Vyas Dhruv, Brummet Ryan, Anwar Yumna, Jensen Justin, Jorgensen Erik, Wu Yu-Hsiang, Chipara Octav
Department of Computer Science, University of Iowa, United States of America.
Department of Communication Sciences and Disorders, University of Iowa, United States of America.
Smart Health (Amst). 2022 Mar;23. doi: 10.1016/j.smhl.2021.100231. Epub 2021 Nov 25.
Over-the-counter hearing aids enable more affordable and accessible hearing health care by shifting the burden of configuring the device from trained audiologists to end-users. A critical challenge is to provide users with an easy-to-use method for personalizing the many parameters which control sound amplification based on their preferences. This paper presents a novel approach to fitting hearing aids that provides a higher degree of personalization than existing methods by using user feedback more efficiently. Our approach divides the fitting problem into two parts. First, we discretize an initial 24-dimensional space of possible configurations into a small number of presets. Presets are constructed to ensure that they can meet the hearing needs of a large fraction of Americans with mild-to-moderate hearing loss. Then, an online agent learns the best preset by asking a sequence of pairwise comparisons. This learning problem is an instance of the multi-armed bandit problem. We performed a 35-user study to understand the factors that affect user preferences and evaluate the efficacy of multi-armed bandit algorithms. Most notably, we identified a new relationship between a user's preference and presets: a user's preference can be represented as one or more preference points in the initial configuration space with stronger preferences expressed for nearby presets (as measured by the Euclidean distance). Based on this observation, we have developed a Two-Phase Personalizing algorithm that significantly reduces the number of comparisons required to identify a user's preferred preset. Simulation results indicate that the proposed algorithm can find the best configuration with a median of 25 comparisons, reducing by half the comparisons required by the best baseline. These results indicate that it is feasible to configure over-the-counter hearing aids using a small number of pairwise comparisons without the help of professionals.
非处方助听器通过将配置设备的负担从训练有素的听力学家转移到终端用户,使听力保健更加经济实惠且易于获得。一个关键挑战是为用户提供一种易于使用的方法,以便根据他们的偏好对控制声音放大的众多参数进行个性化设置。本文提出了一种新颖的助听器适配方法,通过更有效地利用用户反馈,提供比现有方法更高程度的个性化。我们的方法将适配问题分为两部分。首先,我们将初始的24维可能配置空间离散化为少量预设。预设的构建确保它们能够满足大部分轻度至中度听力损失的美国人的听力需求。然后,一个在线代理通过询问一系列成对比较来学习最佳预设。这个学习问题是多臂老虎机问题的一个实例。我们进行了一项有35名用户的研究,以了解影响用户偏好的因素并评估多臂老虎机算法的有效性。最值得注意的是,我们确定了用户偏好与预设之间的一种新关系:用户的偏好可以在初始配置空间中表示为一个或多个偏好点,对附近预设(通过欧几里得距离测量)表达更强的偏好。基于这一观察结果,我们开发了一种两阶段个性化算法,该算法显著减少了识别用户首选预设所需的比较次数。仿真结果表明,所提出的算法可以通过25次比较的中位数找到最佳配置,将最佳基线所需的比较次数减少了一半。这些结果表明,在没有专业人员帮助的情况下,使用少量成对比较来配置非处方助听器是可行的。