glättungsverteilung
Glättungsverteilung refers to a concept in statistical modeling and data analysis that describes the distribution of smoothed values. When raw data is smoothed, its inherent variability is reduced, leading to a distribution that is typically narrower and less prone to extreme values than the original distribution. This smoothing process can be achieved through various techniques, such as moving averages, kernel smoothing, or spline fitting.
The glättungsverteilung is important because it allows for a clearer understanding of underlying trends and patterns
Understanding the glättungsverteilung is crucial for tasks like forecasting, anomaly detection, and hypothesis testing, as it