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Interpreting anomaly detection results #1430

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lcawl opened this issue Oct 30, 2020 · 0 comments
Open

Interpreting anomaly detection results #1430

lcawl opened this issue Oct 30, 2020 · 0 comments
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@lcawl
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lcawl commented Oct 30, 2020

Our content about how to interpret anomaly detection job is currently spread about and it would be useful to see if it can be improved by pulling it together into a procedure that (ideally) could then be re-used in whole or in part in multiple solutions.

It should include:

  • Differences between Anomaly Explorer and Single Metric Viewer (covered at high level in tutorial)
  • Information about what you can glean from influencers
  • Interpreting multi-bucket anomalies
  • A summary of the different types of results (e.g. model plot results, influencer results, bucket results, record results
  • Interpreting anomaly scores and how they are calculated and how they differ from probability.(covered at high level in tutorial)
  • Meaning of "actual" and "typical" values (covered at high level in tutorial)
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