Bayesian Spam Filter By Joshua Spaulding. Statement of Problem “Spam email now accounts for more...

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Bayesian Spam Filter By Joshua Spaulding

Transcript of Bayesian Spam Filter By Joshua Spaulding. Statement of Problem “Spam email now accounts for more...

Bayesian Spam Filter

By

Joshua Spaulding

Statement of Problem

“Spam email now accounts for more than half of all messages sent and imposes huge productivity costs…By 2007, Spam-stopping should grow to a $2.4 Billion Business.”

Technology Review 8/03

Objective

Using Bayes’ rule I will attempt to classify an email message as spam or non-spam (ham). I will use a corpus of spam and ham to determine the probability that a new email is spam given the tokens in the message.

Definition of Spam

Unsolicited automated email

Bayes’ Rule

P(A|B) = P(B|A)P(A) / P(B)

P(A|B) is the conditional probability that event A occurs given that event B has occurred;P(B|A) is the conditional probability of event B occurring given that event A has occurred;P(A) is the probability of event A occurring;P(B) is the probability of event B occurring.

P(spam|token) = P(token|spam)P(spam) / P(token)

P(spam|token) – probability that email is spam given a tokenP(token|spam) – probability token exists given email is spamP(spam) – probability of email being spamP(token) – probability of token in email

Bayes’ Rule

Project Design (orig) Read in large text file containing 1000 spam. Read in large text file containing 1000 ham. Create a file for each corpus consisting of the

token and it’s occurrence in the corpus. I'll then create another file with the token and the

probability that an email containing it is spam using Bayesian rule.

When an email arrives I will parse the email. I will look up the probability that the email is spam given the token. I’ll then combine all the probabilities to determine the probability that the email is spam.

Project Design

Create Narl model from 100 spam and 100 ham contained in two separate CSV files. Used Narl’s built-in Excel Model function. (emailCorpus.narl)

Parse body slot from emailCorpus.narl, create word nodes and calculate the probability. (kb.narl)

Examine incoming text body, tokenize and create nodeNames. If nodeName is already in the kb then lookup the probability. Otherwise assign probability value of “0.5”.

Model

Email node

Word Node

Issues

Text is unknown and often incomplete.

Java data structures Vector, StringTokenizer, floating-point

operations Unfamiliar with Narl

Enhancements Read slots other than body. Read data in from another format. Gain

more knowledge about the email. Better error handling. Read email as they enter the mail server. Regular expression matching of

Stringtokenizer. Performance tuning with more data. Take advantage of Narl functionality??

Demonstration

Questions?