File Download

There are no files associated with this item.

  • Find it @ UNIST can give you direct access to the published full text of this article. (UNISTARs only)
Related Researcher

공태식

Gong, Taesik
Ubiquitous AI Lab
Read More

Views & Downloads

Detailed Information

Cited time in webofscience Cited time in scopus
Metadata Downloads

DAPPER: Label-Free Performance Estimation after Personalization for Heterogeneous Mobile Sensing

Author(s)
Gong, TaesikKim, YewonOrzikulova, AdibaLiu, YunxinHwang, Sung JuShin, JinwooLee, Sung-Ju
Issued Date
2023-06
DOI
10.1145/3596256
URI
https://scholarworks.unist.ac.kr/handle/201301/84392
Citation
Proceedings of the ACM on Interactive, Mobile, Wearable and Ubiquitous Technologies, v.7, no.2, pp.3596256
Abstract
Many applications utilize sensors in mobile devices and machine learning to provide novel services. However, various factors such as different users, devices, and environments impact the performance of such applications, thus making the domain shift (i.e., distributional shift between the training domain and the target domain) a critical issue in mobile sensing. Despite attempts in domain adaptation to solve this challenging problem, their performance is unreliable due to the complex interplay among diverse factors. In principle, the performance uncertainty can be identified and redeemed by performance validation with ground-truth labels. However, it is infeasible for every user to collect high-quality, sufficient labeled data. To address the issue, we present DAPPER (Domain AdaPtation Performance EstimatoR) that estimates the adaptation performance in a target domain with only unlabeled target data. Our key idea is to approximate the model performance based on the mutual information between the model inputs and corresponding outputs. Our evaluation with four real-world sensing datasets compared against six baselines shows that on average, DAPPER outperforms the state-of-the-art baseline by 39.8% in estimation accuracy. Moreover, our on-device experiment shows that DAPPER achieves up to 396x less computation overhead compared with the baselines. © 2023 ACM.
Publisher
Association for Computing Machinery
ISSN
2474-9567
Keyword (Author)
Deep learningDomain adaptationMobile sensingPerformance estimation

qrcode

Items in Repository are protected by copyright, with all rights reserved, unless otherwise indicated.