Fri, 16 Jan 2026 19:39:22 -0500
Lipschitz estimation attempt (incomplete, not implemented for sliding. Doesn't work anyway for basic FB either.)
/*! Solver for the point source localisation problem using a simplified forward-backward splitting method. Instead of the $𝒟$-norm of `fb.rs`, this uses a standard Radon norm for the proximal map. */ use super::{InsertionConfig, ProxPenalty, ProxTerm, StepLengthBound, StepLengthBoundPD}; use crate::dataterm::QuadraticDataTerm; use crate::forward_model::ForwardModel; use crate::measures::merging::SpikeMerging; use crate::measures::{DeltaMeasure, DiscreteMeasure, Radon}; use crate::prox_penalty::StepLengthBoundValue; use crate::regularisation::RegTerm; use crate::types::*; use alg_tools::bounds::MinMaxMapping; use alg_tools::error::DynResult; use alg_tools::instance::{Instance, Space}; use alg_tools::iterate::{AlgIterator, AlgIteratorIteration}; use alg_tools::linops::BoundedLinear; use alg_tools::nalgebra_support::ToNalgebraRealField; use alg_tools::norms::{Norm, L2}; use anyhow::ensure; use nalgebra::DVector; use numeric_literals::replace_float_literals; use serde::{Deserialize, Serialize}; /// Radon-norm squared proximal penalty #[derive(Copy, Clone, Serialize, Deserialize)] pub struct RadonSquared; #[replace_float_literals(F::cast_from(literal))] impl<Domain, F, M, Reg> ProxPenalty<Domain, M, Reg, F> for RadonSquared where Domain: Space + Clone + PartialEq + 'static, for<'a> &'a Domain: Instance<Domain>, F: Float + ToNalgebraRealField, M: MinMaxMapping<Domain, F>, Reg: RegTerm<Domain, F>, DiscreteMeasure<Domain, F>: SpikeMerging<F>, { type ReturnMapping = M; fn prox_type() -> ProxTerm { ProxTerm::RadonSquared } fn insert_and_reweigh<I>( &self, μ: &mut DiscreteMeasure<Domain, F>, τv: &mut M, μ_base: &DiscreteMeasure<Domain, F>, ν_delta: Option<&DiscreteMeasure<Domain, F>>, τ: F, ε: F, config: &InsertionConfig<F>, reg: &Reg, _state: &AlgIteratorIteration<I>, stats: &mut IterInfo<F>, ) -> DynResult<(Option<Self::ReturnMapping>, bool)> where I: AlgIterator, { let mut y = μ_base.masses_dvector(); ensure!(μ_base.len() <= μ.len()); 'i_and_w: for i in 0..=1 { // Optimise weights if μ.len() > 0 { // Form finite-dimensional subproblem. The subproblem references to the original μ^k // from the beginning of the iteration are all contained in the immutable c and g. // TODO: observe negation of -τv after switch from minus_τv: finite-dimensional // problems have not yet been updated to sign change. let g̃ = DVector::from_iterator( μ.len(), μ.iter_locations() .map(|ζ| -F::to_nalgebra_mixed(τv.apply(ζ))), ); let mut x = μ.masses_dvector(); y.extend(std::iter::repeat(0.0.to_nalgebra_mixed()).take(0.max(x.len() - y.len()))); assert_eq!(y.len(), x.len()); // Solve finite-dimensional subproblem. // TODO: This assumes that ν_delta has no common locations with μ-μ_base, to // ignore it. stats.inner_iters += reg.solve_findim_l1squared(&y, &g̃, τ, &mut x, ε, config); // Update masses of μ based on solution of finite-dimensional subproblem. μ.set_masses_dvector(&x); } if i > 0 { // Simple debugging test to see if more inserts would be needed. Doesn't seem so. //let n = μ.dist_matching(μ_base); //println!("{:?}", reg.find_tolerance_violation_slack(τv, τ, ε, false, config, n)); break 'i_and_w; } // Calculate ‖μ - μ_base‖_ℳ // TODO: This assumes that ν_delta has no common locations with μ-μ_base. let n = μ.dist_matching(μ_base) + ν_delta.map_or(0.0, |ν| ν.norm(Radon)); // Find a spike to insert, if needed. // This only check the overall tolerances, not tolerances on support of μ-μ_base or μ, // which are supposed to have been guaranteed by the finite-dimensional weight optimisation. match reg.find_tolerance_violation_slack(τv, τ, ε, false, config, n) { None => break 'i_and_w, Some((ξ, _v_ξ, _in_bounds)) => { // Weight is found out by running the finite-dimensional optimisation algorithm // above *μ += DeltaMeasure { x: ξ, α: 0.0 }; stats.inserted += 1; } }; } Ok((None, true)) } fn merge_spikes( &self, μ: &mut DiscreteMeasure<Domain, F>, τv: &mut M, μ_base: &DiscreteMeasure<Domain, F>, ν_delta: Option<&DiscreteMeasure<Domain, F>>, τ: F, ε: F, config: &InsertionConfig<F>, reg: &Reg, fitness: Option<impl Fn(&DiscreteMeasure<Domain, F>) -> F>, ) -> usize { if config.fitness_merging { if let Some(f) = fitness { return μ.merge_spikes_fitness(config.merging, f, |&v| v).1; } } μ.merge_spikes(config.merging, |μ_candidate| { // Important: μ_candidate's new points are afterwards, // and do not conflict with μ_base. // TODO: could simplify to requiring μ_base instead of μ_radon. // but may complicate with sliding base's exgtra points that need to be // after μ_candidate's extra points. // TODO: doesn't seem to work, maybe need to merge μ_base as well? // Although that doesn't seem to make sense. let μ_radon = match ν_delta { None => μ_candidate.sub_matching(μ_base), Some(ν) => μ_candidate.sub_matching(μ_base) - ν, }; reg.verify_merge_candidate_radonsq(τv, μ_candidate, τ, ε, &config, &μ_radon) //let n = μ_candidate.dist_matching(μ_base); //reg.find_tolerance_violation_slack(τv, τ, ε, false, config, n).is_none() }) } } #[replace_float_literals(F::cast_from(literal))] impl<'a, F, A, Domain> StepLengthBound<F, QuadraticDataTerm<F, Domain, A>> for RadonSquared where F: Float + ToNalgebraRealField, Domain: Space + Norm<Radon, F>, A: ForwardModel<Domain, F> + BoundedLinear<Domain, Radon, L2, F>, { fn step_length_bound(&self, f: &QuadraticDataTerm<F, Domain, A>) -> StepLengthBoundValue<F> { // TODO: direct squared calculation match f.operator().opnorm_bound(Radon, L2) { Err(_) => StepLengthBoundValue::Failure, Ok(l) => StepLengthBoundValue::LipschitzFactor(l.powi(2)), } } } #[replace_float_literals(F::cast_from(literal))] impl<'a, F, A, Domain> StepLengthBoundPD<F, A, DiscreteMeasure<Domain, F>> for RadonSquared where Domain: Space + Clone + PartialEq + 'static, F: Float + ToNalgebraRealField, A: BoundedLinear<DiscreteMeasure<Domain, F>, Radon, L2, F>, { fn step_length_bound_pd(&self, opA: &A) -> DynResult<F> { opA.opnorm_bound(Radon, L2) } }