TY - GEN
T1 - Mining online social data for detecting social network mental disorders
AU - Shuai, Hong Han
AU - Shen, Chih Ya
AU - Yang, De Nian
AU - Lan, Yi Feng
AU - Lee, Wang Chien
AU - Yu, Philip S.
AU - Chen, Ming Syan
N1 - Funding Information:
Ministry of Science and Technology through grants MOST 104-2221-E-002-214-MY3, 103-2221-E-001-005-MY2, and 104-2221-E-001-005-MY2
PY - 2016
Y1 - 2016
N2 - An increasing number of social network mental disorders (SNMDs), such as Cyber-Relationship Addiction, Information Overload, and Net Compulsion, have been recently noted. Symptoms of these mental disorders are usually observed passively today, resulting in delayed clinical intervention. In this paper, we argue that mining online social behavior provides an opportunity to actively identify SNMDs at an early stage. It is challenging to detect SNMDs because the mental factors considered in standard diagnostic criteria (questionnaire) cannot be observed from online social activity logs. Our approach, new and innovative to the practice of SNMD detection, does not rely on self-revealing of those mental factors via questionnaires. Instead, we propose a machine learning framework, namely, Social Network Mental Disorder Detection (SNMDD), that exploits features extracted from social network data to accurately identify potential cases of SNMDs. We also exploit multi-source learning in SNMDD and propose a new SNMDbased Tensor Model (STM) to improve the performance. Our framework is evaluated via a user study with 3126 online social network users. We conduct a feature analysis, and also apply SNMDD on large-scale datasets and analyze the characteristics of the three SNMD types. The results show that SNMDD is promising for identifying online social network users with potential SNMDs.
AB - An increasing number of social network mental disorders (SNMDs), such as Cyber-Relationship Addiction, Information Overload, and Net Compulsion, have been recently noted. Symptoms of these mental disorders are usually observed passively today, resulting in delayed clinical intervention. In this paper, we argue that mining online social behavior provides an opportunity to actively identify SNMDs at an early stage. It is challenging to detect SNMDs because the mental factors considered in standard diagnostic criteria (questionnaire) cannot be observed from online social activity logs. Our approach, new and innovative to the practice of SNMD detection, does not rely on self-revealing of those mental factors via questionnaires. Instead, we propose a machine learning framework, namely, Social Network Mental Disorder Detection (SNMDD), that exploits features extracted from social network data to accurately identify potential cases of SNMDs. We also exploit multi-source learning in SNMDD and propose a new SNMDbased Tensor Model (STM) to improve the performance. Our framework is evaluated via a user study with 3126 online social network users. We conduct a feature analysis, and also apply SNMDD on large-scale datasets and analyze the characteristics of the three SNMD types. The results show that SNMDD is promising for identifying online social network users with potential SNMDs.
UR - http://www.scopus.com/inward/record.url?scp=85026196990&partnerID=8YFLogxK
UR - http://www.scopus.com/inward/citedby.url?scp=85026196990&partnerID=8YFLogxK
U2 - 10.1145/2872427.2882996
DO - 10.1145/2872427.2882996
M3 - Conference contribution
AN - SCOPUS:85026196990
T3 - 25th International World Wide Web Conference, WWW 2016
SP - 275
EP - 285
BT - 25th International World Wide Web Conference, WWW 2016
PB - International World Wide Web Conferences Steering Committee
T2 - 25th International World Wide Web Conference, WWW 2016
Y2 - 11 April 2016 through 15 April 2016
ER -