A Novel Decision Tree for Depression Recognition in Speech

02/22/2020
by   Zhenyu Liu, et al.
0

Depression is a common mental disorder worldwide which causes a range of serious outcomes. The diagnosis of depression relies on patient-reported scales and psychiatrist interview which may lead to subjective bias. In recent years, more and more researchers are devoted to depression recognition in speech , which may be an effective and objective indicator. This study proposes a new speech segment fusion method based on decision tree to improve the depression recognition accuracy and conducts a validation on a sample of 52 subjects (23 depressed patients and 29 healthy controls). The recognition accuracy are 75.8 and 68.5 be concluded from the data that the proposed decision tree model can improve the depression classification performance.

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