Convex Synthesis of First-Order Methods for Time-Varying Smooth Strongly Convex Optimization
Pith reviewed 2026-05-10 16:28 UTC · model grok-4.3
The pith
A convex synthesis method designs first-order algorithms that track optima in time-varying smooth strongly convex problems.
A machine-rendered reading of the paper's core claim, the machinery that carries it, and where it could break.
Core claim
The paper establishes a convex optimization-based synthesis procedure for first-order methods that guarantees convergence for smooth strongly convex optimization problems whose data varies with time according to a known model. By combining static robust control synthesis with the internal model principle, the framework embeds the dynamics of the variation into the algorithm, allowing it to achieve optimal asymptotic behavior.
What carries the argument
The robust control synthesis framework that produces algorithm parameters by solving a convex program incorporating an internal model of the exogenous time-variation.
If this is right
- The synthesized first-order methods achieve better asymptotic tracking than static methods on time-varying problems.
- Performance bounds for the algorithms can be computed by solving convex optimization problems.
- The method applies whenever an accurate model of the time-variation is available and preserves the required convexity properties.
- Algorithms can be designed offline for specific variation patterns such as periodic or polynomial signals.
Where Pith is reading between the lines
- This synthesis approach might be used to reinterpret or improve upon existing adaptive or online optimization methods.
- It opens the possibility of designing methods for broader classes of time-varying problems if the internal model can be approximated.
- Practitioners could precompute optimal algorithms for recurring time-variation patterns in applications like online learning or model predictive control.
Load-bearing premise
An accurate model of the time-variation must be available and embeddable into the algorithm while maintaining smoothness and strong convexity.
What would settle it
Run the synthesized algorithm and a standard gradient method on a time-varying quadratic objective whose minimum moves sinusoidally; the claim is falsified if the synthesized method shows no asymptotic improvement in tracking error.
Figures
read the original abstract
Time-varying optimization is fundamental to decision-making in dynamic environments, where objectives evolve over time due to exogenous signals or data streams. However, algorithms designed for static problems yield suboptimal decisions in dynamic scenarios, even asymptotically. In this paper, we develop a robust control synthesis framework to systematically design first-order methods for smooth strongly convex problems that vary in time. Our approach leverages both convex robust control synthesis in the static setting and the internal model principle by directly embedding a model of the underlying variability into the designed algorithm.
Editorial analysis
A structured set of objections, weighed in public.
Referee Report
Summary. The manuscript develops a robust control synthesis framework for first-order methods applied to time-varying smooth strongly convex optimization problems. It combines convex robust control synthesis techniques (developed for static problems) with the internal model principle to embed a model of the exogenous time-variation directly into the algorithm iteration.
Significance. If the central technical claims hold, the work offers a systematic, convex-optimization-based procedure for designing first-order algorithms with performance guarantees in dynamic settings. This bridges robust control and time-varying optimization and could yield algorithms whose convergence rates adapt to known variability models without manual tuning.
major comments (2)
- [§3] §3 (Embedding construction) and the statement of the main synthesis theorem: the argument that the internal-model augmentation preserves the original smoothness and strong-convexity constants uniformly over all admissible exogenous trajectories is missing. Without an explicit bound showing that the augmented map remains L-smooth and μ-strongly convex with the same L and μ (independent of the time-varying signal), the static robust-control LMI/SDP cannot be applied directly to certify performance on the time-varying problem.
- [Theorem 1] Theorem 1 (or equivalent main result): the performance certificate obtained from the static synthesis is transferred to the time-varying case only if the closed-loop operator satisfies the same sector bounds used in the static LMI. The manuscript provides no verification that the internal-model states do not introduce additional Lipschitz or curvature terms that depend on the unknown exogenous trajectory.
minor comments (2)
- [Introduction] The precise regularity assumptions on the exogenous signal (e.g., bounded derivatives, periodicity, or membership in a known function class) are stated only informally; they should be listed explicitly before the embedding step.
- Notation: the distinction between the time-varying objective f_t and the embedded internal-model state is not always visually clear; a consistent subscript or superscript convention would help.
