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Hauptverfasser: Rutowski, Tomek, Shriberg, Elizabeth, Harati, Amir, Lu, Yang, Oliveira, Ricardo, Chlebek, Piotr
Format: Preprint
Veröffentlicht: 2024
Schlagworte:
Online-Zugang:https://arxiv.org/abs/2412.19070
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author Rutowski, Tomek
Shriberg, Elizabeth
Harati, Amir
Lu, Yang
Oliveira, Ricardo
Chlebek, Piotr
author_facet Rutowski, Tomek
Shriberg, Elizabeth
Harati, Amir
Lu, Yang
Oliveira, Ricardo
Chlebek, Piotr
contents Deep learning models are rapidly gaining interest for real-world applications in behavioral health. An important gap in current literature is how well such models generalize over different populations. We study Natural Language Processing (NLP) based models to explore portability over two different corpora highly mismatched in age. The first and larger corpus contains younger speakers. It is used to train an NLP model to predict depression. When testing on unseen speakers from the same age distribution, this model performs at AUC=0.82. We then test this model on the second corpus, which comprises seniors from a retirement community. Despite the large demographic differences in the two corpora, we saw only modest degradation in performance for the senior-corpus data, achieving AUC=0.76. Interestingly, in the senior population, we find AUC=0.81 for the subset of patients whose health state is consistent over time. Implications for demographic portability of speech-based applications are discussed.
format Preprint
id arxiv_https___arxiv_org_abs_2412_19070
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Cross-Demographic Portability of Deep NLP-Based Depression Models
Rutowski, Tomek
Shriberg, Elizabeth
Harati, Amir
Lu, Yang
Oliveira, Ricardo
Chlebek, Piotr
Computation and Language
Deep learning models are rapidly gaining interest for real-world applications in behavioral health. An important gap in current literature is how well such models generalize over different populations. We study Natural Language Processing (NLP) based models to explore portability over two different corpora highly mismatched in age. The first and larger corpus contains younger speakers. It is used to train an NLP model to predict depression. When testing on unseen speakers from the same age distribution, this model performs at AUC=0.82. We then test this model on the second corpus, which comprises seniors from a retirement community. Despite the large demographic differences in the two corpora, we saw only modest degradation in performance for the senior-corpus data, achieving AUC=0.76. Interestingly, in the senior population, we find AUC=0.81 for the subset of patients whose health state is consistent over time. Implications for demographic portability of speech-based applications are discussed.
title Cross-Demographic Portability of Deep NLP-Based Depression Models
topic Computation and Language
url https://arxiv.org/abs/2412.19070