ArXiv TLDR

Vibrotactile Preference Learning: Uncertainty-Aware Preference Learning for Personalized Vibration Feedback

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2604.20210

Rongtao Zhang, Xin Zhu, Masoume Pourebadi Khotbehsara, Warren Dao, Erdem Bıyık + 1 more

cs.HCcs.AIcs.LG

TLDR

VPL is a system that uses uncertainty-aware preference learning to efficiently personalize vibrotactile feedback based on individual user preferences.

Key contributions

  • Proposes Vibrotactile Preference Learning (VPL) for personalized haptic feedback.
  • Utilizes Gaussian-process-based uncertainty-aware preference learning.
  • Employs expected information gain to efficiently explore parameter space.
  • Validated in a user study (N=13) showing efficient, low-workload personalization.

Why it matters

As haptic feedback becomes more common, individual differences necessitate personalized systems. VPL offers an efficient, user-friendly approach to tailor vibrotactile experiences, paving the way for scalable and comfortable haptic personalization.

Original Abstract

Individual differences in vibrotactile perception underscore the growing importance of personalization as haptic feedback becomes more prevalent in interactive systems. We propose Vibrotactile Preference Learning (VPL), a system that captures user-specific preference spaces over vibrotactile parameters via Gaussian-process-based uncertainty-aware preference learning. VPL uses an expected information gain-based acquisition strategy to guide query selection over 40 rounds of pairwise comparisons of overall user preference, augmented with user-reported uncertainty, enabling efficient exploration of the parameter space. We evaluate VPL in a user study (N = 13) using the vibrotactile feedback from a Microsoft Xbox controller, showing that it efficiently learns individualized preferences while maintaining comfortable, low-workload user interactions. These results highlight the potential of VPL for scalable personalization of vibrotactile experiences.

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