Common Evaluation Pitfalls in Touch-Based Authentication Systems


연구 분야: Analysis



학회: ASIA CCS '22: Proceedings of the 2022 ACM on Asia Conference on Computer and Communications Security


초록

In this paper, we investigate common pitfalls affecting the evaluation of authentication systems based on touch dynamics. We consider different factors that lead to misrepresented performance, are incompatible with stated system and threat models or impede reproducibility and comparability with previous work. Specifically, we investigate the effects of (i) small sample sizes (both number of users and recording sessions), (ii) using different phone models in training data, (iii) selecting non-contiguous training data, (iv) inserting attacker samples in training data and (v) swipe aggregation. We perform a systematic review of 30 touch dynamics papers showing that all of them overlook at least one of these pitfalls. To quantify each pitfall's effect, we design a set of experiments and collect a new longitudinal dataset of touch dynamics from 470 users over 31 days comprised of 1,166,092 unique swipes. We make this dataset and our code available online. Our results show significant percentage-point changes in reported mean EER for several pitfalls: including attacker data (2.55%), non-contiguous training data (3.8%), phone model mixing (3.2%-5.8%). We show that, in a common evaluation setting, cumulative effects of these evaluation choices result in a combined difference of 8.9% EER. We also largely observe these effects across the entire ROC curve. Furthermore, we validate the pitfalls on four distinct classifiers - SVM, Random Forest, Neural Network, and kNN. Based on these insights, we propose a set of best practices that, if followed, will lead to more realistic and comparable reporting of results in the field.


Author Profile
Martin Georgiev

University of Oxford Oxford United Kingdom

United Kingdom
Author Profile
Simon Eberz

University of Oxford Oxford United Kingdom

United Kingdom
Author Profile
Henry Turner

University of Oxford Oxford United Kingdom

United Kingdom

📄 논문 정보

발행 연도 2022년
인용수 10
출판 국가 United Kingdom
사이트 ACM
좋아요 수 0

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