Visible to the public XSS detection with automatic view isolation on online social network

TitleXSS detection with automatic view isolation on online social network
Publication TypeConference Paper
Year of Publication2016
AuthorsChaudhary, P., Gupta, B. B., Yamaguchi, S.
Conference Name2016 IEEE 5th Global Conference on Consumer Electronics
Date PublishedOct. 2016
PublisherIEEE
ISBN Number978-1-5090-2333-2
Keywordsauthentication, automatic view isolation, composability, Conferences, Consumer electronics, Cross Site Scripting, cross-site scripting, Cross-site scripting (XSS), Decision support systems, false negatives rate, false positive rate, Human Behavior, Humhub, Internet, Isolators, malicious code, online social network, OSN, OSN-based Web application, pubcrawl, Radio frequency, Request Authentication, Resiliency, security of data, Session, social networking (online), string value extraction, Uniform resource locators, Web page, XSS attack vector repository, XSS attack vectors, XSS cheat sheet, XSS detection
Abstract

Online Social Networks (OSNs) are continuously suffering from the negative impact of Cross-Site Scripting (XSS) vulnerabilities. This paper describes a novel framework for mitigating XSS attack on OSN-based platforms. It is completely based on the request authentication and view isolation approach. It detects XSS attack through validating string value extracted from the vulnerable checkpoint present in the web page by implementing string examination algorithm with the help of XSS attack vector repository. Any similarity (i.e. string is not validated) indicates the presence of malicious code injected by the attacker and finally it removes the script code to mitigate XSS attack. To assess the defending ability of our designed model, we have tested it on OSN-based web application i.e. Humhub. The experimental results revealed that our model discovers the XSS attack vectors with low false negatives and false positive rate tolerable performance overhead.

URLhttps://ieeexplore.ieee.org/document/7800354
DOI10.1109/GCCE.2016.7800354
Citation Keychaudhary_xss_2016