| Literature DB >> 28090605 |
Annamalai Natarajan1, Gustavo Angarita2, Edward Gaiser2, Robert Malison2, Deepak Ganesan1, Benjamin M Marlin1.
Abstract
Mobile health research on illicit drug use detection typically involves a two-stage study design where data to learn detectors is first collected in lab-based trials, followed by a deployment to subjects in a free-living environment to assess detector performance. While recent work has demonstrated the feasibility of wearable sensors for illicit drug use detection in the lab setting, several key problems can limit lab-to-field generalization performance. For example, lab-based data collection often has low ecological validity, the ground-truth event labels collected in the lab may not be available at the same level of temporal granularity in the field, and there can be significant variability between subjects. In this paper, we present domain adaptation methods for assessing and mitigating potential sources of performance loss in lab-to-field generalization and apply them to the problem of cocaine use detection from wearable electrocardiogram sensor data.Entities:
Keywords: Covariate shift; classification; cocaine detection; domain adaptation; prior probability shift; wearable sensors
Year: 2016 PMID: 28090605 PMCID: PMC5235327 DOI: 10.1145/2971648.2971666
Source DB: PubMed Journal: Proc ACM Int Conf Ubiquitous Comput