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How
Spammers Fool Rule-based and Signature-Based
Spam Filters |
by:
Paul
Judge, CTO, CipherTrust, Inc. |
Effectively
stopping spam over the long-term requires
much more than blocking individual IP addresses
and creating rules based on keywords that
spammers typically use. The increasing sophistication
of spam tools coupled with the increasing
number of spammers in the wild has created
a hyper-evolution in the variety and volume
of spam. The old ways of blocking the bad
guys just don't work anymore.
Examining spam and spam-blocking technology
can illuminate how this evolution is taking
place and what can be done to combat spam
and reclaim e-mail as the efficient, effective
communication tool it was intended to be.
Heuristics (Rule-based Filtering)
One method used to combat spam is Rule-based,
or Heuristic Filtering. Rule-based filters
scan email content for predetermined words
or phrases that may indicate a message is
spam. For example, if an email administrator
includes the word "sex" on a company's rule-based
list, any email containing this word will
be filtered.
The major drawback of this approach is the
difficulty in identifying keywords that
are consistently indicative of spam. While
spammers may frequently use the words "sex"
and 'Viagra" in spam emails, these words
are also used in legitimate business correspondence,
particularly in the healthcare industry.
Additionally, spammers have learned to obfuscate
suspect words by using spellings such as
"S*E*X", or "VI a a GRR A".
It is impossible to develop dictionaries
that identify every possible misspelling
of "spammy" keywords. Additionally, because
filtering for certain keywords produces
large numbers of false positives, many organizations
have found they cannot afford to rely solely
on rule-based filters to identify spam.
Signature-Based Spam Filters
Another method used to combat spam is Signature-based
Filtering. Signature-based filters examine
the contents of known spam, usually derived
from honey pots, or dummy email addresses
set up specifically to collect spam. Once
a honey pot receives a spam message, the
content is examined and given a unique identifier.
The unique identifier is obtained by assigning
a value to each character in the email.
Once all characters have been assigned a
value, the values are totaled, creating
the spam's signature. The signature is added
to a signature database and sent as a regular
update to the email service's subscribers.
The signature is compared to every email
coming in to the network and all matching
messages are discarded as spam.
The benefit of signature-based filters is
that they rarely produce false-positives,
or legitimate email incorrectly identified
as spam. The drawback of signature-based
filters is that they are very easy to defeat.
Because they are backward-looking, they
only deal with spam that has already been
sent. By the time the honey pot receives
a spam message, the system assigns a signature,
and the update is sent and installed on
the subscribers' network, the spammer has
already sent millions of emails. A slight
modification of the email message will render
the existing signature useless.
Furthermore, spammers can easily evade signature-based
filters by using special email software
that adds random strings of content to the
subject line and body of the email. Because
the variable content alters the signature
of each email sent by the spammer, signature-based
spam filters are unable to match the email
to known pieces of spam.
Developers of signature-based spam filters
have learned to identify the tell-tale signs
of automated random character generation.
But as is often the case, spammers remain
a step ahead and have developed more sophisticated
methods for inserting random content. As
a result, most spam continues to fool signature-based
filters.
The Solution
When used individually, each anti-spam technique
has been systematically overcome by spammers.
Grandiose plans to rid the world of spam,
such as charging a penny for each e-mail
received or forcing servers to solve mathematical
problems before delivering e-mail, have
been proposed with few results. These schemes
are not realistic and would require a large
percentage of the population to adopt the
same anti-spam method in order to be effective.
You can learn more about the fight against
spam by visiting our website at www.ciphertrust.com
and downloading our whitepapers.
About the author:
Dr. Paul Judge is a noted scholar and entrepreneur.
He is Chief Technology Officer at CipherTrust,
the industry's largest provider of enterprise
email security. The company's flagship product,
IronMail provides a best of breed enterprise
anti spam solution designed to stop
spam, phishing attacks and other email-based
threats. Learn more by visiting www.ciphertrust.com/products/spam_and_fraud_protection
today.
Circulated by Bandoni
Media
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