forked from glen/dyna3
100 lines
2.6 KiB
Julia
100 lines
2.6 KiB
Julia
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module Engine
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using LinearAlgebra
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using SparseArrays
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export Q, DescentHistory, realize_gram
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# the Lorentz form
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Q = diagm([1, 1, 1, 1, -1])
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# the difference between the matrices `target` and `attempt`, projected onto the
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# subspace of matrices whose entries vanish at each empty index of `target`
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function proj_diff(target::SparseMatrixCSC{T, <:Any}, attempt::Matrix{T}) where T
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J, K, values = findnz(target)
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result = zeros(size(target)...)
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for (j, k, val) in zip(J, K, values)
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result[j, k] = val - attempt[j, k]
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end
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result
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end
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# a type for keeping track of gradient descent history
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struct DescentHistory{T}
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scaled_loss::Array{T}
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stepsize::Array{T}
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backoff_steps::Array{Int64}
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function DescentHistory{T}(
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scaled_loss = Array{T}(undef, 0),
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stepsize = Array{T}(undef, 0),
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backoff_steps = Int64[]
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) where T
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new(scaled_loss, stepsize, backoff_steps)
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end
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end
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# seek a matrix `L` for which `L'QL` matches the sparse matrix `gram` at every
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# explicit entry of `gram`. use gradient descent starting from `guess`
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function realize_gram(
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gram::SparseMatrixCSC{T, <:Any},
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guess::Matrix{T};
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scaled_tol = 1e-30,
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target_improvement = 0.5,
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init_stepsize = 1.0,
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backoff = 0.9,
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max_descent_steps = 600,
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max_backoff_steps = 110
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) where T <: Number
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# start history
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history = DescentHistory{T}()
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# scale tolerance
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scale_adjustment = sqrt(T(nnz(gram)))
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tol = scale_adjustment * scaled_tol
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# initialize variables
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stepsize = init_stepsize
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L = copy(guess)
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# do gradient descent
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Δ_proj = proj_diff(gram, L'*Q*L)
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loss = norm(Δ_proj)
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for step in 1:max_descent_steps
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# stop if the loss is tolerably low
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if loss < tol
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break
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end
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# find negative gradient of loss function
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neg_grad = 4*Q*L*Δ_proj
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slope = norm(neg_grad)
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# store current position and loss
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L_last = L
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loss_last = loss
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push!(history.scaled_loss, loss / scale_adjustment)
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# find a good step size using backtracking line search
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push!(history.stepsize, 0)
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push!(history.backoff_steps, max_backoff_steps)
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for backoff_steps in 0:max_backoff_steps
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history.stepsize[end] = stepsize
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L = L_last + stepsize * neg_grad
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Δ_proj = proj_diff(gram, L'*Q*L)
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loss = norm(Δ_proj)
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improvement = loss_last - loss
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if improvement >= target_improvement * stepsize * slope
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history.backoff_steps[end] = backoff_steps
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break
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end
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stepsize *= backoff
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end
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end
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# return the factorization and its history
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push!(history.scaled_loss, loss / scale_adjustment)
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L, history
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end
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end
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