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Stochastic process example with Girsanov likelihood
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struct StoProMeasure | |
θ::Float64 | |
end | |
struct WienerMeasure | |
end | |
function logdensity(P::StoProMeasure, tr, ::WienerMeasure) | |
som = 0.0 | |
t, x = tr | |
for i in 1:length(x)-1 | |
b = - x[i] + P.θ*atan(x[i]) | |
som += b*(x[i+1] - x[i] - 0.5 * b * (t[i+1]-t[i])) | |
end | |
som | |
end | |
function sample(P::StoProMeasure, T, dt) | |
x = 0.0 | |
t = 0.0 | |
ts = [t] | |
xs = [x] | |
for i in 1:round(Int,T/dt) | |
x += - x*dt + P.θ*atan(x)*dt + sqrt(dt)*randn() | |
t += dt | |
push!(ts, t) | |
push!(xs, x) | |
end | |
tr = ts, xs | |
end | |
tr = sample(StoProMeasure(2.0), 1000, 0.1) # true parameter 2.0 | |
loglikelihood = [x => logdensity(StoProMeasure(x),tr, WienerMeasure()) for x in -1.5:0.1:2.5] | |
_, i = findmax(last.(loglikelihood)) | |
θml = loglikelihood[i][1] | |
println("Maximum likelihood estimate of θ: ", θml) |
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