Kaspersky Machine Learning for Anomaly Detection

Incidents detected by an ML model element based on a diagnostic rule

December 6, 2023

ID 247970

An ML model element based on a diagnostic rule consists of one or more diagnostic rules. This element is based on the Rule Detector. Each diagnostic rule results in the following values being obtained that are calculated at each point in time:

  • Value 0. The diagnostic rule was not triggered or applied at this moment.
  • Value 1. The diagnostic rule was triggered at this moment.
  • Intermediate values from 0 to 1 are possible in individual cases. The diagnostic rule was partially triggered at this moment.

Whenever the received value reaches the threshold defined for a diagnostic rule (normally equal to 1), the Rule Detector registers an incident. For each incident registered by the Rule Detector, the application automatically creates the "Tags for event #N" preset, which is available in the History section. This preset contains the value obtained as a result of the work of the diagnostic rule, as well as the tags included in this rule.

To display graphs of values obtained as a result of the work of diagnostic rules, you can enable the display of predicted values of tags in the History section.

Did you find this article helpful?
What can we do better?
Thank you for your feedback! You're helping us improve.
Thank you for your feedback! You're helping us improve.