In this article we are going to delve into Parametric model, a topic of great relevance today. Parametric model has been the subject of interest and debate for a long time, and its importance continues to increase in various areas. From its impact on daily life to its influence in professional and academic fields, Parametric model plays a fundamental role in our society. Throughout this article, we will explore the different aspects and perspectives of Parametric model, analyzing its evolution over time, its implications in different contexts and the various opinions that exist about it.
This article provides insufficient context for those unfamiliar with the subject. (November 2022) |
In statistics, a parametric model or parametric family or finite-dimensional model is a particular class of statistical models. Specifically, a parametric model is a family of probability distributions that has a finite number of parameters.
This section includes a list of references, related reading, or external links, but its sources remain unclear because it lacks inline citations. (May 2012) |
A statistical model is a collection of probability distributions on some sample space. We assume that the collection, 𝒫, is indexed by some set Θ. The set Θ is called the parameter set or, more commonly, the parameter space. For each θ ∈ Θ, let Fθ denote the corresponding member of the collection; so Fθ is a cumulative distribution function. Then a statistical model can be written as
The model is a parametric model if Θ ⊆ ℝk for some positive integer k.
When the model consists of absolutely continuous distributions, it is often specified in terms of corresponding probability density functions:
where pλ is the probability mass function. This family is an exponential family.
This parametrized family is both an exponential family and a location-scale family.
where is the shape parameter, is the scale parameter and is the location parameter.
This example illustrates the definition for a model with some discrete parameters.
A parametric model is called identifiable if the mapping θ ↦ Pθ is invertible, i.e. there are no two different parameter values θ1 and θ2 such that Pθ1 = Pθ2.
Parametric models are contrasted with the semi-parametric, semi-nonparametric, and non-parametric models, all of which consist of an infinite set of "parameters" for description. The distinction between these four classes is as follows:[citation needed]
Some statisticians believe that the concepts "parametric", "non-parametric", and "semi-parametric" are ambiguous.[1] It can also be noted that the set of all probability measures has cardinality of continuum, and therefore it is possible to parametrize any model at all by a single number in (0,1) interval.[2] This difficulty can be avoided by considering only "smooth" parametric models.