The contribution of prosody to machine classification of schizophrenia
Tomer Moshe, Ido Ziv, Nachum Dershowitz, Kfir Bar
Abstract
We show how acoustic prosodic features, such as pitch and gaps, can be used computationally for detecting symptoms of schizophrenia from a single spoken response. We compare the individual contributions of acoustic and previously-employed text modalities to the algorithmic determination whether the speaker has schizophrenia. Our classification results clearly show that we can extract relevant acoustic features better than those textual ones. We find that, when combined with those acoustic features, textual features improve classification only slightly.
Topics & Concepts
ProsodySchizophrenia (object-oriented programming)PsychologyCognitive psychologyNatural language processingLinguisticsArtificial intelligenceComputer sciencePhilosophyPsychiatryMachine Learning in HealthcareEmotion and Mood RecognitionFractal and DNA sequence analysis