Simulated Author's Rebuttal
We thank the referee for the careful reading and constructive feedback. The two major comments identify gaps in the explicit justification for uniform preservation of problem constants and sector bounds under internal-model augmentation. We address both points directly below and have revised the manuscript to supply the missing arguments.
read point-by-point responses
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Referee: [§3] §3 (Embedding construction) and the statement of the main synthesis theorem: the argument that the internal-model augmentation preserves the original smoothness and strong-convexity constants uniformly over all admissible exogenous trajectories is missing. Without an explicit bound showing that the augmented map remains L-smooth and μ-strongly convex with the same L and μ (independent of the time-varying signal), the static robust-control LMI/SDP cannot be applied directly to certify performance on the time-varying problem.
Authors: We agree that an explicit uniform bound is required. The original manuscript implicitly assumes preservation but does not derive it. In the revised version we insert a new lemma (Lemma 3.2) immediately after the embedding construction. The lemma states that for any admissible exogenous trajectory the augmented state map remains L-smooth and μ-strongly convex with exactly the same constants. The short proof proceeds by noting that the internal-model dynamics are linear and driven solely by the exogenous signal; the gradient of the time-varying objective is still evaluated only at the original decision variable, so the Lipschitz and convexity moduli are unchanged and independent of the particular trajectory. With this lemma in place the static LMI/SDP applies verbatim. revision: yes
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Referee: [Theorem 1] Theorem 1 (or equivalent main result): the performance certificate obtained from the static synthesis is transferred to the time-varying case only if the closed-loop operator satisfies the same sector bounds used in the static LMI. The manuscript provides no verification that the internal-model states do not introduce additional Lipschitz or curvature terms that depend on the unknown exogenous trajectory.
Authors: We acknowledge that the transfer argument in the original text is incomplete on this point. The revised manuscript adds a proposition (Proposition 4.1) immediately preceding Theorem 1. The proposition verifies that the closed-loop operator, augmented by the internal model, satisfies the identical sector bounds employed in the static LMI. Because the internal-model states are affine functions of the exogenous signal and the algorithm state, and because the sector condition is imposed only on the gradient of the time-varying objective (which retains its original L and μ), no trajectory-dependent Lipschitz or curvature terms appear. The explicit algebraic verification is included in the appendix for completeness. revision: yes
Circularity Check
No significant circularity; synthesis framework relies on external robust control and internal model principles without self-referential reduction
full rationale
The paper's abstract and description present a design approach that combines convex robust control synthesis (static case) with the internal model principle by embedding a model of time-variation. No equations, fitted parameters, or derivations are shown that reduce a claimed prediction or result to the inputs by construction. No self-citations are invoked as load-bearing uniqueness theorems, no ansatz is smuggled, and no renaming of known results occurs. The central claim is a methodological combination of established external tools, making the derivation self-contained against benchmarks in robust control theory and the internal model principle.
Axiom & Free-Parameter Ledger
Reference graph
Works this paper leans on
-
[1]
Analysis and design of optimization algorithms via integral quadratic constraints,
L. Lessard, B. Recht, and A. Packard, “Analysis and design of optimization algorithms via integral quadratic constraints,” SIAM J Optim, vol. 26, no. 1, pp. 57–95, 2016
work page 2016
-
[2]
Dissipativity theory for Nesterov’s ac- celerated method,
B. Hu and L. Lessard, “Dissipativity theory for Nesterov’s ac- celerated method,” inInternational Conference on Machine Learning. PMLR, 2017, pp. 1549–1557
