resulting in complex and large models. Therefore, having inherent explainability in cybersickness detection models can significantly improve the model's trustworthiness and provide insight into why and how the ML/DL model arrived at a specific decision. To address this issue, we present three explainable machine learning (xML) models to detect and predict cybersickness: 1) explainable boosting machine (EBM), 2) decision tree (DT), and 3) logistic regression (LR). We evaluate xML-based…
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Taxonomy
TopicsVirtual Reality Applications and Impacts · Psychosomatic Disorders and Their Treatments
Methodsenergy-based model · Logistic Regression
