A Benchmark of 25 Nonlinear Functions with Domain-Induced Discontinuity for Global Optimization
Pith reviewed 2026-05-10 00:36 UTC · model grok-4.3
The pith
A benchmark of 25 nonlinear functions embeds infeasible regions directly into the objective to test global optimization methods under extreme feasibility scarcity.
A machine-rendered reading of the paper's core claim, the machinery that carries it, and where it could break.
Core claim
The CPC benchmark comprises 25 nonlinear functions that are continuous on their natural domains yet embed infeasible regions and undefined evaluations inside the objective function itself, thereby generating feasibility-scarce and structurally discontinuous landscapes. Experiments with six representative global optimization algorithms establish that numerous functions possess extremely small feasible regions together with strong precision sensitivity near those boundaries, which in turn complicates initialization, feasibility discovery, and reliable objective evaluation. The benchmark exhibits clear discriminative power across algorithmic paradigms and supplies a software-oriented testbed.
What carries the argument
The CPC benchmark itself, a collection of 25 functions whose domain-induced discontinuity is realized by embedding infeasible regions and undefined evaluations directly into the objective rather than stating them as separate constraints.
If this is right
- Global optimization codes must incorporate specialized initialization or feasibility-recovery steps to handle the minuscule valid sets.
- Objective evaluation routines require safeguards against precision loss when points lie close to feasibility boundaries.
- Comparative studies of algorithms can now use the benchmark to quantify differences in their ability to locate and stay inside narrow feasible regions.
- Developers of new global solvers gain a standardized collection against which to measure progress on feasibility-scarce problems.
Where Pith is reading between the lines
- The benchmark could be extended with controlled scaling of dimension or noise to probe how the same discontinuity structure behaves in higher-dimensional or stochastic settings.
- Practitioners facing implicit constraints in engineering design might extract subsets of these functions to stress-test their own solvers before deployment.
- The emphasis on embedded rather than explicit constraints suggests similar construction principles could be applied to create test problems for constrained Bayesian optimization or derivative-free methods.
- Widespread adoption might encourage algorithm designers to prioritize feasibility discovery mechanisms over pure objective improvement in early search phases.
Load-bearing premise
The twenty-five chosen functions together with the six tested algorithms are representative enough of domain-induced discontinuity problems and of the broader space of global optimization methods to demonstrate meaningful differences.
What would settle it
A systematic enumeration of the feasible volumes for each of the twenty-five functions using arbitrary-precision arithmetic that shows the regions are not extremely small, or a new suite of global solvers that all achieve statistically indistinguishable success rates on the benchmark, would undermine the reported discriminative power.
Figures
read the original abstract
A benchmark of 25 nonlinear optimization problems with domain-induced discontinuity is proposed to support the performance evaluation of global optimization algorithms under feasibility-scarce and structurally discontinuous landscapes. Referred to as the CPC Benchmark (Challenging Problems for Computation), the test suiteconsists of functions that are continuous on their natural domains, while infeasible regions and undefined evaluations are implicitly embedded in the objective, creating substantial challenges for global minimization. Six representative algorithms from diverse methodological paradigms are assessed to examine the structural complexity and discriminative capability of the benchmark. Numerical results show that many functions possess extremely small feasible regions and strong precision sensitivity near feasibility boundaries, complicating initialization, feasibility discovery, and reliable objective assessment. The findings demonstrate that the CPC benchmark provides clear discriminative power across algorithmic paradigms and offers a rigorous, software-oriented testbed for advancing research in global optimization.
Editorial analysis
A structured set of objections, weighed in public.
Referee Report
Summary. The manuscript proposes the CPC benchmark, a collection of 25 nonlinear functions with domain-induced discontinuities that create small feasible regions and precision sensitivity at boundaries. It evaluates six global optimization algorithms drawn from different methodological paradigms, presents numerical results on feasibility discovery and objective assessment difficulties, and concludes that the suite provides clear discriminative power and a rigorous, software-oriented testbed for global optimization research.
