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MethodError: no method matching bijector(::MixtureModel{Multivariate, Continuous, MvNormal, Float64}) #227

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krishvishal opened this issue Aug 2, 2022 · 1 comment

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@krishvishal
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krishvishal commented Aug 2, 2022

MWE:

using Bijectors, Distributions

dist = MixtureModel(MvNormal, [(ones(2), 1), (2 .* ones(2), 1)])

x = rand(dist)
b = bijector(dist)

Error:

ERROR: MethodError: no method matching bijector(::MixtureModel{Multivariate, Continuous, MvNormal, Float64})
Closest candidates are:
  bijector(::Union{Kolmogorov, BetaPrime, Chi, Chisq, Erlang, Exponential, FDist, Frechet, Gamma, InverseGamma, InverseGaussian, LogNormal, NoncentralChisq, NoncentralF, Rayleigh, Weibull}) at /home/.julia/packages/Bijectors/LmARY/src/transformed_distribution.jl:58
  bijector(::Union{Arcsine, Beta, Biweight, Cosine, Epanechnikov, NoncentralBeta}) at /home/.julia/packages/Bijectors/LmARY/src/transformed_distribution.jl:69
  bijector(::Union{Levy, Pareto}) at /home/.julia/packages/Bijectors/LmARY/src/transformed_distribution.jl:72
  ...
Stacktrace:
 [1] top-level scope
   @ REPL[5]:1

It seems the bijector for Multivariate MixtureModel is not defined. Can someone please clarify this?

@krishvishal
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Since mixture of Dirichilet distributions lives on a simplex, so its bijector has to be a SimplexBijector.

I've defined a custom distribution with a SimplexBijector to solve this error. Similarly one can define a custom distribution with IdentityBijector for mixture of MvNormal distributions.

using Bijectors, Turing, Distributions, Random

struct CustomMixture <: ContinuousMultivariateDistribution
    a::Vector{Float64}
    b::Vector{Float64}
    weights::Vector{Float64}
end

function Base.rand(rng::Random.AbstractRNG, d::CustomMixture)
    sample = rand(rng, MixtureModel(Dirichlet, [d.a, d.b], d.weights))
    return sample
end

function Distributions.logpdf(d::CustomMixture, x::AbstractVector)
    return logpdf(MixtureModel(Dirichlet, [d.a, d.b], d.weights), x)
end

Base.length(d::CustomMixture) = length(d.a)

Bijectors.bijector(d::CustomMixture) = Bijectors.SimplexBijector{1}()

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