心理健康文献检索的效价唤醒分析

P. Hu, ShaoZhen Ye, Liang-Chih Yu, K. R. Lai
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引用次数: 0

摘要

抑郁症发病率的增加引起了人们对心理健康文献检索技术的越来越多的关注,这些技术旨在帮助个人有效地找到与他们的抑郁问题相关的文献和资源。然而,目前的检索系统通常精度较低。我们提出将基于Valence-Arousal-based的检索模型与其他基于词的检索模型相结合,以提高检索结果的精度。基于va的检索模型考虑从查询中提取的情感词,这有助于更好地理解用户查询。实验结果表明,该组合方法优于单独采用词级信息的基于词的检索模型,如向量空间模型和BM25模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Valence-arousal analysis for mental-health document retrieval
The increasing incidence of depression has attracted increased attention to mental-health document retrieval techniques which aims to help individuals efficiently locate documents and resources relevant to their depressive problems. However, current retrieval systems generally have low accuracy. We propose combining a Valence-Arousal-based (VA-based) retrieval model and other word-based retrieval models to improve the precision of retrieval results. The VA-based retrieval model considers affective words extracted from queries, which help provide a better understanding of user queries. Experimental results demonstrate that the combined methods outperform the word-based retrieval models which adopt word-level information alone, such as vector space model and BM25 model.
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