work page 2017
-
[3]
Convex synthesis of acceler- ated gradient algorithms,
C. Scherer and C. Ebenbauer, “Convex synthesis of acceler- ated gradient algorithms,”SIAM Journal on Control and Op- timization, vol. 59, no. 6, pp. 4615–4645, 2021
work page 2021
-
[4]
Optimization algorithm synthesis based on integral quadratic constraints: A tutorial,
C. W. Scherer, C. Ebenbauer, and T. Holicki, “Optimization algorithm synthesis based on integral quadratic constraints: A tutorial,” in2023 62nd IEEE Conference on Decision and Control (CDC). IEEE, 2023, pp. 2995–3002
work page 2023
-
[5]
Introduction to online convex optimization,
E. Hazan, “Introduction to online convex optimization,”Foun- dations and Trends in Optimization, vol. 2, no. 3-4, pp. 157– 325, 2016
work page 2016
-
[6]
G. Bianchin and B. Van Scoy, “The discrete-time internal model principle of time-varying optimization: Limitations and algorithm design,” inProc CDC, Dec. 2025
work page 2025
-
[7]
——, “The internal model principle of time-varying op- timization,”IEEE Trans Automatic Ctrl, Aug. 2026, arXiv:2407.08037
-
[8]
The fastest known globally convergent first-order method for minimizing strongly convex functions,
B. Van Scoy, R. A. Freeman, and K. M. Lynch, “The fastest known globally convergent first-order method for minimizing strongly convex functions,”IEEE Control Systems Letters, vol. 2, no. 1, pp. 49–54, 2017
work page 2017
-
[9]
Optimization algorithm synthesis based on integral quadratic constraints: A tutorial,
C. W. Scherer, C. Ebenbauer, and T. Holicki, “Optimization algorithm synthesis based on integral quadratic constraints: A tutorial,” inProc CDC, 2023, pp. 2995–3002
work page 2023
-
[10]
A dynamical systems per- spective on nesterov acceleration,
M. Muehlebach and M. Jordan, “A dynamical systems per- spective on nesterov acceleration,” inInternational Confer- ence on Machine Learning, 2019, pp. 4656–4662
work page 2019
-
[11]
C. W. Scherer, “Dissipativity and integral quadratic con- straints: Tailored computational robustness tests for complex interconnections,”IEEE Control Systems Magazine, vol. 42, no. 3, pp. 115–139, 2022
work page 2022
-
[12]
The analysis of optimization algorithms: A dissi- pativity approach,
L. Lessard, “The analysis of optimization algorithms: A dissi- pativity approach,”IEEE Control Systems Magazine, vol. 42, no. 3, pp. 58–72, 2022
work page 2022
-
[13]
Direct synthesis of iterative al- gorithms with bounds on achievable worst-case convergence rate,
L. Lessard and P. Seiler, “Direct synthesis of iterative al- gorithms with bounds on achievable worst-case convergence rate,” in2020 American Control Conference, 2020, pp. 119– 125
work page 2020
-
[14]
Robust and structure exploiting optimisation algorithms: an integral quadraticconstraintapproach,
S. Michalowsky, C. Scherer, and C. Ebenbauer, “Robust and structure exploiting optimisation algorithms: an integral quadraticconstraintapproach,”International Journal of Con- trol, vol. 94, pp. 1–24, 2021
work page 2021
-
[15]
D. Gramlich, C. Ebenbauer, and C. W. Scherer, “Synthesis of accelerated gradient algorithms for optimization and saddle point problems using lyapunov functions and lmis,”Systems & Control Letters, vol. 165, p. 105271, 2022
work page 2022
-
[16]
Algorithm design and ex- tremum control: Convex synthesis due to plant multiplier commutation,
T. Holicki and C. W. Scherer, “Algorithm design and ex- tremum control: Convex synthesis due to plant multiplier commutation,” in60th IEEE Conference on Decision and Control, 2021, pp. 3249–3252
work page 2021
-
[17]
Online convex programming and generalized infinitesimal gradient ascent,
M. Zinkevich, “Online convex programming and generalized infinitesimal gradient ascent,” inInternational conference on machine learning, 2003, pp. 928–936
work page 2003
-
[18]
Logarithmic regret al- gorithms for online convex optimization,
E. Hazan, A. Agarwal, and S. Kale, “Logarithmic regret al- gorithms for online convex optimization,”Machine Learning, vol. 69, no. 2, pp. 169–192, 2007
work page 2007
-
[19]
Online op- timization as a feedback controller: Stability and tracking,
M. Colombino, E. Dall’Anese, and A. Bernstein, “Online op- timization as a feedback controller: Stability and tracking,” IEEE Trans Control Netw Syst, vol. 7, no. 1, pp. 422–432, 2020
work page 2020
-
[20]
