kmath/docs/polynomials.md
2024-03-27 09:11:12 +03:00

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Polynomials and Rational Functions

KMath provides a way to work with uni- and multivariate polynomials and rational functions. It includes full support of arithmetic operations of integers, constants (elements of ring polynomials are build over), variables (for certain multivariate implementations), polynomials and rational functions encapsulated in so-called polynomial space and * rational function space* and some other utilities such as algebraic differentiation and substitution.

Concrete realizations

There are 3 approaches to represent polynomials:

  1. For univariate polynomials one can represent and store polynomial as a list of coefficients for each power of the variable. I.e. polynomial a_0 + \dots + a_n x^n can be represented as a finite sequence (a_0; \dots; a_n). ( Compare to sequential definition of polynomials.)
  2. For multivariate polynomials one can represent and store polynomial as a matching (in programming it is called "map" or "dictionary", in math it is called functional relation) of each "term signature" (that describes what variables and in what powers appear in the term) with corresponding coefficient of the term. But there are 2 possible approaches of term signature representation:
    1. One can number all the variables, so term signature can be represented as a sequence describing powers of the variables. I.e. signature of term c \\; x_0^{d_0} \dots x_n^{d_n} (for natural or zero d_i ) can be represented as a finite sequence (d_0; \dots; d_n).
    2. One can represent variables as objects ("labels"), so term signature can be also represented as a matching of each appeared variable with its power in the term. I.e. signature of term c \\; x_0^{d_0} \dots x_n^{d_n} (for natural non-zero d_i ) can be represented as a finite matching (x_0 \to d_1; \dots; x_n \to d_n).

All that three approaches are implemented by "list", "numbered", and "labeled" versions of polynomials and polynomial spaces respectively. Whereas all rational functions are represented as fractions with corresponding polynomial numerator and denominator, and rational functions' spaces are implemented in the same way as usual field of rational numbers (or more precisely, as any field of fractions over integral domain) should be implemented.

So here are a bit of details. Let C by type of constants. Then:

  1. ListPolynomial, ListPolynomialSpace, ListRationalFunction and ListRationalFunctionSpace implement the first scenario. ListPolynomial stores polynomial a_0 + \dots + a_n x^n as a coefficients list listOf(a_0, ..., a_n) (of type List<C>).

    They also have variation ScalableListPolynomialSpace that replaces former polynomials and implements ScaleOperations.

  2. NumberedPolynomial, NumberedPolynomialSpace, NumberedRationalFunction and NumberedRationalFunctionSpace implement second scenario. NumberedPolynomial stores polynomials as structures of type Map<List<UInt>, C>. Signatures are stored as List<UInt>. To prevent ambiguity signatures should not end with zeros.

  3. LabeledPolynomial, LabeledPolynomialSpace, LabeledRationalFunction and LabeledRationalFunctionSpace implement third scenario using common Symbol as variable type. LabeledPolynomial stores polynomials as structures of type Map<Map<Symbol, UInt>, C>. Signatures are stored as Map<Symbol, UInt>. To prevent ambiguity each signature should not map any variable to zero.

Example: ListPolynomial

For example, polynomial 2 - 3x + x^2 (with Int coefficients) is represented

val polynomial: ListPolynomial<Int> = ListPolynomial(listOf(2, -3, 1))
// or
val polynomial: ListPolynomial<Int> = ListPolynomial(2, -3, 1)

All algebraic operations can be used in corresponding space:

val computationResult = Int.algebra.listPolynomialSpace {
   ListPolynomial(2, -3, 1) + ListPolynomial(0, 6) == ListPolynomial(2, 3, 1)
}

println(computationResult) // true

For more see examples.

Example: NumberedPolynomial

For example, polynomial 3 + 5 x_1 - 7 x_0^2 x_2 (with Int coefficients) is represented

val polynomial: NumberedPolynomial<Int> = NumberedPolynomial(
   mapOf(
      listOf<UInt>() to 3,
      listOf(0u, 1u) to 5,
      listOf(2u, 0u, 1u) to -7,
   )
)
// or
val polynomial: NumberedPolynomial<Int> = NumberedPolynomial(
   listOf<UInt>() to 3,
   listOf(0u, 1u) to 5,
   listOf(2u, 0u, 1u) to -7,
)

All algebraic operations can be used in corresponding space:

val computationResult = Int.algebra.numberedPolynomialSpace {
   NumberedPolynomial(
      listOf<UInt>() to 3,
      listOf(0u, 1u) to 5,
      listOf(2u, 0u, 1u) to -7,
   ) + NumberedPolynomial(
      listOf(0u, 1u) to -5,
      listOf(0u, 0u, 0u, 4u) to 4,
   ) == NumberedPolynomial(
      listOf<UInt>() to 3,
      listOf(0u, 1u) to 0,
      listOf(2u, 0u, 1u) to -7,
      listOf(0u, 0u, 0u, 4u) to 4,
   )
}

println(computationResult) // true

For more see examples.

