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1 Spam: Why? Chris Kanich Christian Kreibich Kirill Levchenko Brandon Enright Vern Paxson Geoffrey M. Voelker Stefan Savage +=
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2 What is Computer security?
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3 Most of computer science is about providing functionality: u User Interface u Software Design u Algorithms u Operating Systems/Networking u Compilers/PL u Microarchitecture u VLSI/CAD Computer security is not about functionality It is about how the embodiment of functionality behaves in the presence of an adversary Security mindset – think like a bad guy
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My Background Collaborative Center for Internet Epidemiology and Defenses (CCIED) u UCSD/ICSI group created in response to worm threat u Very well funded, many strong partners Goals u Internet epidemiology: measuring/understanding attacks u Automated defenses: stopping outbreaks/attacks u Economic and legal issues: that other stuff
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Many big successes… 50+ papers, lots of tech transfer, big sytems, etc Network Telescope u Passive monitor for > 1% of routable Internet addr space Potemkin & GQ Honeyfarms u Active VM honeypot servers on >250k IP addresses Earlybird u On-line learning of new worm signatures in < 1ms
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But… depressing truth We didn’t stop Internet worms, let alone malware, let alone cybercrime… nor did anyone else. At best, moved it around a bit. By any meaningful metric the bad guys are winning… Mistake: looking at this solely as a technical problem
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Key threat transformations of the 21 st century Efficient large-scale compromises u Internet communications model u Software homogeneity u User naïveity/fatigue Centralized control u Makes compromised host a commodity good u Platform economy Profit-driven applications u Commodity resources (IP, bandwidth, storage, CPU) u Unique resources (PII/credentials, CD-Keys, address book, etc) 7
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DDoS for sale Emergence of economic engine for Internet crime u SPAM, phishing, spyware, etc Fluid third party markets for illicit digital goods/services u Bots ~$0.5/host, special orders, value added tiers u Cards, malware, exploits, DDoS, cashout, etc.
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9 3.6 cents per bot week 6 cents per bot week 2.5 cents per bot week September 2004 postings to SpecialHam.com, Spamforum.biz >20-30k always online SOCKs4, url is de-duped and updated > every 10 minutes. 900/weekly, Samples will be sent on > request. Monthly payments arranged at discount prices. >$350.00/weekly - $1,000/monthly (USD) >Type of service: Exclusive (One slot only) >Always Online: 5,000 - 6,000 >Updated every: 10 minutes >$220.00/weekly - $800.00/monthly (USD) >Type of service: Shared (4 slots) >Always Online: 9,000 - 10,000 >Updated every: 5 minutes Botnet Spammer Rental Rates Bot Payloads
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Spamalytics 11
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Key structural asymmetries Defenders reactive, attackers proactive u Defenses public, attacker develops/tests in private u Arms race where best case for defender is to “catch up” New defenses expensive, new attacks cheap u Defenses sunk costs/business model, attacker agile and not tied to particular technology Low risk to attacker, high reward to attacker u Minimal deterrence u Functional anonymity on the Internet; very hard to fix Defenses hard to measure, attacks easy to measure u Few security metrics (no “evidence-based” security), attackers measure monetization which drives attack quality 12
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Revisiting the problem We tend to think about this in terms of technical means for securing computer systems Most of 50-100B IT budget on cyber security is spent on securing the end host u AV, firewalls, IDS, encryption, etc… u Single most expensive front to secure u Single hardest front to secure But are individual end hosts valuable to bad guys? u Maybe $1.50? Even less in bulk… not a pain point What instead? Economically informed strategies Identify and attack economic bottlenecks in value chain This means understanding the return-on-investment for bad guys 13
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Today: the spam problem We tend to focus on the costs of spam u > 100 Billion spam emails sent every day [Ironport] u > $1B in direct costs – anti-spam products/services [IDC] u Estimates of indirect costs (e.g., productivity) 10-100x more But spam exists only because it is profitable Someone is buying! (though no one has admitted it to me…) Our goal u Understand underlying economic support for spam 14
