Customer

  • Major North American telecommunications company
  • Publicly traded company
  • Over $15 billion in revenue and 65,000 employees

Problem

  • Text messaging is a target for phishing, fraud and spamming techniques
  • Existing detection approach relied on legacy tactics and static rules
  • Inability to adapt to new spamming techniques
  • Large resource costs from manual review of flagged messages

Solution

  • Created an Machine Learning model using the Splunk MLTK
  • Used a classification approach for predicting SMS spam
  • Observations/events were categorized into discrete groups

Result

  • The ML model found to be 93% accurate, significantly reducing false positives
  • Greatly reduced cost of internal resources required for manual checks
  • Model is continually learning and improving from data in an unsupervised manor
  • Removed all need for static rules and thresholds
Spam Detection Using Machine Learning

Contact Us

Contact us today to learn how we can help ensure success in your upcoming projects.

    Name*

    Email*

    Company*

    Answer calculation (enter number)