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Architecture

Message Analysis

Message Handling

 


 

Message Analysis

BreņaMail uses numerous traditional techniques for spam detection in combination with a variety of next-generation approaches for message analysis. Within this wide spectrum of tests, generally no single element will by itself classify a message as spam – thus avoiding the false positives associated with simpler approaches – while the breadth of analysis results in an industry-leading detection rate for junk email.

 

BreņaMail’s technology for analyzing messages includes elements such as:

  • Authenticity Checks including detailed header analysis, SMTP conversation details, message encoding and formatting, and other characteristics
  • Message Fingerprinting to compare email signatures to frequently-updated public and internal databases of known spam messages  
  • A self-learning Bayesian Engine that analyzes patterns of phrases in messages, and assigns mathematical probabilities for the presence of those phrases in junk mail versus legitimate mail 
  • Real-Time Message Source Analysis to assess whether an increased volume of mail flow is simply a legitimate high-volume mailing, or the result of a spammer hijacking or the use of a "zombie" network
  • Extensive URI Databases of unique elements such as URLs, phone numbers, and physical addresses known to be used by spammers
  • An extensive, continually updated Heuristic Rule Set that encompasses message headers, body text, and other characteristics of both English-language and non-English messages
  • Public and Private Blacklists of mail servers, relays, or networks known to be used by spammers
  • Incorporation of Domain History and Reputation to increase the accuracy of blacklists and URI databases
  • Dynamic Feedback-Based Rules Optimization to leverage feedback from thousands of BreņaMail users as well as from many monitored legitimate and "spam trap" email addresses
  • User-Based Message Profiling that allows for refinement of message scoring for each user based on a history of his or her message traffic
  • Customizable whitelists and blacklists which can be applied on an account-wide, organization-wide, domain-wide, or user-specific basis
     

Working together, these elements accurately detect a very high percentage of spam, phishing emails, and other unwanted messages – while minimizing the chances of a legitimate message being detected as spam.