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History of the spam business model Direct Mail: origins in 19 th century catalog business u Idea: send unsolicited advertisements to potential customers u Rough value proposition: Delivery cost < (Conversion rate * Marginal revenue) Modern direct mail (> $60B in US) u Response rate: ~2.5% (mean per DMA) u CPM (cost per thousand) = $250 - $1000 Spam is qualitatively the same… 15
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… but quantitatively different Advantages of e-mail direct marketing u No printing cost u Legitimate delivery cost low (outsourced price ~ $0.001/message [Get Response]) u Dominated by production & lead generation cost (i.e. mailing list) u But this is for spam as a legal marketing vehicle… a minority Spam as marketing/bait for criminal enterprises (scams) u Mailing lists → ε (purchase/steal/harvest) <$10/M retail u Delivery cost → ε (botnet-based delivery) <$70M retail 16
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Aside: economic impact of anti-spam technology? Suppose new technology filters out 99.9% of spam (at sites deploying it) u Little impact on delivery cost, mainly lowers conversion rate u Short term, compensate by sending more different e-mails or to more people »… and pity the shmucks with the old 95% filter u Long term, incentive for spammer to bypass filter Seems likely the outcome of anti-spam has been u Increased amount of spam sent u Change in distribution of recipient pool u Unclear what profit impact is (deployment biases) 17
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Brief history of the spam arms race Anti-spam action 1.Real-time IP blacklisting 2.Clean up open relays/proxies 3.Content-based learning 4.Site takedown 5.CAPTCHAs 18 Spammer response 1. Send via open relays/proxies 2. Delivery via compromised botnets 3. Content chaff, polymorphic spam generators, img spam 4. Fast-flux redirect and transparent proxies 5. CAPTCHA outsourcing, OCR-based breaking
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Courtesy Stuart Brown modernlifisrubbish.co.uk Anatomy of a modern Pharma spam campaign
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Estimating spam profits Recall key basic inequality: ( Delivery Cost) < (Conversion Rate) x (Marginal Revenue) We have some handle on two of these (e.g., [Franklin07] ) u Delivery cost to send spam »Outsourced cost: retail purchase price < $70/M addrs »In-house cost: development/management labor u Marginal revenue » Average pharma sale of $100, affiliate commissions ≈ 50% Conversion rate is fundamentally different We don’t know; estimates vary by orders of magnitude 20
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The measurement conundrum No accident that we lack good conversion measures Its easy to measure spam from a receiver viewpoint u Which MTA sent it to me? u What does the content contain? u Where do the links go? etc… But the key economic issue is only known by the sender u Conversion rate * marginal profit = revenue per msg sent What to do? u Interview spammers? (0.00036) [Carmack03] u Guess? (“millions of dollars a day”) [Corman08]) u Send lots of spam and see who clicks on links? (gold standard) 21
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Botnet infiltration Key idea: distributed C&C is a vulnerability u Botnet authors like de-centralized communications for scalability and resilience, but… u … to do so, they trust their bots to be good actors u If you can modify the right bots you can observe and influence actions of the botnet Rest of today: preliminary results from a case study u Infiltrated Storm P2P botnet, instrumented ~500M spams u Delivery rates (anti-spam impacts on delivery) u Click through (visits to spam advertized sites) u Conversions (purchases and purchase amounts) 22 Kanich, Kreibich, Levchenko, Enright, Paxson, Voelker and Savage, Spamalytics: an Empirical Analysis of Spam Marketing Conversion, ACM CCS 2008
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How this works in detail Botnet Infiltration u Overview of the Storm peer-to-peer botnet »How does Storm work? u Mechanics of botnet spamming »How can Storm’s C&C be instrumented? Economic issues u Using a botnet for measurement »How to measure conversion via C&C interposition u Measuring spam delivery pipeline »What happens to spam from when a bot sends it… »…to when a user clicks “purchase” at a scam site? 23
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Storm Storm is a well-known peer-to-peer botnet Storm has a hierarchical architecture u Workers perform tasks (send spam, launch DDoS attacks, etc.) u Proxies organize workers, connect to HTTP proxies u Master servers controlled directly by botmaster Workers and proxies are compromised hosts (bots) u Use a Distributed Hash Table protocol (Overnet) for rendezvous u Roughly 20,000 actives bots at any time in April [Kanich08] Master servers run in “bullet-proof” hosting centers u Communicate with proxies and workers via command and control (C&C) protocol over TCP Spamalytics24 Kanich, Levchenko, Enright, Voelker and Savage, The Heisenbot Uncertainty Problem: Challenges in Separating Bots from Chaff, LEET 2008.
