Implementation of Machine Learning on Human Frequency-Following Responses: A Tutorial.

Q2 Health Professions Seminars in Hearing Pub Date : 2022-10-26 eCollection Date: 2022-08-01 DOI:10.1055/s-0042-1756219
Fuh-Cherng Jeng, Yu-Shiang Jeng
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引用次数: 1

Abstract

The frequency-following response (FFR) provides enriched information on how acoustic stimuli are processed in the human brain. Based on recent studies, machine learning techniques have demonstrated great utility in modeling human FFRs. This tutorial focuses on the fundamental principles, algorithmic designs, and custom implementations of several supervised models (linear regression, logistic regression, k -nearest neighbors, support vector machines) and an unsupervised model ( k -means clustering). Other useful machine learning tools (Markov chains, dimensionality reduction, principal components analysis, nonnegative matrix factorization, and neural networks) are discussed as well. Each model's applicability and its pros and cons are explained. The choice of a suitable model is highly dependent on the research question, FFR recordings, target variables, extracted features, and their data types. To promote understanding, an example project implemented in Python is provided, which demonstrates practical usage of several of the discussed models on a sample dataset of six FFR features and a target response label.

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人类频率跟随反应的机器学习实现:教程。
频率跟随反应(FFR)提供了关于人类大脑中如何处理声学刺激的丰富信息。基于最近的研究,机器学习技术在建模人类FFR方面表现出了巨大的实用性。本教程重点介绍几种有监督模型(线性回归、逻辑回归、k-近邻、支持向量机)和无监督模型(k-均值聚类)的基本原理、算法设计和自定义实现。还讨论了其他有用的机器学习工具(马尔可夫链、降维、主成分分析、非负矩阵分解和神经网络)。解释了每种模型的适用性及其优缺点。选择合适的模型在很大程度上取决于研究问题、血流储备分数记录、目标变量、提取的特征及其数据类型。为了促进理解,提供了一个用Python实现的示例项目,该项目展示了在由六个FFR特征和一个目标响应标签组成的样本数据集上所讨论的几个模型的实际使用。
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来源期刊
Seminars in Hearing
Seminars in Hearing Health Professions-Speech and Hearing
CiteScore
3.30
自引率
0.00%
发文量
29
期刊介绍: Seminars in Hearing is a quarterly review journal that publishes topic-specific issues in the field of audiology including areas such as hearing loss, auditory disorders and psychoacoustics. The journal presents the latest clinical data, new screening and assessment techniques, along with suggestions for improving patient care in a concise and readable forum. Technological advances with regards to new auditory devices are also featured. The journal"s content is an ideal reference for both the practicing audiologist as well as an excellent educational tool for students who require the latest information on emerging techniques and areas of interest in the field.
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Errata: Unleashing the Power of Test Box and Real-Ear Probe Microphone Measurement. Chapter 3: Setting the Hearing Aid Response and Verifying Signal Processing and Features in the Test Box Chapter 5: Setting the Hearing Aid Response and Verifying Signal Processing and Features with Real-Ear Probe Microphone Measures Chapter 2: My Hearing Aid Isn't Working Like It Used to… How to Use This Workbook.
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