| Literature DB >> 27990501 |
Soujanya Chatterjee1, Karen Hovsepian2, Hillol Sarker1, Nazir Saleheen1, Mustafa al'Absi3, Gowtham Atluri3, Emre Ertin4, Cho Lam5, Andrine Lemieux3, Motohiro Nakajima3, Bonnie Spring6, David W Wetter5, Santosh Kumar1.
Abstract
Craving usually precedes a lapse for impulsive behaviors such as overeating, drinking, smoking, and drug use. Passive estimation of craving from sensor data in the natural environment can be used to assist users in coping with craving. In this paper, we take the first steps towards developing a computational model to estimate cigarette craving (during smoking abstinence) at the minute-level using mobile sensor data. We use 2,012 hours of sensor data and 1,812 craving self-reports from 61 participants in a smoking cessation study. To estimate craving, we first obtain a continuous measure of stress from sensor data. We find that during hours of day when craving is high, stress associated with self-reported high craving is greater than stress associated with low craving. We use this and other insights to develop feature functions, and encode them as pattern detectors in a Conditional Random Field (CRF) based model to infer craving probabilities.Entities:
Keywords: Craving; H.1.2. Models and Principles: User/Machine Systems; Mobile Health; Smoking Cessation; Stress
Year: 2016 PMID: 27990501 PMCID: PMC5161415 DOI: 10.1145/2971648.2971672
Source DB: PubMed Journal: Proc ACM Int Conf Ubiquitous Comput