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Storm architecture 25 Dr. Evil Master servers Proxy bots Worker bots
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Storm setup New bots decide if they are proxies or workers u Inbound connectivity? Yes, proxy. No, worker. Proxies advertise their status via encrypted variant of Overnet DHT P2P protocol u Master sends “Breath of Life” packet to new proxies to tell them IP address of master servers (RSA signature) u Allows master servers to be mobile if necessary Workers use Overnet to find proxies (tricky: time-based key identifies request) Workers send to proxy, proxy forwards to one of master servers in “safe” data center Bottom line: imperfect, but remarkably sophisticated 26
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Storm spam campaigns lWorkers request “updates” to send spam [Kreibich08] u Dictionaries: names, domains, URLs, etc. u Email templates for producing polymorphic spam »Macros instantiate fields: %^Fdomains^% from domains dict u Lists of target email addresses (batches of 500-1000 at a time) lWorkers immediately act on these updates u Create a unique message for each email address u Send the message to the target u Report the results (success, failure) back to proxies lMany campaign types u Self-propagation malware, pharmaceutical, stocks, phishing, … 27 Kreibich, Kanich, Levchenko, Enright, Voelker, Paxson and Savage, On the Spam Campaign Trail, LEET 2008.
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Storm templates Example Storm spam template and instantiation 28 Macro expansion to insert target email address
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Misc Storm stuff Templates updated fairly frequently (but mainly just header polymorphism changes) A few special campaigns u Test campaigns u Special mailing list campaigns (e.g. only canadian recpts) Storm nodes also harvest e-mail addresses u Grovel hard disk and send back foo@bar.baz stringsfoo@bar.baz u Re-integrated into master mailing list (some filtering) Storm nodes also do DDoS, DNS fast flux proxying and Web proxying Several different levels of message encoding, but nothing really hard to reverse yet 29
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Received: from %^C0%^P%^R2- 6^%:qwertyuiopasdfghjklzxcvbnm^%.%^ P%^R2- 6^%:qwertyuiopasdfghjklzxcvbnm^%^% ([%^C6%^I^%.%^I^%.%^I^%.%^I^%^%]) by %^A^% with Microsoft SMTPSVC(%^Fsvcver^%); %^D^% From: To: Subject: Say hello to bluepill! Received: from %^C0%^P%^R2- 6^%:qwertyuiopasdfghjklzxcvbnm^%.%^P %^R2- 6^%:qwertyuiopasdfghjklzxcvbnm^%^% ([%^C6%^I^%.%^I^%.%^I^%.%^I^%^%]) by %^A^% with Microsoft SMTPSVC(%^Fsvcver^%); %^D^% From: To: Subject: Say hello to bluepill! Received: from auz.xwzww ([132.233.197.74]) by dsl-189-188-79- 63.prod-infinitum.com.mx with Microsoft SMTPSVC(5.0.2195.6713); Wed, 6 Feb 2008 16:33:44 -0800 From: To: Subject: Say hello to bluepill! spammerdomain2.com Received: from auz.xwzww ([132.233.197.74]) by dsl-189-188-79- 63.prod-infinitum.com.mx with Microsoft SMTPSVC(5.0.2195.6713); Wed, 6 Feb 2008 16:33:44 -0800 From: To: Subject: Say hello to bluepill! spammerdomain1.com Received: from auz.xwzww ([132.233.197.74]) by dsl-189-188-79- 63.prod-infinitum.com.mx with Microsoft SMTPSVC(5.0.2195.6713); Wed, 6 Feb 2008 16:33:44 -0800 From: To: savage@cs.ucsd.edusavage@cs.ucsd.edu Subject: Say hello to bluepill! spammerdomain2.com Storm in action 1224704030~!pharma_links~! spammerdomain1.com spammerdomain2.com spammerdomain3.com … 1224720409~!names~!eduardo rafael katiera chris johnny … 1224739062~!vern@icir.org ckanich@cs.ucsd.edu savage@cs.ucsd.edu kreibich@icir.org... 30 Received: from dkjs.sgdsz ([132.233.197.74]) by dsl-189-188-79- 63.prod-infinitum.com.mx with Microsoft SMTPSVC(5.0.2195.6713); Wed, 6 Feb 2008 16:33:44 -0800 From: To: Subject: Say hello to bluepill! spammerdomain3.com
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Interposition on Storm We interpose on Storm command and control network u Reverse-engineered Storm protocols, communication scrambling, rendezvous mechanisms [Kanich08] [Kreibich08] Run unmodified Storm proxy bots in VMs u Key issue: Real bot workers connect to our proxies Insert rewriting proxies between workers & proxies u Transparently interpose on messages between Storm proxies and their associated Storm workers u Generic engine for rewriting traffic based on rules Interpose to control site URLs and spam delivery u Which sites the spam advertises (replace urls in template links) u To whom spam gets sent (replace addrs in target list) 31
