Evaluating and optimizing hearing-aid self-fitting methods using population coverage

Dhruv Vyas, Erik Jorgensen, Yu-Hsiang Wu, Octav Chipara
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Abstract

Adults with mild-to-moderate hearing loss can use over-the-counter hearing aids to treat their hearing loss at a fraction of traditional hearing care costs. These products incorporate self-fitting methods that allow end-users to configure their hearing aids without the help of an audiologist. A self-fitting method helps users configure the gain-frequency responses that control the amplification for each frequency band of the incoming sound. This paper considers how to guide the design of self-fitting methods by evaluating certain aspects of their design using computational tools before performing user studies. Most existing fitting methods provide various user interfaces to allow users to select a configuration from a predetermined set of presets. Accordingly, it is essential for the presets to meet the hearing needs of a large fraction of users who suffer from varying degrees of hearing loss and have unique hearing preferences. To this end, we propose a novel metric for evaluating the effectiveness of preset-based approaches by computing their population coverage. The population coverage estimates the fraction of users for which a self-fitting method can find a configuration they prefer. A unique aspect of our approach is a probabilistic model that captures how a user's unique preferences differ from other users with similar hearing loss. Next, we propose methods for building preset-based and slider-based self-fitting methods that maximize the population coverage. Simulation results demonstrate that the proposed algorithms can effectively select a small number of presets that provide higher population coverage than clustering-based approaches. Moreover, we may use our algorithms to configure the number of increments of slider-based methods. We expect that the computational tools presented in this article will help reduce the cost of developing new self-fitting methods by allowing researchers to evaluate population coverage before performing user studies.
利用人口覆盖率评估和优化助听器自配方法
患有轻度至中度听力损失的成年人可以使用非处方助听器来治疗他们的听力损失,其费用只是传统听力保健费用的一小部分。这些产品结合了自配方法,允许最终用户在没有听力学家帮助的情况下配置他们的助听器。自拟合方法帮助用户配置增益-频率响应,控制输入声音的每个频段的放大。本文考虑了如何在执行用户研究之前通过使用计算工具评估其设计的某些方面来指导自拟合方法的设计。大多数现有的拟合方法提供了各种用户界面,允许用户从预先确定的预设集中选择配置。因此,预设必须满足很大一部分不同程度的听力损失和独特的听力偏好的用户的听力需求。为此,我们提出了一个新的指标,通过计算人口覆盖率来评估基于预设的方法的有效性。人口覆盖率估计自拟合方法可以找到他们喜欢的配置的用户比例。我们方法的一个独特方面是一个概率模型,它可以捕捉到用户的独特偏好与其他具有类似听力损失的用户的不同之处。接下来,我们提出了构建基于预设和基于滑块的自拟合方法的方法,以最大化人口覆盖率。仿真结果表明,与基于聚类的方法相比,该算法可以有效地选择少量预置,提供更高的种群覆盖率。此外,我们可以使用我们的算法来配置基于滑块的方法的增量数量。我们期望本文中提出的计算工具将有助于降低开发新的自拟合方法的成本,允许研究人员在进行用户研究之前评估人口覆盖率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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