Significance. If the supporting numerical evidence and function characterizations hold, the work would offer a targeted addition to existing optimization benchmarks by focusing on feasibility-scarce landscapes that arise in many applied problems. The emphasis on software implementation and the explicit highlighting of initialization and boundary-precision challenges could help guide algorithm development in this niche.
major comments (3)
- [§4] §4 (Numerical Experiments): The central claim of 'clear discriminative power across algorithmic paradigms' rests on performance differences, yet the text provides no quantitative measures of feasible-region volume, no description of how feasibility was detected or sampled, no error bars, and no statistical significance tests on the reported outcomes; this absence directly undermines the ability to evaluate the strength of the discriminative-power assertion.
- [§2] §2 (Benchmark Definition): The selection of the 25 specific functions is presented without explicit criteria, volume estimates, or verification that they collectively capture the structural features of real-world domain-induced discontinuity problems; without such justification the representativeness assumption remains unverified and load-bearing for generalizing the benchmark's utility.
- [§3] §3 (Algorithm Selection): The choice of exactly six algorithms is stated to represent 'diverse methodological paradigms,' but no rationale, coverage argument, or implementation details (e.g., parameter settings, termination criteria) are supplied; this gap prevents assessment of whether the observed differences truly demonstrate broad discriminative capability.
minor comments (2)
- [Abstract] Abstract: 'test suiteconsists' contains a missing space; correct to 'test suite consists'.
- Throughout: Several function names and parameter values are introduced without accompanying references to their original sources or prior uses in the optimization literature.
Simulated Author's Rebuttal
We thank the referee for the thoughtful and constructive comments on our manuscript. We address each of the major comments below and outline the revisions we will make to strengthen the paper.
read point-by-point responses
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Referee: [§4] §4 (Numerical Experiments): The central claim of 'clear discriminative power across algorithmic paradigms' rests on performance differences, yet the text provides no quantitative measures of feasible-region volume, no description of how feasibility was detected or sampled, no error bars, and no statistical significance tests on the reported outcomes; this absence directly undermines the ability to evaluate the strength of the discriminative-power assertion.
Authors: We agree that additional quantitative details would enhance the credibility of our claims. In the revised manuscript, we will include estimates of the feasible region volumes for each function (computed via Monte Carlo sampling where analytical computation is intractable), provide a clear description of the feasibility detection procedure (based on domain membership and defined objective evaluation), report results with error bars from 30 independent runs, and include statistical significance tests (e.g., Friedman test followed by post-hoc analysis) to support the observed performance differences. revision: yes
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Referee: [§2] §2 (Benchmark Definition): The selection of the 25 specific functions is presented without explicit criteria, volume estimates, or verification that they collectively capture the structural features of real-world domain-induced discontinuity problems; without such justification the representativeness assumption remains unverified and load-bearing for generalizing the benchmark's utility.
Authors: The functions were chosen to exemplify different types of domain-induced discontinuities, including those arising from logarithms, square roots, and divisions by zero, inspired by practical problems in engineering and physics. We acknowledge the need for more explicit justification. In the revision, we will add a section detailing the selection criteria, provide volume estimates, and include a discussion or table mapping the benchmark functions to real-world applications to better substantiate their representativeness. revision: yes
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Referee: [§3] §3 (Algorithm Selection): The choice of exactly six algorithms is stated to represent 'diverse methodological paradigms,' but no rationale, coverage argument, or implementation details (e.g., parameter settings, termination criteria) are supplied; this gap prevents assessment of whether the observed differences truly demonstrate broad discriminative capability.
Authors: We selected the six algorithms to cover key paradigms: evolutionary algorithms, swarm intelligence, Bayesian optimization, and deterministic global methods. To address this, the revised version will include a dedicated subsection explaining the rationale for each choice, arguments for coverage of the optimization landscape, and full implementation details including parameter settings (using standard defaults from respective libraries) and termination criteria (e.g., maximum of 10,000 function evaluations or convergence tolerance). revision: yes
Circularity Check
No circularity: benchmark proposal is self-contained empirical work
full rationale
The paper proposes the CPC benchmark consisting of 25 explicitly defined nonlinear functions and reports direct numerical performance of six algorithms on them. No derivation chain, fitted parameters renamed as predictions, self-definitional equations, or load-bearing self-citations appear in the abstract or described structure. Claims of discriminative power rest on the presented experimental outcomes rather than any reduction to prior inputs by construction, satisfying the criteria for a non-circular benchmark study.
Axiom & Free-Parameter Ledger
Reference graph
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