Types of Anomalies
In this course, we will concentrate primarily on the first type of anomalies: point anomalies, also commonly referred to as outliers.
Characteristics of Point Anomalies:
- Extreme Values: Point anomalies are typically characterized by data points that have values significantly higher or lower than the values of the majority of data points in the dataset. These extreme values can disrupt the analysis and modeling processes;
- Isolation: Point anomalies are often isolated from the rest of the data. They do not follow the general patterns or trends observed in the majority of the data, making them stand out;
- Causes: Point anomalies can result from a variety of causes, including data entry errors, sensor malfunctions, equipment failures, rare and unexpected events, or even fraudulent activities.
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Types of Anomalies
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In this course, we will concentrate primarily on the first type of anomalies: point anomalies, also commonly referred to as outliers.
Characteristics of Point Anomalies:
- Extreme Values: Point anomalies are typically characterized by data points that have values significantly higher or lower than the values of the majority of data points in the dataset. These extreme values can disrupt the analysis and modeling processes;
- Isolation: Point anomalies are often isolated from the rest of the data. They do not follow the general patterns or trends observed in the majority of the data, making them stand out;
- Causes: Point anomalies can result from a variety of causes, including data entry errors, sensor malfunctions, equipment failures, rare and unexpected events, or even fraudulent activities.
Was alles duidelijk?
Bedankt voor je feedback!
Sectie 1. Hoofdstuk 2