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Using an analogical reasoning framework to infer language patterns for negative life events

Feelings of depression can be caused by negative life events (NLE) such as the death of a family member, a quarrel with one's spouse, job loss, or strong criticism from an authority figure. The automatic and accurate identification of negative life event language patterns (NLE-LP) can help iden...

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Published in:BMC medical informatics and decision making 2019-08, Vol.19 (1), p.173-173, Article 173
Main Authors: Wu, Jheng-Long, Xiao, Xiang, Yu, Liang-Chih, Ye, Shao-Zhen, Lai, K Robert
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description Feelings of depression can be caused by negative life events (NLE) such as the death of a family member, a quarrel with one's spouse, job loss, or strong criticism from an authority figure. The automatic and accurate identification of negative life event language patterns (NLE-LP) can help identify individuals potentially in need of psychiatric services. An NLE-LP combines a person (subject) and a reasonable negative life event (action), e.g. or . This paper proposes an analogical reasoning framework which combines a word representation approach and a pattern inference method to mine/extract NLE-LPs from psychiatric consultation documents. Word representation approaches such as skip-gram (SG) and continuous bag-of-words (CBOW) are used to generate word embeddings. Pattern inference methods such as cosine similarity (COSINE) and cosine multiplication similarity (COSMUL) are used to infer patterns. Experimental results show our proposed analogical reasoning framework outperforms the traditional methods such as positive pairwise mutual information (PPMI) and hyperspace analog to language (HAL), and can effectively mine highly precise NLE-LPs based on word embeddings. CBOW with COSINE of analogical reasoning is the best word representation and inference engine. In addition, both word embeddings and the inference engine provided by the analogical reasoning framework can further be used to improve the HAL model. Our proposed framework is a very simple matching function based on these word representation approaches and is applied to significantly improve HAL model mining performance.
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subjects Analogical reasoning
Clinical Decision-Making
Cognition & reasoning
Consultation
Death
Depression (Mood disorder)
Divorce
Humans
Hyperspaces
Inference
Language
Language pattern mining
Life Change Events
Mental Health Services
Mining industry
Multiplication
Natural language processing
Needs Assessment
Negative life event
Problem Solving
Reasoning
Representations
Risk factors
Similarity
Social media
Suicide
Technical Advance
Words (language)
title Using an analogical reasoning framework to infer language patterns for negative life events
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