datamönstret
Datamönstret, often translated as "data pattern," refers to recurring structures, sequences, or relationships found within a dataset. Identifying these patterns is a fundamental aspect of data analysis and is crucial for understanding the underlying information. Patterns can manifest in various forms, such as trends over time, correlations between variables, clusters of similar data points, or anomalies that deviate from expected behavior.
The discovery of datamönster serves multiple purposes. It enables predictive modeling, where historical patterns are used