Parametric polymorphism
Polymorphism 

In programming languages and type theory, parametric polymorphism is a way to make a language more expressive, while still maintaining full static typesafety. Using parametric polymorphism, a function or a data type can be written generically so that it can handle values identically without depending on their type.^{[1]} Such functions and data types are called generic functions and generic datatypes respectively and form the basis of generic programming.
For example, a function append
that joins two lists can be constructed so that it does not care about the type of elements: it can append lists of integers, lists of real numbers, lists of strings, and so on. Let the type variable a denote the type of elements in the lists. Then append
can be typed
forall a. [a] × [a] > [a]
where [a]
denotes the type of lists with elements of type a. We say that the type of append
is parameterized by a for all values of a. (Note that since there is only one type variable, the function cannot be applied to just any pair of lists: the pair, as well as the result list, must consist of the same type of elements.) For each place where append
is applied, a value is decided for a.
Following Christopher Strachey,^{[2]} parametric polymorphism may be contrasted with ad hoc polymorphism, in which a single polymorphic function can have a number of distinct and potentially heterogeneous implementations depending on the type of argument(s) to which it is applied. Thus, ad hoc polymorphism can generally only support a limited number of such distinct types, since a separate implementation has to be provided for each type.
Contents
History
Parametric polymorphism was first introduced to programming languages in ML in 1975.^{[3]} Today it exists in Standard ML, OCaml, F#, Ada, Haskell, Mercury, Visual Prolog, Scala, Julia, and others. Java, C#, Visual Basic .NET and Delphi have each introduced "generics" for parametric polymorphism. Some implementations of type polymorphism are superficially similar to parametric polymorphism while also introducing ad hoc aspects. One example is C++ template specialization.
The most general form of polymorphism is "higherrank impredicative polymorphism". Two popular restrictions of this form are restricted rank polymorphism (for example, rank1 or prenex polymorphism) and predicative polymorphism. Together, these restrictions give "predicative prenex polymorphism", which is essentially the form of polymorphism found in ML and early versions of Haskell.
Higherranked polymorphism
Rank1 (prenex) polymorphism
In a prenex polymorphic system, type variables may not be instantiated with polymorphic types. This is very similar to what is called "MLstyle" or "Letpolymorphism" (technically ML's Letpolymorphism has a few other syntactic restrictions).
This restriction makes the distinction between polymorphic and nonpolymorphic types very important; thus in predicative systems polymorphic types are sometimes referred to as type schemas to distinguish them from ordinary (monomorphic) types, which are sometimes called monotypes. A consequence is that all types can be written in a form that places all quantifiers at the outermost (prenex) position.
For example, consider the append
function described above, which has type
forall a. [a] × [a] > [a]
In order to apply this function to a pair of lists, a type must be substituted for the variable a in the type of the function such that the type of the arguments matches up with the resulting function type. In an impredicative system, the type being substituted may be any type whatsoever, including a type that is itself polymorphic; thus append
can be applied to pairs of lists with elements of any type—even to lists of polymorphic functions such as append
itself.
Polymorphism in the language ML and its close relatives is predicative. This is because predicativity, together with other restrictions, makes the type system simple enough that type inference is possible. In languages where explicit type annotations are necessary when applying a polymorphic function, the predicativity restriction is less important; thus these languages are generally impredicative.
Rankk polymorphism
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For some fixed value k, rankk polymorphism is a system in which a quantifier may not appear to the left of k or more arrows (when the type is drawn as a tree).^{[1]}
Type inference for rank2 polymorphism is decidable, but reconstruction for rank3 and above is not.^{[4]}
Rankn ("higherrank") polymorphism
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Rankn polymorphism is polymorphism in which quantifiers may appear to the left of arbitrarily many arrows.
Predicativity and impredicativity
Predicative polymorphism
In a predicative parametric polymorphic system, a type containing a type variable may not be used in such a way that is instantiated to a polymorphic type. Predicative type theories include MartinLöf Type Theory and NuPRL.
Impredicative polymorphism
Impredicative polymorphism (also called firstclass polymorphism) is the most powerful form of parametric polymorphism.^{[5]} A definition is said to be impredicative if it is selfreferential; in type theory this allows the instantiation of a variable in a type with any type, including polymorphic types, such as itself. An example of this is the System F with the type variable X in the type , where X could even refer to T itself.
In type theory, the most frequently studied impredicative typed λcalculi are based on those of the lambda cube, especially System F.^{[1]}
Bounded parametric polymorphism
In 1985, Luca Cardelli and Peter Wegner recognized the advantages of allowing bounds on the type parameters.^{[6]} Many operations require some knowledge of the data types, but can otherwise work parametrically. For example, to check whether an item is included in a list, we need to compare the items for equality. In Standard ML, type parameters of the form ’’a are restricted so that the equality operation is available, thus the function would have the type ’’a × ’’a list → bool and ’’a can only be a type with defined equality. In Haskell, bounding is achieved by requiring types to belong to a type class; thus the same function has the type in Haskell. In most objectoriented programming languages that support parametric polymorphism, parameters can be constrained to be subtypes of a given type (see Subtype polymorphism and the article on Generic programming).
See also
Notes
 ^ ^{a} ^{b} ^{c} Pierce 2002.
 ^ Strachey 1967.
 ^ Milner, R., Morris, L., Newey, M. "A Logic for Computable Functions with reflexive and polymorphic types", Proc. Conference on Proving and Improving Programs, ArcetSenans (1975)
 ^ Pierce 2002, p. 359.
 ^ Pierce 2002, p. 340.
 ^ Cardelli & Wegner 1985.
References

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title=
(help)  Hindley, J. Roger (1969), "The principal type scheme of an object in combinatory logic", Transactions of the American Mathematical Society, American Mathematical Society, 146: 29–60, doi:10.2307/1995158, JSTOR 1995158, MR 0253905.
 Girard, JeanYves (1971). "Une Extension de l'Interpretation de Gödel à l'Analyse, et son Application à l'Élimination des Coupures dans l'Analyse et la Théorie des Types". Proceedings of the Second Scandinavian Logic Symposium (in French). Amsterdam. pp. 63–92. doi:10.1016/S0049237X(08)708437.
 Girard, JeanYves (1972), Interprétation fonctionnelle et élimination des coupures de l’arithmétique d’ordre supérieur (Ph.D. thesis) (in French), Université Paris 7.
 Reynolds, John C. (1974), "Towards a Theory of Type Structure", Colloque sur la programmation, Lecture Notes in Computer Science, Paris, 19: 408–425, doi:10.1007/3540068597_148.
 Milner, Robin (1978). "A Theory of Type Polymorphism in Programming". Journal of Computer and System Sciences. 17 (3): 348—375. doi:10.1016/00220000(78)900144.
 Cardelli, Luca; Wegner, Peter (December 1985). "On Understanding Types, Data Abstraction, and Polymorphism" (PDF). ACM Computing Surveys. New York, NY, USA: ACM. 17 (4): 471–523. doi:10.1145/6041.6042. ISSN 03600300.
 Pierce, Benjamin C. (2002). Types and Programming Languages. MIT Press. ISBN 9780262162098.