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Evaluating instrumental measures of speech quality using Bayesian model selection: Correlations can be misleading!

机译:使用贝叶斯模型选择评估语音质量的工具度量:相关性可能会误导您!

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Choosing among competing models of collected data is crucial for all sciences. In the last decade there has been an increasing tendency to use Bayesian methods throughout many fields. When assessing the performance of instrumental measures of speech quality, classical measures such as correlation coefficients are still used. While these methods have their merits, they discard information about the data distribution, such as variability. They are useful as absolute measures of fit, but often not suitable for comparing different models. This paper uses Bayesian model selection, which does not suffer from these shortcomings, as it takes all information about the distribution of data into account and yields easily interpretable model probabilities. Two instrumental measures of speech quality are evaluated using data obtained in an absolute category rating (ACR) test. The results are compared and discussed. Bayesian methods prove superior for comparing instrumental measures, especially when the correlation of both measures is either poor or nearly identical. The proposed estimation procedure is highly recommended in selection phases for standardization bodies such as ITU-T, ETSI, 3GPP
机译:选择收集数据的竞争模式对于所有科学至关重要。在过去的十年中,在许多领域中使用贝叶斯方法越来越越来越大。在评估语音质量仪器测量的性能时,仍然使用诸如相关系数的经典措施。虽然这些方法具有它们的优点,但它们丢弃有关数据分布的信息,例如可变性。它们作为适合的绝对衡量标准,但通常不适合比较不同的模型。本文使用贝叶斯模型选择,不会遭受这些缺点,因为它需要有关数据分发的所有信息,并产生容易解释的模型概率。使用在绝对类别额定值(ACR)测试中获得的数据来评估两种乐形措施。结果进行了比较和讨论。贝叶斯方法证明了乐器措施的卓越,特别是当两种措施的相关性差或几乎相同时。建议的估算程序强烈推荐在ITU-T,ETSI,3GPP等标准化机构的选择阶段中

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