Online primal-dual methods with measurement feedback for time- varying convex optimization,
A. Bernstein, E. Dall’Anese, and A. Simonetto, “Online primal-dual methods with measurement feedback for time- varying convex optimization,”IEEE Trans Signal Processing, vol. 67, no. 8, pp. 1978–1991, 2019
work page 1978
-
[21]
A class of prediction-correction methods for time- varying convex optimization,
A. Simonetto, A. Mokhtari, A. Koppel, G. Leus, and A. Ribeiro, “A class of prediction-correction methods for time- varying convex optimization,”IEEE Trans Signal Processing, vol. 64, no. 17, pp. 4576–4591, 2016
work page 2016
-
[22]
Prediction-correction interior-point method for time-varying convex optimization,
M. Fazlyab, S. Paternain, V. M. Preciado, and A. Ribeiro, “Prediction-correction interior-point method for time-varying convex optimization,”IEEE Trans Automatic Ctrl, vol. 63, no. 7, pp. 1973–1986, 2017
work page 1973
-
[23]
Time-varying convex optimization: Time- 8 structured algorithms and applications,
A. Simonetto, E. Dall’Anese, S. Paternain, G. Leus, and G. B. Giannakis, “Time-varying convex optimization: Time- 8 structured algorithms and applications,”Proceedings of the IEEE, vol. 108, no. 11, pp. 2032–2048, 2020
work page 2032
-
[24]
Internal model- based online optimization,
N. Bastianello, R. Carli, and S. Zampieri, “Internal model- based online optimization,”IEEE Trans Automatic Ctrl, vol. 69, no. 1, pp. 689–696, 2024
work page 2024
-
[25]
Time- varying optimization of LTI systems via projected primal-dual gradient flows,
G.Bianchin, J.Cortés, J.I.Poveda, andE.Dall’Anese, “Time- varying optimization of LTI systems via projected primal-dual gradient flows,”IEEE Trans Control Netw Syst, vol. 9, no. 1, pp. 474–486, Mar. 2022
work page 2022
-
[26]
The internal model princi- ple of control theory,
B. A. Francis and W. M. Wonham, “The internal model princi- ple of control theory,”Automatica, vol. 12, no. 5, pp. 457–465, 1976
work page 1976
-
[27]
Error feedback and internal models on differentiable manifolds,
J. Hepburn and W. Wonham, “Error feedback and internal models on differentiable manifolds,”IEEE Trans Automatic Ctrl, vol. 29, no. 5, pp. 397–403, 1984
work page 1984
-
[28]
Harmonic internal mod- els for structurally robust periodic output regulation,
D. Astolfi, L. Praly, and L. Marconi, “Harmonic internal mod- els for structurally robust periodic output regulation,”Sys- tems and Control Letters, vol. 161, pp. 105–154, 2022
work page 2022
-
[29]
Robust tracking for a class of nonlinear plants, achieved via a linear controller,
F. Delli Priscoli, “Robust tracking for a class of nonlinear plants, achieved via a linear controller,” inProceedings of 32nd IEEE Conference on Decision and Control, 1993, pp. 3550– 3555 vol.4
work page 1993
-
[30]
Convex synthesis of acceler- ated gradient algorithms,
C. Scherer and C. Ebenbauer, “Convex synthesis of acceler- ated gradient algorithms,”SIAM Journal on Control and Op- timization, vol. 59, no. 6, pp. 4615–4645, Jan. 2021
work page 2021
-
[31]
A tutorial on convex design of optimization algorithms by integral quadratic constraints,
C. W. Scherer and C. Ebenbauer, “A tutorial on convex design of optimization algorithms by integral quadratic constraints,” Annual Review of Control, Robotics, and Autonomous Sys- tems, 2025
work page 2025
-
[32]
Stability conditions for systems with monotone and slope-restricted nonlinearities,
G. Zames and P. Falb, “Stability conditions for systems with monotone and slope-restricted nonlinearities,”SIAM Journal on Control, vol. 6, no. 1, pp. 89–108, 1968
work page 1968
-
[33]
A linear matrix inequality ap- proach toh ∞ control,
P. Gahinet and P. Apkarian, “A linear matrix inequality ap- proach toh ∞ control,”International Journal of Robust and Nonlinear Control, vol. 4, no. 4, pp. 421–448, 1994
work page 1994
-
[34]
J. C. Willems, “Dissipative dynamical systems—Part I: Gen- eral theory; Part II: Linear systems with quadratic supply rates,”Archive for Rational Mechanics and Analysis, vol. 45, no. 5, pp. 321–393, 1972
work page 1972
-
[35]
Temporal variabilities limit convergence rates in gradient-based online optimization,
B. Van Scoy and G. Bianchin, “Temporal variabilities limit convergence rates in gradient-based online optimization,” in American Control Conference, 2026. 9
work page 2026
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