听力障碍诊断的特征选择策略比较

Iryna Skrypnyk
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引用次数: 4

摘要

听力损伤的诊断是数据挖掘技术中的一个重要问题。听力状态可以通过语音结构中继发于听觉控制受限的多态障碍的测量来描述。诊断性语音分析确定可用于听力状态边缘估计的语音描述符。这是大多数预测数据挖掘方法难以解决的问题。语音描述符集中存在强相关和冗余信息可能是导致预测精度低的原因之一。在本文中,不同的特征选择技术通过在建模发声器官功能变化与听觉控制受限之间的依赖关系时,通过丢弃不相关和冗余的语音描述符来提高预测精度的能力来进行评估。由于不同预测方法的预测结果不同,因此考虑某种特征选择技术相对于预测方法的适用性,并将其作为一种特征选择策略进行评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparison of feature selection strategies for hearing impairments diagnostics
Diagnostics of hearing impairments is a non-trivial problem for data mining techniques. The state of hearing can be described via a measurement of polymorphic disorders in the voice structure that are secondary to restricted auditory control. The diagnostic voice analysis determines voice descriptors that can be used for marginal estimation of the state of hearing. This problem is hard for most of the predictive data mining methods. The presence of strongly correlated and redundant information in the set of voice descriptors might be one reason for the low prediction accuracy. In this paper, different feature selection techniques are evaluated by their ability to raise the prediction accuracy by discarding irrelevant and redundant voice descriptors when modeling the dependency between functional changes within a phonatory organ and restricted auditory control. As the result of the prediction varies for different prediction methods, the applicability of certain feature selection technique is considered with respect to the prediction method and evaluated as a feature selection strategy.
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