nonparametrisia
Nonparametrisia is a theoretical label used to describe a family of approaches to statistical modeling and inference that avoid assuming a fixed parametric form for the data-generating process. Proponents view it as a generalization of nonparametric methods, emphasizing data-driven flexibility and robustness across diverse datasets.
Origin and usage: The term emerged in contemporary statistical discourse as a conceptual framework rather than
Key ideas: Emphasizes minimal assumptions about functional form, relies on empirical distributions, uses smoothing and rank-based
Methods and tools: Kernel methods, splines, nearest-neighbor procedures, permutation tests, and cross-validated model selection are typical.
Applications and status: It is discussed in theoretical contexts and applied fields where model misspecification is
Limitations and critique: Critics argue that nonparametric or assumption-light methods can be less efficient and more
See also: Nonparametric statistics, robust statistics, model selection, resampling methods.