A prompt-based topic-modeling method for depression detection on low-resource data

Depression has a large impact on one’s personal life, especially during the COVID-19 pandemic. People have been trying to develop reliable methods for the depression detection task. Recently, methods based on deep learning have attracted much attention from the research community. However, they stil...

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Main Authors: GUO, Yanrong, LIU, Jilong, WANG, Lei, QIN, Wwi, HAO, Shijie, HONG, Richang
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Language:English
Published: Institutional Knowledge at Singapore Management University 2024
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Online Access:https://ink.library.smu.edu.sg/lkcsb_research/7469
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spelling sg-smu-ink.lkcsb_research-84682024-02-22T03:00:04Z A prompt-based topic-modeling method for depression detection on low-resource data GUO, Yanrong LIU, Jilong WANG, Lei QIN, Wwi HAO, Shijie HONG, Richang Depression has a large impact on one’s personal life, especially during the COVID-19 pandemic. People have been trying to develop reliable methods for the depression detection task. Recently, methods based on deep learning have attracted much attention from the research community. However, they still face the challenge that data collection and annotation are difficult and expensive. In many real-world applications, only a small number of or even no training data are available. In this context, we propose a Prompt-based Topic-modeling method for Depression Detection (PTDD) on low-resource data, aiming to establish an effective way of depression detection under the above challenging situation. Instead of learning discriminating features from a small amount of labeled data, the proposed framework turns to leverage the generalization power of pretrained language models. Specifically, based on the question-and-answer routine during the interview, we first reorganize the text data according to the predefined topics for each interviewee. Via the prompt-based framework, we then predict whether the next-sentence prompt is emotionally positive or not. Finally, the depression detection task can be achieved based on the obtained topicwise predictions through a simple voting process. In the experiments, we validate the effectiveness of our model under several low-resource data settings. The results and analysis demonstrate that our PTDD achieves acceptable performance when only a few training samples or even no training samples are available. 2024-02-01T08:00:00Z text https://ink.library.smu.edu.sg/lkcsb_research/7469 info:doi/10.1109/TCSS.2023.3260080 Research Collection Lee Kong Chian School Of Business eng Institutional Knowledge at Singapore Management University Depression detection low resource prompt learning Databases and Information Systems
institution Singapore Management University
building SMU Libraries
continent Asia
country Singapore
Singapore
content_provider SMU Libraries
collection InK@SMU
language English
topic Depression detection
low resource
prompt learning
Databases and Information Systems
spellingShingle Depression detection
low resource
prompt learning
Databases and Information Systems
GUO, Yanrong
LIU, Jilong
WANG, Lei
QIN, Wwi
HAO, Shijie
HONG, Richang
A prompt-based topic-modeling method for depression detection on low-resource data
description Depression has a large impact on one’s personal life, especially during the COVID-19 pandemic. People have been trying to develop reliable methods for the depression detection task. Recently, methods based on deep learning have attracted much attention from the research community. However, they still face the challenge that data collection and annotation are difficult and expensive. In many real-world applications, only a small number of or even no training data are available. In this context, we propose a Prompt-based Topic-modeling method for Depression Detection (PTDD) on low-resource data, aiming to establish an effective way of depression detection under the above challenging situation. Instead of learning discriminating features from a small amount of labeled data, the proposed framework turns to leverage the generalization power of pretrained language models. Specifically, based on the question-and-answer routine during the interview, we first reorganize the text data according to the predefined topics for each interviewee. Via the prompt-based framework, we then predict whether the next-sentence prompt is emotionally positive or not. Finally, the depression detection task can be achieved based on the obtained topicwise predictions through a simple voting process. In the experiments, we validate the effectiveness of our model under several low-resource data settings. The results and analysis demonstrate that our PTDD achieves acceptable performance when only a few training samples or even no training samples are available.
format text
author GUO, Yanrong
LIU, Jilong
WANG, Lei
QIN, Wwi
HAO, Shijie
HONG, Richang
author_facet GUO, Yanrong
LIU, Jilong
WANG, Lei
QIN, Wwi
HAO, Shijie
HONG, Richang
author_sort GUO, Yanrong
title A prompt-based topic-modeling method for depression detection on low-resource data
title_short A prompt-based topic-modeling method for depression detection on low-resource data
title_full A prompt-based topic-modeling method for depression detection on low-resource data
title_fullStr A prompt-based topic-modeling method for depression detection on low-resource data
title_full_unstemmed A prompt-based topic-modeling method for depression detection on low-resource data
title_sort prompt-based topic-modeling method for depression detection on low-resource data
publisher Institutional Knowledge at Singapore Management University
publishDate 2024
url https://ink.library.smu.edu.sg/lkcsb_research/7469
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