Multi-class versus One-class classifier in spontaneous speech analysis
oriented to Alzheimer Disease diagnosis
- URL: http://arxiv.org/abs/2203.10837v1
- Date: Mon, 21 Mar 2022 09:57:20 GMT
- Title: Multi-class versus One-class classifier in spontaneous speech analysis
oriented to Alzheimer Disease diagnosis
- Authors: K. L\'opez-de-Ipi\~na, Marcos Faundez-Zanuy, Jordi Sol\'e-Casals,
Fernando Zelarin, Pilar Calvo
- Abstract summary: The aim of our project is to contribute to earlier diagnosis of AD and better estimates of its severity by using automatic analysis performed through new biomarkers extracted from speech signal.
The use of information about outlier and Fractal Dimension features improves the system performance.
- Score: 58.720142291102135
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Most of medical developments require the ability to identify samples that are
anomalous with respect to a target group or control group, in the sense they
could belong to a new, previously unseen class or are not class data. In this
case when there are not enough data to train two-class One-class classification
appear like an available solution. On the other hand non-linear approaches
could give very useful information. The aim of our project is to contribute to
earlier diagnosis of AD and better estimates of its severity by using automatic
analysis performed through new biomarkers extracted from speech signal. The
methods selected in this case are speech biomarkers oriented to Spontaneous
Speech and Emotional Response Analysis. In this approach One-class classifiers
and two-class classifiers are analyzed. The use of information about outlier
and Fractal Dimension features improves the system performance.
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