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Unified Pathological Speech Analysis with Prompt Tuning

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arxiv 2411.04142 v1 pith:FUVW3AD5 submitted 2024-11-05 eess.AS cs.CLcs.SD

Unified Pathological Speech Analysis with Prompt Tuning

classification eess.AS cs.CLcs.SD
keywords analysispathologicalspeechdiseasediseasesprompttuningsystem
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Pathological speech analysis has been of interest in the detection of certain diseases like depression and Alzheimer's disease and attracts much interest from researchers. However, previous pathological speech analysis models are commonly designed for a specific disease while overlooking the connection between diseases, which may constrain performance and lower training efficiency. Instead of fine-tuning deep models for different tasks, prompt tuning is a much more efficient training paradigm. We thus propose a unified pathological speech analysis system for as many as three diseases with the prompt tuning technique. This system uses prompt tuning to adjust only a small part of the parameters to detect different diseases from speeches of possible patients. Our system leverages a pre-trained spoken language model and demonstrates strong performance across multiple disorders while only fine-tuning a fraction of the parameters. This efficient training approach leads to faster convergence and improved F1 scores by allowing knowledge to be shared across tasks. Our experiments on Alzheimer's disease, Depression, and Parkinson's disease show competitive results, highlighting the effectiveness of our method in pathological speech analysis.

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