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Web-Phishing – Techniques and Countermeasures

CIS5370 Computer Security Fall 2008. Web-Phishing – Techniques and Countermeasures. Muhammad Khalil / Marcus Wolff. Agenda. The Problem Definition Phishing Techniques Social Engineering Aspects Countermeasures Our Solution Approach Current Implementation Future Work.

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Web-Phishing – Techniques and Countermeasures

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  1. CIS5370 Computer Security Fall 2008 Web-Phishing – Techniques and Countermeasures Muhammad Khalil / Marcus Wolff

  2. Agenda • The Problem Definition • Phishing Techniques • Social Engineering Aspects • Countermeasures • Our Solution Approach • Current Implementation • Future Work

  3. 1. Problem Definition • Cyber criminals try to get sensitive data from end-users (credit card data, passwords for online services etc.) • Data only given out voluntarily from users in case of existing trust relationships • Criminals use this knowledge by faking websites to which users might have built up trust relationships already • Users are mostly lead to these phishing sites by received phishing e-mails that contain links to them • Examples of highly targeted phishing objects:websites from banks, insurances, auctions, employers, government (social security)

  4. 1. Problem Definition • Statistics of password stolen victims until March 2008 + 337 % ! Source: Anti-Phishing Working Group (Antiphishing.org)

  5. 2. Phishing Techniques • Creating legitimate reasons • Spammers need to entice users into believing something. • For example they would say that their account is expiring and need users to reinstate by giving up certain information. • They would use false time constraints.

  6. 2. Phishing Techniques Webpage modifications 1 • altering phishing website URL’s to look similar to real website: e.g. ‘L’ in paypal to ‘1’ in paypa1 • Partial URL identities: www.ebay-security.com • Fooling user with wrong URL descriptor:href="http://www.badguy.com">http://account.earthlink.com</a> • IP addresses can be used to cover source domains

  7. 2. Phishing Techniques Webpage modification 2 • Inserting the ‘@’ symbol in the URL would redirect the website to the words after the ‘@’ symbol, like in http://cgi1.ebay.com.awcgiebayISAPI.dll@210.93.131.250/my/index.htm. • Inserting a NULL value just before the ‘@’ like in http://cgi1.ebay.com.awcgiebayISAPI.dll%00@210.93.131.250/my/index.htm. The browser would show the legitimate ebay website. • Using Hex notation instead of IP/Domain name • Using special ports after site break-ins (usually 8000 and above)E.g. http://www.citibankonline.com: 8000

  8. 3. Social Engineering Aspects • Users lack the proper understanding of security. They tend to trust everything they see. • They would believe messages saying that account has expired and require user actions without verification.

  9. 3. Social Engineering Aspects • Example:

  10. 3. Social Engineering Aspects • Users do not realize absence of security: Visual Security Indicators in Mozilla Firefox Browser v3

  11. 3. Social Engineering Aspects • Lack of attention to security indicators:

  12. 3. Social Engineering Aspects Not being aware of trust implications:

  13. 4. Countermeasures • Users have to be on alert. • Fix patches and install anti-spam software • Banks have user customizable login pages to notice any change in the page. • Mozilla has developed a software “petname” which is a task bar plug-in to help keep end users from falling prey to phishing attacks. allows users to protect important websites.

  14. 4. Countermeasures • Anti-phishing filters already exist: integrated in web browsers (MS Internet Explorer 7.0, Mozilla Firefox 3.0) external tools (SpoofGuard) • These approaches are only reactive • Cannot act proactive due to static input • Good overview: Paper “Phinding Phish: Evaluating Anti-Phishing Tools”, Carnegie Mellon, 2007 • Most tools use blacklists:high ratio of false negatives (> 50%) • Some tools use heuristics:high ratio of false positives (> 40%)

  15. 5. Our Solution Approach • Combination of whitelist, blacklist and heuristic behavioral analysis guarantees reactive as well as proactive approach and low ratio of false positives and false negatives • Whitelist stores distinct identifiers from legitimate websites grouped by business types (banks, insurances etc.) • Blacklist stores distinct identifiers from known phishing sites • Heuristics store algorithms which detect suspicious set-up or suspicious behavior of the websites

