distributionsval
Distributionsval, often translated as distribution choice, is the practice of selecting a probability distribution to model a random variable or a dataset. It is a central task in statistics, data analysis, and risk assessment, where the chosen distribution informs inference, forecasting, and decision making. The goal is to identify a distribution family and estimate its parameters that most accurately describe the observed data while balancing simplicity and interpretability.
The typical workflow includes exploring data with summaries and plots, proposing candidate distributions (for example normal,
Important considerations include data type (continuous vs discrete), sample size, censoring, measurement error, and the presence
Common examples: financial returns may be modeled with a t-distribution or lognormal rather than a normal; lifetimes
Limitations include that data may not uniquely determine a single best distribution, and all choices introduce