Anomaly detection
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Outlier / Anomaly detection
Anomaly detection of numeric data[edit]
- Median
- Range Checks
- All values is event or odd
- The values are the same even the column is totally different
Anomaly detection of categorical data (qualitative variable)[edit]
- Normal distribution e.g. The interest of audiences should be very different NOT coherent
Anomaly detection for time series data[edit]
- Trend
- Dramatically Increase or decrease of rows count for each time period
Anomaly detection for consumer data[edit]
For consumer data
- Season issue: consumption data of coat should increase in cold weather
- Holiday issue: consumption data of some gift e.g. moon cake should increase in special holiday e.g. Mid-Autumn Festival
Anomaly detection for string data[edit]
- Created time of the text message
- Time frequency of the text message
- Length of the text message
- NULL or empty value
- Minor differences of text content[1]
- Character encoding e.g. Fix garbled message text
More on: Outlier - Wikipedia