Sample-Constrained Black Box Optimization for Audio Personalization
Rajalaxmi Rajagopalan, Yu-Lin Wei, Romit Roy Choudhury

TL;DR
This paper introduces a hybrid black-box optimization method combining surrogate modeling and user feedback to personalize audio filters, improving user satisfaction through efficient querying strategies.
Contribution
It proposes a novel hybrid querying approach using Sparse Gaussian Process Regression that outperforms single-query methods in audio personalization tasks.
Findings
Hybrid approach outperforms individual querying methods.
Validated through simulations and real-world experiments.
Achieves high user satisfaction levels.
Abstract
We consider the problem of personalizing audio to maximize user experience. Briefly, we aim to find a filter , which applied to any music or speech, will maximize the user's satisfaction. This is a black-box optimization problem since the user's satisfaction function is unknown. Substantive work has been done on this topic where the key idea is to play audio samples to the user, each shaped by a different filter , and query the user for their satisfaction scores . A family of ``surrogate" functions is then designed to fit these scores and the optimization method gradually refines these functions to arrive at the filter that maximizes satisfaction. In certain applications, we observe that a second type of querying is possible where users can tell us the individual elements of the optimal filter . Consider an analogy from cooking where the goal…
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Taxonomy
TopicsMusic and Audio Processing · Speech and Audio Processing · Music Technology and Sound Studies
