Detecting depression using an ensemble logistic regression model based on multiple speech features (Q1634241)
From MaRDI portal
| This is the item page for this Wikibase entity, intended for internal use and editing purposes. Please use this page instead for the normal view: Detecting depression using an ensemble logistic regression model based on multiple speech features |
scientific article; zbMATH DE number 6994501
| Language | Label | Description | Also known as |
|---|---|---|---|
| English | Detecting depression using an ensemble logistic regression model based on multiple speech features |
scientific article; zbMATH DE number 6994501 |
Statements
Detecting depression using an ensemble logistic regression model based on multiple speech features (English)
0 references
18 December 2018
0 references
Summary: Early intervention for depression is very important to ease the disease burden, but current diagnostic methods are still limited. This study investigated automatic depressed speech classification in a sample of 170 native Chinese subjects (85 healthy controls and 85 depressed patients). The classification performances of prosodic, spectral, and glottal speech features were analyzed in recognition of depression. We proposed an ensemble logistic regression model for detecting depression (ELRDD) in speech. The logistic regression, which was superior in recognition of depression, was selected as the base classifier. This ensemble model extracted many speech features from different aspects and ensured diversity of the base classifier. ELRDD provided better classification results than the other compared classifiers. A technique for identifying depression based on ELRDD, ELRDD-E, was here suggested and tested. It offered encouraging outcomes, revealing a high accuracy level of 75.00\% for females and 81.82\% for males, as well as an advantageous sensitivity/specificity ratio of 79.25\%/70.59\% for females and 78.13\%/85.29\% for males.
0 references
depression detection
0 references
speech features
0 references
ensemble logistic regression model
0 references
0.8688835
0 references
0.8601552
0 references