Predicting the Individual Mood Level based on Diary Data
Publikation: Beiträge in Sammelwerken › Aufsätze in Konferenzbänden › Forschung › begutachtet
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Proceedings of the 25th European Conference on Information Systems, ECIS 2017. AIS eLibrary, 2017. S. 1161-1177 (Proceedings of the 25th European Conference on Information Systems, ECIS 2017).
Publikation: Beiträge in Sammelwerken › Aufsätze in Konferenzbänden › Forschung › begutachtet
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}
RIS
TY - CHAP
T1 - Predicting the Individual Mood Level based on Diary Data
AU - Bremer, Vincent
AU - Becker, Dennis
AU - Funk, Burkhardt
AU - Lehr, Dirk
N1 - Conference code: 25
PY - 2017/6
Y1 - 2017/6
N2 - Understanding mood changes of individuals with depressive disorders is crucial in order to guide personalized therapeutic interventions. Based on diary data, in which clients of an online depression treatment report their activities as free text, we categorize these activities and predict the mood level of clients. Weapply a bag-of-words text-mining approach for activity categorization and explore recurrent neuronal networks to support this task. Using the identified activities, we develop partial ordered logit models with varying levels of heterogeneity among clients to predict their mood. We estimate the parameters of these models by employing Markov Chain Monte Carlo techniques and compare the models regarding their predictive performance. Therefore, by combining text-mining and Bayesian estimation techniques, we apply a two-stage analysis approach in order to reveal relationships between various activity categories and the individual mood level. Our findings indicate that the mood level is influenced negatively when participants report about sickness or rumination. Social activities have a positive influence on the mood.By understanding the influences of daily activities on the individual mood level, we hope to improve the efficacy of online behavior therapy, provide support in the context of clinical decision-making, and contribute to the development of personalized interventions.
AB - Understanding mood changes of individuals with depressive disorders is crucial in order to guide personalized therapeutic interventions. Based on diary data, in which clients of an online depression treatment report their activities as free text, we categorize these activities and predict the mood level of clients. Weapply a bag-of-words text-mining approach for activity categorization and explore recurrent neuronal networks to support this task. Using the identified activities, we develop partial ordered logit models with varying levels of heterogeneity among clients to predict their mood. We estimate the parameters of these models by employing Markov Chain Monte Carlo techniques and compare the models regarding their predictive performance. Therefore, by combining text-mining and Bayesian estimation techniques, we apply a two-stage analysis approach in order to reveal relationships between various activity categories and the individual mood level. Our findings indicate that the mood level is influenced negatively when participants report about sickness or rumination. Social activities have a positive influence on the mood.By understanding the influences of daily activities on the individual mood level, we hope to improve the efficacy of online behavior therapy, provide support in the context of clinical decision-making, and contribute to the development of personalized interventions.
KW - Business informatics
KW - Decision Support
KW - E-mental health
KW - Text-Mining
KW - Bayesian Method
KW - Personalized Treatments
UR - http://www.scopus.com/inward/record.url?scp=85045636125&partnerID=8YFLogxK
UR - https://www.mendeley.com/catalogue/e76a3afb-4841-3f45-b4db-535a01fe2af8/
M3 - Article in conference proceedings
SN - 978-989-20-7655-3
T3 - Proceedings of the 25th European Conference on Information Systems, ECIS 2017
SP - 1161
EP - 1177
BT - Proceedings of the 25th European Conference on Information Systems, ECIS 2017
PB - AIS eLibrary
T2 - 25th European Conference on Information Systems - ECIS 2017
Y2 - 5 June 2017 through 10 June 2017
ER -