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Routines for constructing BasisMatrices of different types (Chebyshev polynomials, B-Splines, piecewise linear, complete monomials, Smolyak...)

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BasisMatrices

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Portions of this library are inspired by the CompEcon Matlab toolbox by Paul Fackler and Mario Miranda. The original Matlab code was written to accompany the publication

Miranda, Mario J., and Paul L. Fackler. Applied computational economics and finance. MIT press, 2004.

The portions of this package that are based on their code have been licensed with their permission.

Quick (and incomplete intro)

Matlab-esque interface

For an API similar to the original CompEcon Matlab package by Miranda and Fackler, please see the CompEcon.jl package.

Example

Here's an example of how to use the Julia-based API to set up multi-dimensional basis matrix and work with it.

using LinearAlgebra: lu
linspace(a,b,n) = range(a; stop=b, length=n)
ygrid0 = linspace(-4, 4, 10)
agrid0 = linspace(0.0.^0.4, 100.0.^0.4, 25).^(1/0.4)

# method one, using the Basis constructor multiple times
basis = Basis(SplineParams(agrid0, 0, 3),  # cubic spline
              SplineParams(ygrid0, 0, 1))  # linear

# method two, constructing separately, then calling `Basis` with the two
a_basis = Basis(SplineParams(agrid0, 0, 3))
y_basis = Basis(SplineParams(ygrid0, 0, 1))
basis = Basis(a_basis, y_basis)

# Construct state vector (matrix). Note that for higher order splines points
# are added to the input vector, so let's extract the actual grid points used
# from the second argument
S, (agrid, ygrid) = nodes(basis)

# construct basis matrix and its lu-factorization for very fast inversion
# NOTE: I am doing this in a round-about way. I could have just done
#       Φ = BasisMatrix(basis), but doing it this way gives me the direct
#       representation so I get Φ_y without repeating any calculations
Φ_direct = BasisMatrix(basis, Direct(), S, [0 0])
Φ_y = Φ_direct.vals[2]
Φ = convert(Expanded, Φ_direct, [0 0]).vals[1]
lu_Φ = lu(Φ)

Basic Overview of Julian API

This section provides a sketch of the type based Julian API.

Theoretical Foundation

To understand the Julian API and type system, we first need to understand the fundamental theory behind the interpolation scheme implemented here. Interpolation in BasisMatrices is built around three key concepts:

  1. An functional Basis: for each dimension, the basis specifies
    • family of basis function (B spline, Chebyshev polynomials, ect.)
    • domain (bounds)
    • interpolation nodes (grid on domain)
  2. A BasisMatrix:
    • Represents the evaluation of basis functions at the interpolation nodes
    • Constructed one dimension at a time, then combined with tensor product
  3. A coefficient vector: used to map from domain of the Basis into real line

Core types

Functionality implemented around 5 core types (or type families) that relate closely to the theoretical concepts outlined above.

Representing the Basis

The first two groups of type are helper types used to facilitate construction of the Basis. They are the BasisFamily and the BasisParams types:

First is the BasisFamily:

abstract type BasisFamily end
struct Cheb <: BasisFamily end
struct Lin <: BasisFamily end
struct Spline <: BasisFamily end

abstract type BasisParams end
struct ChebParams <: BasisParams
    n::Int
    a::Float64
    b::Float64
end

struct SplineParams <: BasisParams
    breaks::Vector{Float64}
    evennum::Int
    k::Int
end

struct LinParams <: BasisParams
    breaks::Vector{Float64}
    evennum::Int
end

BasisFamily is an abstract type, whose subtypes are singletons that specify the class of functions in the basis.

BasisParams is an abstract type, whose subtypes are type types that hold all information needed to construct the Basis of a particular class

Then we have the central Basis type:

struct Basis{N,TP<:Tuple}
    params::TP     # params to construct basis
end

The params field of this type contains an N element tuple, where each element is a subtype of BasisParams. This represents an N dimensional basis.

The Basis has support for the following methods:

  • A whole slew of constructors
  • getindex(b::Basis, i::Int): which extracts the univariate Basis along the ith dimension
  • ndims: The number of dimensions
  • length: the product of the n field
  • size(b::Basis, i::Int): The ith element of the n field (number of basis functions in dimension i)
  • size(b::Basis): b.n as a tuple instead of a vector (similar to size(a::Array))
  • ==: test two basis for equality
  • nodes(b::Basis)->(Matrix, Vector{Vector{Float64}}): the interpolation nodes. the first element is the tensor product of all dimensions, second element is a vector of vectors, where the ith element contains the nodes along dimension i.
  • min and max gives an N element tuple of the lower and upper bounds of the domain in each dimension.

BasisMatrix representation

Next we turn to representing the BasisMatrix, which is responsible for keeping track of the basis functions evaluated at the interpolation nodes. To keep track of this representation, we have another family of helper types:

abstract type AbstractBasisMatrixRep end
const ABSR = AbstractBasisMatrixRep

struct Tensor <: ABSR end
struct Direct <: ABSR end
struct Expanded <: ABSR end

AbstractBasisMatrixRep is an abstract types, whose subtypes are singletons that specify how the basis matrices are stored. To understand how they are different, we need to see the structure of the BasisMatrix type:

struct BasisMatrix{BST<:ABSR, TM<:AbstractMatrix}
    order::Matrix{Int}
    vals::Matrix{TM}
end

The order field keeps track of what order of derivative or integral the arrays inside vals correspond to.

The content inside vals will vary based on the type Parameter BST<:AbstractBasisMatrixRep:

  1. for BST==Tensor vals will store the evaluation of the basis functions at each of the integration nodes independently. Thus, the [d, i] element will be the derivative order d Basis at the interpolation nodes along the ith dimension (each column is a basis function, each row is an interpolation node). This is the most compact and memory efficient representation
  2. For BST==Direct vals will expand along the first dimension (rows) of the array so that for each i, the [d, i] element will have length(basis) rows and basis.n[i] (modulo loss or addition of basis functions from derivative/integral operators.)
  3. For BST==Expanded vals will be expanded along both the rows and the columns and will contain a single Matrix for each desired derivative order. This format is the least memory efficient, but simplest conceptually for thinking about how to compute a coefficient vector (if y is f(x) then coefs[d] = b.vals[d] \ y)

See the file demo/basis_mat_formats.jl for a more detailed description of the basis matrix formats.

Convenience Interpoland type

Finally the convenient Interpoland type:

struct Interpoland{TB<:Basis,TC<:AbstractArray,TBM<:BasisMatrix{Tensor}}
    basis::TB  # the basis -- can't change
    coefs::TC  # coefficients -- might change
    bmat::TBM  # BasisMatrix at nodes of `b` -- can't change
end

The main purpose of this type is to keep track of the coefficient vector and the Basis so the user doesn't have to carry both of them around. It also holds a BasisMatrix for the evaluation of the basis matrices at the interpolation nodes. This means that if the coefficient vector needs to be updated, this BasisMatrix will not be re-computed.

About

Routines for constructing BasisMatrices of different types (Chebyshev polynomials, B-Splines, piecewise linear, complete monomials, Smolyak...)

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