Example: LabeledPolynomial

For example, polynomial 3 + 5 y - 7 x^2 z (with Int coefficients) is represented

val polynomial: LabeledPolynomial<Int> = LabeledPolynomial(
   mapOf(
      mapOf<Symbol, UInt>() to 3,
      mapOf(y to 1u) to 5,
      mapOf(x to 2u, z to 1u) to -7,
   )
)
// or
val polynomial: LabeledPolynomial<Int> = LabeledPolynomial(
   mapOf<Symbol, UInt>() to 3,
   mapOf(y to 1u) to 5,
   mapOf(x to 2u, z to 1u) to -7,
)

All algebraic operations can be used in corresponding space:

val computationResult = Int.algebra.labeledPolynomialSpace {
   LabeledPolynomial(
      listOf<UInt>() to 3,
      listOf(0u, 1u) to 5,
      listOf(2u, 0u, 1u) to -7,
   ) + LabeledPolynomial(
      listOf(0u, 1u) to -5,
      listOf(0u, 0u, 0u, 4u) to 4,
   ) == LabeledPolynomial(
      listOf<UInt>() to 3,
      listOf(0u, 1u) to 0,
      listOf(2u, 0u, 1u) to -7,
      listOf(0u, 0u, 0u, 4u) to 4,
   )
}

println(computationResult) // true

For more see examples.

Abstract entities (interfaces and abstract classes)

classDiagram
   Polynomial <|-- ListPolynomial
   Polynomial <|-- NumberedPolynomial
   Polynomial <|-- LabeledPolynomial
   
   RationalFunction <|-- ListRationalFunction
   RationalFunction <|-- NumberedRationalFunction
   RationalFunction <|-- LabeledRationalFunction
   
   Ring <|-- PolynomialSpace
   PolynomialSpace <|-- MultivariatePolynomialSpace
   PolynomialSpace <|-- PolynomialSpaceOverRing
   
   Ring <|-- RationalFunctionSpace
   RationalFunctionSpace <|-- MultivariateRationalFunctionSpace
   RationalFunctionSpace <|-- RationalFunctionSpaceOverRing
   RationalFunctionSpace <|-- RationalFunctionSpaceOverPolynomialSpace
   RationalFunctionSpace <|-- PolynomialSpaceOfFractions
   RationalFunctionSpaceOverPolynomialSpace <|-- MultivariateRationalFunctionSpaceOverMultivariatePolynomialSpace
   MultivariateRationalFunctionSpace <|-- MultivariateRationalFunctionSpaceOverMultivariatePolynomialSpace
   MultivariateRationalFunctionSpace <|-- MultivariatePolynomialSpaceOfFractions
   PolynomialSpaceOfFractions <|-- MultivariatePolynomialSpaceOfFractions

There are implemented Polynomial and RationalFunction interfaces as abstractions of polynomials and rational functions respectively (although, there is not a lot of logic in them) and PolynomialSpace and RationalFunctionSpace (that implement Ring interface) as abstractions of polynomials' and rational functions' spaces respectively. More precisely, that means they allow to declare common logic of interaction with such objects and spaces:

  • Polynomial does not provide any logic. It is marker interface.
  • RationalFunction provides numerator and denominator of rational function and destructuring declaration for them.
  • PolynomialSpace provides all possible arithmetic interactions of integers, constants (of type C), and polynomials (of type P) like addition, subtraction, multiplication, and some others and common properties like degree of polynomial.
  • RationalFunctionSpace provides the same as PolynomialSpace but also for rational functions: all possible arithmetic interactions of integers, constants (of type C), polynomials (of type P), and rational functions (of type R) like addition, subtraction, multiplication, division (in some cases), and some others and common properties like degree of polynomial.

Then to add abstraction of similar behaviour with variables (in multivariate case) there are implemented MultivariatePolynomialSpace and MultivariateRationalFunctionSpace. They just include variables (of type V) in the interactions of the entities.

Also, to remove boilerplates there were provided helping subinterfaces and abstract subclasses:

  • PolynomialSpaceOverRing allows to replace implementation of interactions of integers and constants with implementations from provided ring over constants (of type A: Ring<C>).
  • RationalFunctionSpaceOverRing — the same but for RationalFunctionSpace.
  • RationalFunctionSpaceOverPolynomialSpace — the same but "the inheritance" includes interactions with polynomials from provided PolynomialSpace.
  • PolynomialSpaceOfFractions is actually abstract subclass of RationalFunctionSpace that implements all fractions boilerplates with provided (protected) constructor of rational functions by polynomial numerator and denominator.
  • MultivariateRationalFunctionSpaceOverMultivariatePolynomialSpace and MultivariatePolynomialSpaceOfFractions — the same stories of operators inheritance and fractions boilerplates respectively but in multivariate case.

Utilities

For all kinds of polynomials there are provided (implementation details depend on kind of polynomials) such common utilities as:

  1. differentiation and anti-differentiation,
  2. substitution, invocation and functional representation.