Anomaly Detection for Fraud Prevention

Anomaly Detection applies machine learning to identify unusual traffic patterns or behaviors that may indicate fraud, bots, or invalid traffic (IVT). The system learns what “normal” campaign performance looks like and flags deviations that could suggest manipulation.

For example, if an ad suddenly receives a spike in clicks from a single IP range or an unusual country, the algorithm automatically marks it for review or blocks it.

This proactive monitoring helps platforms like TwinRed maintain clean traffic sources, improve advertiser trust, and protect budgets from non-human or low-quality interactions.

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