A Supervised Learning Approach to Protect Client Authentication on the Web

Author:

Calzavara Stefano1,Tolomei Gabriele2,Casini Andrea1,Bugliesi Michele1,Orlando Salvatore1

Affiliation:

1. Università Ca’ Foscari Venezia, Venezia Mestre (Italy)

2. Università Ca’ Foscari Venezia; Yahoo Labs, London UK

Abstract

Browser-based defenses have recently been advocated as an effective mechanism to protect potentially insecure web applications against the threats of session hijacking, fixation, and related attacks. In existing approaches, all such defenses ultimately rely on client-side heuristics to automatically detect cookies containing session information, to then protect them against theft or otherwise unintended use. While clearly crucial to the effectiveness of the resulting defense mechanisms, these heuristics have not, as yet, undergone any rigorous assessment of their adequacy. In this article, we conduct the first such formal assessment, based on a ground truth of 2,464 cookies we collect from 215 popular websites of the Alexa ranking. To obtain the ground truth, we devise a semiautomatic procedure that draws on the novel notion of authentication token , which we introduce to capture multiple web authentication schemes. We test existing browser-based defenses in the literature against our ground truth, unveiling several pitfalls both in the heuristics adopted and in the methods used to assess them. We then propose a new detection method based on supervised learning , where our ground truth is used to train a set of binary classifiers, and report on experimental evidence that our method outperforms existing proposals. Interestingly, the resulting classifiers, together with our hands-on experience in the construction of the ground truth, provide new insight on how web authentication is actually implemented in practice.

Funder

Italian Ministry of University and Research (MIUR) Projects PON TETRis

PON ADAPT

Italian Ministry of Economic Development Project MOTUS

PRIN CINA

Publisher

Association for Computing Machinery (ACM)

Subject

Computer Networks and Communications

Reference40 articles.

1. Empirical characterization of random forest variable importance measures

2. Michele Bugliesi Stefano Calzavara Riccardo Focardi and Wilayat Khan. 2014a. Automatic and robust client-side protection for cookie-based sessions. In Engineering Secure Software and Systems (ESSoS’14). 161--178. 10.1007/978-3-319-04897-0_11 Michele Bugliesi Stefano Calzavara Riccardo Focardi and Wilayat Khan. 2014a. Automatic and robust client-side protection for cookie-based sessions. In Engineering Secure Software and Systems (ESSoS’14). 161--178. 10.1007/978-3-319-04897-0_11

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