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optimizetype.jl
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optimizetype.jl
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"""
# OptimizeAlgorithm types
### Types defined
```julia
* Lbfgs::OptimizeAlgorithm : Euclidean manifold with unit metric
* Bfgs::OptimizeAlgorithm : Euclidean manifold with unit metric
* Newton::OptimizeAlgorithm : Euclidean manifold with unit metric
```
"""
abstract type OptimizeAlgorithm end
"""
# Lbfgs type and constructor
Settings for method=Lbfgs() in Optimize().
### Method
```julia
Lbfgs(;init_alpha=0.001, tol_obj=1e-8, tol_grad=1e-8, tol_param=1e-8, history_size=5)
```
### Optional arguments
```julia
* `init_alpha::Float64` : Linear search step size for first iteration
* `tol_obj::Float64` : Convergence tolerance for objective function
* `tol_rel_obj::Float64` : Relative change tolerance in objective function
* `tol_grad::Float64` : Convergence tolerance on norm of gradient
* `tol_rel_grad::Float64` : Relative change tolerance on norm of gradient
* `tol_param::Float64` : Convergence tolerance on parameter values
* `history_size::Int` : No of update vectors to use in Hessian approx
```
### Related help
```julia
?OptimizeMethod : List of available optimize methods
?Optimize : Optimize arguments
```
"""
mutable struct Lbfgs <: OptimizeAlgorithm
init_alpha::Float64
tol_obj::Float64
tol_rel_obj::Float64
tol_grad::Float64
tol_rel_grad::Float64
tol_param::Float64
history_size::Int64
end
Lbfgs(;init_alpha=0.001, tol_obj=1e-8, tol_rel_obj=1e4,
tol_grad=1e-8, tol_rel_grad=1e7, tol_param=1e-8, history_size=5) =
Lbfgs(init_alpha, tol_obj, tol_rel_obj, tol_grad, tol_rel_grad,
tol_param, history_size)
"""
# Bfgs type and constructor
Settings for method=Bfgs() in Optimize().
### Method
```julia
Bfgs(;init_alpha=0.001, tol_obj=1e-8, tol_rel_obj=1e4,
tol_grad=1e-8, tol_rel_grad=1e7, tol_param=1e-8)
```
### Optional arguments
```julia
* `init_alpha::Float64` : Linear search step size for first iteration
* `tol_obj::Float64` : Convergence tolerance for objective function
* `tol_rel_obj::Float64` : Relative change tolerance in objective function
* `tol_grad::Float64` : Convergence tolerance on norm of gradient
* `tol_rel_grad::Float64` : Relative change tolerance on norm of gradient
* `tol_param::Float64` : Convergence tolerance on parameter values
```
### Related help
```julia
?OptimizeMethod : List of available optimize methods
?Optimize : Optimize arguments
```
"""
mutable struct Bfgs <: OptimizeAlgorithm
init_alpha::Float64
tol_obj::Float64
tol_rel_obj::Float64
tol_grad::Float64
tol_rel_grad::Float64
tol_param::Float64
end
Bfgs(;init_alpha=0.001, tol_obj=1e-8, tol_rel_obj=1e4,
tol_grad=1e-8, tol_rel_grad=1e7, tol_param=1e-8) =
Bfgs(init_alpha, tol_obj, tol_rel_obj, tol_grad, tol_rel_grad, tol_param)
"""
# Newton type and constructor
Settings for method=Newton() in Optimize().
### Method
```julia
Newton()
```
### Related help
```julia
?OptimizeMethod : List of available optimize methods
?Optimize : Optimize arguments
```
"""
mutable struct Newton <: OptimizeAlgorithm
end
"""
# Optimize type and constructor
Settings for Optimize top level method.
### Method
```julia
Optimize(;
method=Lbfgs(),
iter=2000,
save_iterations=false
)
```
### Optional arguments
```julia
* `method::OptimizeMethod` : Optimization algorithm
* `iter::Int` : Total number of iterations
* `save_iterations::Bool` : Stream optimization progress to output
```
### Related help
```julia
?Stanmodel : Create a StanModel
?OptimizeAlgorithm : Available algorithms
```
"""
mutable struct Optimize <: Method
method::OptimizeAlgorithm
iter::Int64
save_iterations::Bool
end
Optimize(;method::OptimizeAlgorithm=Lbfgs(), iter::Number=2000,
save_iterations::Bool=false) =
Optimize(method, iter, save_iterations)
Optimize(method::OptimizeAlgorithm) = Optimize(method, 2000, false)
function optimize_show(io::IO, o::Optimize, compact::Bool)
if compact
println(io, "Optimize($(o.method), $(o.iter), $(o.save_iterations))")
else
println(io, " method = Optimize()")
if isa(o.method, Lbfgs)
println(io, " algorithm = Lbfgs()")
println(io, " init_alpha = ", o.method.init_alpha)
println(io, " tol_obj = ", o.method.tol_obj)
println(io, " tol_grad = ", o.method.tol_grad)
println(io, " tol_param = ", o.method.tol_param)
println(io, " history_size = ", o.method.history_size)
elseif isa(o.method, Bfgs)
println(io, " algorithm = Bfgs()")
println(io, " init_alpha = ", o.method.init_alpha)
println(io, " tol_obj = ", o.method.tol_obj)
println(io, " tol_grad = ", o.method.tol_grad)
println(io, " tol_param = ", o.method.tol_param)
else
println(io, " algorithm = Newton()")
end
println(io, " iterations = ", o.iter)
println(io, " save_iterations = ", o.save_iterations)
end
end
show(io::IO, o::Optimize) = optimize_show(io, o, false)