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spammerdomain.com spammerdomain2.com spammerdomain3.com Modifying template links newdomain1.com newdomain2.com newdomain3.com Received: from dkjs.sgdsz ([132.233.197.74]) by dsl-189-188-79- 63.prod-infinitum.com.mx with Microsoft SMTPSVC(5.0.2195.6713); Wed, 6 Feb 2008 16:33:44 -0800 From: To: Subject: Say hello to bluepill! spammerdomain3.com Received: from dkjs.sgdsz ([132.233.197.74]) by dsl-189-188-79- 63.prod-infinitum.com.mx with Microsoft SMTPSVC(5.0.2195.6713); Wed, 6 Feb 2008 16:33:44 -0800 From: To: Subject: Say hello to bluepill! newdomain2.com
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Create two sites that mirror actual sites in spam u E-card (self-propagation) and pharmaceutical u Replace dictionaries with URLs to our sites E-card (self-prop) site u Link to benign executable that POSTs to our server u Log all POSTs to track downloads and executions Pharma site u Log all accesses up through clicks on “purchase” u Track the contents of shopping carts Strive for verisimilitude to remove bias (spam filtering) u Site content is similar, URLs have same format as originals, … Measuring click-through 33
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Aside: having fun 34
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Measuring Delivery Create various test email accounts u At Web mail providers: Hotmail, Yahoo!, Gmail u Behind a commercial spam filtering appliance u As SMTP sinks: accept every message delivered Put email addresses in Storm target delivery lists Log all emails delivered to these addresses u Both labeled as spam (“Junk E-mail”) and in inbox 35
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Ethical context Consequentialism First, do no harm (users no worse off than before) u We do not send any spam »Proxies are relays, worker bots send spam u We do not enable additional spam to be sent »Workers would have connected to some other proxy u We do not enable spam to be sent to additional users »Users are already on target lists, only add control addresses Second, reduce harm where possible u Our pharma sites don’t take credit card info u Our e-card sites don’t export malicious code 36
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Legal context Warning: IANAL (we had lawyers involved though) CAN*SPAM Subject to strong definition of “initiator”; we don’t fit it ECPA Our proxy is directly addressed by worker bots (“party to” communication carve out) CFAA We do not contact worker bots, they contact us (“unauthorized access”?) We do not cause any information to be extracted or any fundamentally new activity to take place Hard to find a good theory of damages (functionally indistinguishable -- consequentialism) 37
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But… In this kind of work there is little precedent No agency to get permission; no way to get indemnity Lawyers tend to say “I believe this activity has low risk of…” We communicate our activities to a lot of people Security researchers in industry, academia Affected network operators/registrars Law enforcement FTC 38
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Aside: Spam is hard Lots of operational complexities to a study like this Net Ops notices huge Storm infestation Address space cleanliness Registrar issues u GoDaddy u TUCOWS Abuse complaints Spam site support e-mail Anti-virus signatures Law-enforcement 39
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Spam conversion experiment Experimented with Storm March 21 – April 15, 2008 Instrumented roughly 1.5% of Storm’s total output 40 Pharmacy Campaign E-card Campaigns PostcardApril Fool Worker bots31,34817,6393,678 Emails347,590,38983,665,47938,651,124 Duration19 days7 days3 days
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Spam pipeline 41 83.6 M 347.5M 21.1M (25%) 82.7M (24%) 3,827 (0.005%) 10,522 (0.003%) 316 (0.00037%) 28 (0.000008%) --- Pharma: 12 M spam emails for one “purchase” SentMTAVisitsConversionsInbox 40.1 M10.1M (25%)2,721 (0.005%)225 (0.00056%) E-card: 1 in 10 visitors execute the binary Spam filtering software The fraction of spam delivered into user inboxes depends on the spam filtering software used u Combination of site filtering (e.g., blacklists) and content filtering (e.g., spamassassin) Difficult to generalize, but we can use our test accounts for specific services Fraction of spam sent that was delivered to inboxes Effects of Blacklisting (CBL Feed) Unused Effective Other filtering Response rates by country Two orders of magnitude No large aberrations based on email topic
