Stichprobensätzen
Stichprobensätzen, which translates to "sampling theorems" in English, refers to a collection of mathematical principles that govern the process of selecting a subset of data points from a larger population. These theorems are fundamental to statistical inference, enabling researchers to draw conclusions about an entire population based on observations from a smaller, representative sample. The core idea is that if a sample is chosen appropriately, its characteristics will mirror those of the population from which it was drawn.
Key concepts within Stichprobensätzen include the distinction between random sampling and biased sampling. Random sampling methods,
The Central Limit Theorem is a particularly important theorem within this domain. It states that regardless