  16. 5. Our Heuristic Approach • Heuristic algorithms detect anomalies that strongly indicate phishing behavior Indicators: • Obfuscated URL’s in e-mail(hiding the real URL destination) • Strong visual similarity to existinglegitimate websites (main approach) • Direct URL link to sensitive sub-pages (Login-Page) • Language specifics (broken language, wrong addressing) • No Secure Socket Layer or usage of fake/one-day SSL certificates • website name just recently registered • anonymous registrar • Mismatch between country information for website and information about country of origin for represented company (taken out of extended whitelists)

  17. 5. Detection Process General Procedure (PW=Phishing Website): 1. Extract URLs from potential phishing e-mails (in real-time since URL should still be resolvable) 2. Look for hit in white list  if Y, cancel (no PW) 3. Look for hit in black list  if Y, classify as PW 4. Else: Use heuristics to return probability of target being a PW (unlikely..very likely): P(PW)

  18. Whitelist DB Blacklist DB Ext. Sources Phishing-Site Legitimate Site Heuristic Engine 5. Our Detection Process Schema Not found Not found Test? Test? Test? INPUT-URL Feedback loop Feedback loop Found! Feedback loop Found! Probability P >=0.5 <0.5 OUTPUT:classification of INPUT-URL as phishing or legitimate website

  19. 5. Current Implementation: Whitelist Whitelist approach: • Retrieve unique identifiers from all major websites grouped by company types that are effected most by phishing (banks, insurances, shopping websites) • Update Automation with help of automatic script tools • Unique identifiers: UID1 = URL(s) UID2 = SSL certificate(s) • UID1/UID2-values stored in Postgres DB relationships, grouped by branches (banks, insurances etc.) • Extended information stored in Whitelist for later heuristics (company type, country, official login-page, …) • If UID1 / UID2 of target site match Whitelist entry  classify as legitimate website

  20. 5. Current Implementation: Blacklist Blacklist approach: • Retrieving unique identifiers from all reported phishing websites (PW), frequent updates • Designed software to manage automatic retrieval by using API features of Phishing DB web services: • phishtank.com, Millersmiles.uk, Fraudwatchinternational.com • In addition own DB maintained for storing discovered Phishing cases • Unique identifiers (UID1) = URL (entry point) of PW • If UID of target site match entry in own or external phishing blacklist DB  classified as phishing website

  21. 5. Current Implementation:Heuristics Heuristic approaches: • Classified target website to company type/ company by using text/ graphics analysis • For graphical site components, OCR approach  detecting modified company logos  still get a match to original site graphics  Used open-source component: J/G-OCR  Results improvable: handles subtle changes • Traversed directory structures of website, finding similarities to Whitelist-entries of same company type, based on:  same file size OR  same file name OR  same content (hash-based, excluding modified logos)

  22. 6. Future Work Intended future features: • More reliable full-automation ofwhite-list/ black-list update procedure • Improved and more flexible heuristics • using specialized Captcha-OCRs for better results(pwntcha; UC Berkeley: Breaking a Visual Captcha) • Testing for similarities in code and non-textual graphics • general GUI layout matching • Implementing other heuristic indicatorsOptional independence from Unmask • Comfortable GUI and installer options for end-users of the system

  23. Bibliography • [1] Anatomy of a Phishing Email, Christine E. Drake, Jonathan J. Oliver, and Eugene J. Koontz, MailFrontier, Inc., 1841 Page Mill Road, Palo Alto, CA 94304 • [2] Why Phishing Works, Rachna Dhamij, Harvard University, J. D. Tygar, UC Berkeley, Marti Hearst: UC Berkeley • [3] Phinding Phish: Evaluating Anti-Phishing Tools, Yue Zhang, Serge Egelman, Lorrie Cranor, and Jason Hong, Carnegie Mellon University, 2007 • [4] Recognizing objects in adversarial clutter: breaking a visual CAPTCHA, Mori, G. Malik, J., UC Berkeley, IEEE Computer Vision and Pattern Recognition, 2003. Proceedings, 2003

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