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The spammer’s bottom line Recall that we tracked the contents of shopping carts Using the prices on the actual site, we can estimate the value of the purchases u 28 purchases for $2,731 over 25 days, or $100/day ($140 active) We only interposed on a fraction of the workers u Connected to approx 1.5% of workers u Back-of-the-envelope (be very careful) $7-10k/day for all, or ~$3M/year u With a 50% affiliate commission, $1.5M/year revenue For self-propagation u Roughly 3-9k new bots/day 42
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Summary First measurement study of spam marketing conversion Infiltrated Storm botnet, interposed on spam campaigns u Rewriting proxies take advantage of Storm reverse-engineering Pharmaceutical spam u 1 in 12M conversion rate $1.5M/yr net revenue u Profitability possibly tied to infrastructure integration u Sent via retail market, this campaign would not be profitable u Ergo: in-house delivery (Storm owners = pharma spammers) Self Propagation spam u 250k spam emails per infection u Social engineering effective: one in ten visitors run executable 43
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What are we doing now? More analysis u Extending infiltration to ~15 botnets; comparative analysis u Characteristic fingerprints of different spammers/crews u Characterizing supply chain relationships »Broadly order on-line “viagra”, rolexes, etc »Cluster credit processor/merchant, mailing materials, etc »Cluster on manufacturing fingerprint (e.g., NIR spectroscopy) u Measuring monetization by purposely losing credit cards Proactive defenses u Automated filter generation from templates u Automated classification of URLs u Automated vision-based detection of phishing pages 44
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Security courses at UCSD CSE107 – Introduction to modern cryptography CSE127 – Computer Security But… Security plays a role in virtually all of your courses 45
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Questions? Yahoo!46 Collaborative Center for Internet Epidemiology and Defenses http://ccied.org
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What’s next: Value-chain characterization Value-chain characterization u Empirical map establishing links between criminal groups and enablers »Affiliate programs, botnets, fast flux networks, registrars, payment processors, SEO/traffic partners, fulfillment/manufacturing »Data mining across huge data feeds we’ve built or established relationships for u Social network among criminal groups »Semantic Web mining
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New: Fulfillment measurements About to start purchasing wide range of spam-advertized products u Watches u Pharma u Traffic Cluster purchases based on u Merchant and processor u Packaging (postmark, forensic analysis of paper) u Artifacts of manufacturing process (e.g., FT-NIR on drugs) 48
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Observations –Modest number of bots send most spam –Virtually all bots use templates with simple rules to describe polymorphism –Templates+dictionaries ≈ regex describing spam to be generated –If we can extract or infer these from the botnets, we have a perfect filter for all the spam generated by the botnet –Very specific filters, extremely low FP risk New: Bot-based spam filter generation http://www.marshal.com/trace/spam_statistics.asp random letters and numbers phrases from a dictionary
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Early results (last week) 0 FP with 50 examples 0 FN on Storm with 500 examples Still tuning for other botnets
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Spare slides
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Removing crawlers/honeyclients Anyone can send email to our accounts or visit our Web sites, potentially muddying the waters u Use various heuristics to validate the logs Validate spam in mailboxes was sent by us u Spam from other campaigns, bounce messages, etc. u Subject line matches our campaign, URL from our dictionary Validate Web accesses were by users in response u Sites with links in spam are immediately crawled by Google, A/V vendors, etc. u Special 3 rd -level DNS names, special url encoding u Ignore hosts that access robots.txt, don’t load javascript, don’t load flash, don’t load images, many malformed requests 52
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Pharma and e-card conversions 53
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Who is targeted? 54 l Top 20 domains l Many Web mail & broadband providers, but very long tail l Campaigns have nearly identical distributions l Same scammers, or target lists sold to multiple scammers
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