glättungsprozess
Glättungsprozess refers to a range of techniques used to reduce noise or irregularities in data. This is commonly encountered in various fields, including signal processing, image processing, statistics, and economics. The primary goal of a glättungsprozess is to reveal underlying trends or patterns by filtering out random fluctuations.
In signal processing, smoothing is applied to time series data to make it more interpretable. For example,
Statistically, smoothing is often used in data analysis to estimate underlying functions or distributions. Techniques like
The choice of a specific smoothing technique depends on the nature of the data and the desired