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Implement matrix logarithm #994
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The tests currently fail because they test 0x0 matrices as well, and this is only implemented in #991. Waiting for this to be applied, then the tests here should succeed. |
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This PR is ready to be merged. |
The julia> m0 = one(SMatrix{3,3})
3×3 SMatrix{3, 3, Float64, 9} with indices SOneTo(3)×SOneTo(3):
1.0 0.0 0.0
0.0 1.0 0.0
0.0 0.0 1.0
julia> log(m0)
3×3 SMatrix{3, 3, Float64, 9} with indices SOneTo(3)×SOneTo(3):
-0.0 -0.0 -0.0
-0.0 -0.0 -0.0
-0.0 -0.0 -0.0
julia> m1 = rand(SMatrix{3,3})
3×3 SMatrix{3, 3, Float64, 9} with indices SOneTo(3)×SOneTo(3):
0.273815 0.156067 0.538108
0.0792263 0.149036 0.6332
0.940688 0.6957 0.550016
julia> log(m1)
ERROR: DomainError with -0.5292055332168919:
log will only return a complex result if called with a complex argument. Try log(Complex(x)).
Stacktrace:
[1] throw_complex_domainerror(f::Symbol, x::Float64)
@ Base.Math ./math.jl:33
[2] _log(x::Float64, base::Val{:ℯ}, func::Symbol)
@ Base.Math ./special/log.jl:304
[3] log
@ ./special/log.jl:269 [inlined]
[4] macro expansion
@ ~/.julia/dev/StaticArrays/src/broadcast.jl:126 [inlined]
[5] _broadcast
@ ~/.julia/dev/StaticArrays/src/broadcast.jl:100 [inlined]
[6] copy
@ ~/.julia/dev/StaticArrays/src/broadcast.jl:27 [inlined]
[7] materialize
@ ./broadcast.jl:860 [inlined]
[8] _log(#unused#::Size{(3, 3)}, A::SMatrix{3, 3, Float64, 9})
@ StaticArrays ~/.julia/dev/StaticArrays/src/logm.jl:19
[9] log(A::SMatrix{3, 3, Float64, 9})
@ StaticArrays ~/.julia/dev/StaticArrays/src/logm.jl:1
[10] top-level scope
@ REPL[46]:1
julia> m2 = rand(SMatrix{3,3})
3×3 SMatrix{3, 3, Float64, 9} with indices SOneTo(3)×SOneTo(3):
0.582469 0.912389 0.435272
0.0275857 0.765842 0.944147
0.73664 0.0436018 0.405992
julia> log(m2)
3×3 SMatrix{3, 3, ComplexF64, 9} with indices SOneTo(3)×SOneTo(3):
-0.280447+0.0im 1.10906+0.0im -0.20155+0.0im
-0.696253+0.0im 0.239951+0.0im 1.33066+0.0im
1.18863+0.0im -0.643787+0.0im -0.582311+0.0im
julia> m3 = rand(SMatrix{3,3})
3×3 SMatrix{3, 3, Float64, 9} with indices SOneTo(3)×SOneTo(3):
0.239263 0.566921 0.172025
0.219623 0.874731 0.0596628
0.436071 0.930055 0.503457
julia> log(m3)
3×3 SMatrix{3, 3, Float64, 9} with indices SOneTo(3)×SOneTo(3):
-2.85822 1.32526 0.790975
0.691332 -0.388829 -0.0421343
1.41868 1.03391 -1.04496
julia> log(@SMatrix randn(3,3))
3×3 SMatrix{3, 3, ComplexF64, 9} with indices SOneTo(3)×SOneTo(3):
-4.89227+3.05795im -1.89937+0.792861im -0.568245+0.491583im
-0.469905+0.313737im -0.424589+0.0813454im -1.86939+0.0504351im
-0.470829+0.0142845im 4.29088+0.00370366im 1.46013+0.00229632im |
@hyrodium I confirm. Apparently the eigendecomposition is not type stable. I expected it to be. The domain error is intended: If there is no real-valued matrix logarithm, then there should be a domain error, because returning a complex result would lead to a type instability. The implementation special cases small matrices. This is where the domain error is generated. Larger matrices use the eigendecomposition which is causing the type instability. |
How should we handle type instabilities? For example, currently:
I think there is much value in type-stable algorithms for small matrices. For example, I want to store small matrices in arrays, and type instabilities would lead to very slow code. I suggest the following:
This would look like:
The return type of |
I agree with that 👍
I'm not sure we need this method here. These are what I thought:
|
I thought there might be performance advantages. However, in a preliminary implementation, I'm just calling Currently, the eigendecomposition is not type stable. Should we make it type stable in the same way? This could be a breaking change. |
I think having a lot of StaticArrays-specific matrix functions is undesirable (e.g. with return-type as a part of the signature): a good chunk of the appeal of StaticArrays is that they can be very nearly "plug-and-play" swapped for standard arrays. Would it be crazy to simply promote all results to the corresponding complex type? If someone knows the output element type should really be |
There are several related matrix functions, e.g. My current experimental implementation does just as you suggest: convert everything to complex, then calculate the logarithm, then convert back to real. The problem is that there seem to be many cases where the conversion to real "should" work, but doesn't, purely due to round-off. These are matrices with all real entries (even integer entries), and Mathematica easily finds an all-real logarithm. However, the eigenvalues and eigenvectors are complex. The imaginary part that we find (due to round-off) is about 1e-10, which is too large for my taste to discard silently. I think that my approach to calculate the matrix log via eigenvalues is too naive to work well in a numerical setting. A Schur decomposition might be necessary. |
The problem here is basically that base makes these functions type unstable because it's known that the overhead of working with regular heavy arrays makes that instability okay to work with. I think it's important for static arrays that they be type stable, because their whole reason to exist is for getting top-notch performance on small array operations. To that end, I'd advocate in favour of making these methods either error, or return I think that it just needs to be documented that these things can error (or return nan) if the user does not ask for a suitably wide (i.e. complex) type. I do not think that the matrix logarithm should be complex by default. |
I agree regarding type stability. The current problem (that made me stop working on this) is that the Base algorithms require allocating regular dense As far as I can see, calculating the matrix logarithm essentially requires an eigenvalue decomposition. These would be good to have anyway. |
Closes #993.