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.

[1]  Piek T. J. M. Vossen,et al.  The Top-Down Strategy for Building EuroWordNet: Vocabulary Coverage, Base Concepts and Top Ontology , 1998, Comput. Humanit..

[2]  Fuji Ren,et al.  Predicting User-Topic Opinions in Twitter with Social and Topical Context , 2013, IEEE Transactions on Affective Computing.

[3]  Matthew S. Gerber,et al.  Model Adaptation for Personalized Opinion Analysis , 2015, ACL.

[4]  Xue Bai,et al.  Predicting consumer sentiments from online text , 2011, Decis. Support Syst..

[5]  P. Ekman An argument for basic emotions , 1992 .

[6]  Robert H. Baud,et al.  Recent advances in natural language processing for biomedical applications , 2006, Int. J. Medical Informatics.

[7]  Munmun De Choudhury,et al.  Not All Moods Are Created Equal! Exploring Human Emotional States in Social Media , 2012, ICWSM.

[8]  Sunghwan Mac Kim,et al.  EMOTIONS IN TEXT: DIMENSIONAL AND CATEGORICAL MODELS , 2013, Comput. Intell..

[9]  Haris Papageorgiou,et al.  SemEval-2016 Task 5: Aspect Based Sentiment Analysis , 2016, *SEMEVAL.

[10]  Chung-Hsien Wu,et al.  Psychiatric document retrieval using a discourse-aware model , 2009, Artif. Intell..

[11]  M. Yik A circumplex model of affect and its relation to personality : a five-language study , 1999 .

[12]  Gerard Salton,et al.  Term-Weighting Approaches in Automatic Text Retrieval , 1988, Inf. Process. Manag..

[13]  Jing Jiang,et al.  A Latent Variable Model for Viewpoint Discovery from Threaded Forum Posts , 2013, NAACL.

[14]  K. Robert Lai,et al.  Community-Based Weighted Graph Model for Valence-Arousal Prediction of Affective Words , 2016, IEEE/ACM Transactions on Audio, Speech, and Language Processing.

[15]  Chao-Cheng Lin,et al.  Reliability of information provided by patients of a virtual psychiatric clinic. , 2003, Psychiatric services.

[16]  Elena García Barriocanal,et al.  An empirical analysis of ontology-based query expansion for learning resource searches using MERLOT and the Gene ontology , 2011, Knowl. Based Syst..

[17]  Jeffrey V. Nickerson,et al.  Online Review Systems: How emotional language drives sales , 2014, AMCIS.

[18]  Liang-Chih Yu,et al.  Identifying Emotion Labels from Psychiatric Social Texts Using Independent Component Analysis , 2014, COLING.

[19]  Kim Schouten,et al.  Survey on Aspect-Level Sentiment Analysis , 2016, IEEE Transactions on Knowledge and Data Engineering.

[20]  Stephen E. Robertson,et al.  Okapi at TREC-4 , 1995, TREC.

[21]  Ronen Feldman,et al.  Techniques and applications for sentiment analysis , 2013, CACM.

[22]  Christiane Fellbaum,et al.  Book Reviews: WordNet: An Electronic Lexical Database , 1999, CL.