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Psychophysical Detection Testing with Bayesian Active Learning

机译:贝叶斯主动学习的心理物理检测测试

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Psychophysical detection tests are ubiquitous in the study of human sensation and the diagnosis and treatment of virtually all sensory impairments. In many of these settings, the goal is to recover, from a series of binary observations from a human subject, the latent function that describes the discriminability of a sensory stimulus over some relevant domain. The auditory detection test, for example, seeks to understand a subject's likelihood of hearing sounds as a function of frequency and amplitude. Conventional methods for performing these tests involve testing stimuli on a pre-determined grid. This approach not only samples at very uninforma-tive locations, but also fails to learn critical features of a subject's latent discriminability function. Here we advance active learning with Gaussian processes to the setting of psychophysical testing. We develop a model that incorporates strong prior knowledge about the class of stimuli, we derive a sensible method for choosing sample points, and we demonstrate how to evaluate this model efficiently. Finally, we develop a novel likelihood that enables testing of multiple stimuli simultaneously. We evaluate our method in both simulated and real auditory detection tests, demonstrating the merit of our approach.
机译:心理物理检测测试在人类感觉的研究中普遍存在,几乎所有感官障碍的诊断和治疗。在许多这些设置中,目标是从人类主题的一系列二进制观察恢复,潜在的函数描述了一些相关领域的感官刺激的可怜。例如,听觉检测测试旨在了解听到听到声音的可能性作为频率和幅度的函数。用于执行这些测试的常规方法涉及在预定网格上测试刺激。这种方法不仅在非常不形式的位置上的样本,而且还没有学习受试者的潜在歧视性功能的关键特征。在这里,我们使用高斯过程进行主动学习,以实现心理物理测试。我们开发一个模型,该模型包含关于刺激类别的强大知识,我们推导出一种选择样本点的明智方法,我们演示了如何有效地评估该模型。最后,我们开发了一种新颖的可能性,可以同时测试多种刺激。我们在模拟和真正的听觉检测测试中评估我们的方法,展示了我们的方法的优点。

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