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arxiv: 2507.15090 · v2 · pith:7V2MUCQKnew · submitted 2025-07-20 · 🧮 math.PR · math.FA

Affine AP-frames and Stationary Random Processes

Pith reviewed 2026-05-21 23:25 UTC · model grok-4.3

classification 🧮 math.PR math.FA
keywords affine frameswavelet systemsstationary random processesGaussian processesergodic theoremAP-frameswavelet frames
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The pith

An affine wavelet system forms an AP-frame if and only if associated Gaussian stationary random processes satisfy an ergodic averaging condition.

A machine-rendered reading of the paper's core claim, the machinery that carries it, and where it could break.

The paper proves a necessary and sufficient condition for an affine wavelet system to be an AP-frame in L2(R). The condition is formulated using properties of Gaussian stationary random processes, building on the ergodic theorem applied to inner-product sequences at each scale. A sympathetic reader would care because the result links deterministic frame constructions to stochastic processes, extending similar characterizations previously obtained for Gabor systems. The work also connects the decay of those inner-product sequences to smoothness requirements on the random process.

Core claim

We prove a necessary and sufficient condition for the affine system A = {a^{j/2} ψ_{j,k}(t) := a^{-j/2} ψ(a^{-j} t - k) : j ∈ Z, k ∈ bZ} to be an affine AP-frame in terms of Gaussian stationary random processes, using the ergodic theorem on the sequences of inner products, and we study how the decay of these sequences relates to a smoothness condition on the process X.

What carries the argument

The ergodic theorem applied to the stationary sequences of inner products {<X, ψ_{j,k}> : k ∈ K} for each fixed scale j, which converts the frame property into an averaging condition on the Gaussian process.

If this is right

  • The frame property of the affine system can be verified through averages computed on realizations of the associated Gaussian process.
  • Faster decay of the inner-product sequences implies greater smoothness of the underlying stationary process.
  • The same probabilistic characterization that worked for Gabor systems now applies to affine wavelet systems.
  • Probabilistic tools become available for analyzing or constructing affine AP-frames.

Where Pith is reading between the lines

These are editorial extensions of the paper, not claims the author makes directly.

  • Numerical simulation of Gaussian processes could serve as a practical test for the frame property in concrete wavelet systems.
  • The link may extend to stochastic signal processing where wavelet expansions operate on noisy data.
  • Similar characterizations might be sought for non-Gaussian processes or for frames in other function spaces.

Load-bearing premise

The ergodic theorem applies directly to the stationary sequences of inner products for each fixed scale without further restrictions.

What would settle it

Construct a Gaussian stationary process X for which the ergodic averages of the inner products fail the stated condition while the affine system still satisfies the AP-frame definition, or the reverse.

read the original abstract

It is known that, in general, an affine or Gabor AP-frame is an $L^2(\mathbb{R})$-frame and conversely. In part as a consequence of the Ergodic Theorem, we prove a necessary and sufficient condition for an affine (wavelet) system $\mathcal{A}=\{a^{j/2} \psi_{j,k}(t):=a^{-j/2} \psi (a^{-j} t -k) :j\in\mathbb{Z}, k\in\mathbb{K}:=b\mathbb{Z}\}$ to be an affine AP-Frame in terms of Gaussian stationary random processes expanding in this way what we have done recently for Gabor systems. Likewise, we study a connection between the decay of the associated stationary sequences $\{\langle{X,\psi_{j,k}}\rangle : k\in\mathbb{K}\}$ for each $j\in\mathbb{Z}$, and a smoothness condition on a Gaussian stationary random process $X=(X(t))_{t\in\mathbb{R}}$.

Editorial analysis

A structured set of objections, weighed in public.

Desk editor's note, referee report, simulated authors' rebuttal, and a circularity audit. Tearing a paper down is the easy half of reading it; the pith above is the substance, this is the friction.

Referee Report

1 major / 2 minor

Summary. The manuscript claims to prove a necessary and sufficient condition for an affine (wavelet) system A = {a^{j/2} ψ_{j,k}(t) := a^{-j/2} ψ(a^{-j} t - k) : j ∈ Z, k ∈ K := bZ} to be an affine AP-frame, expressed in terms of Gaussian stationary random processes X, as a consequence of the ergodic theorem; this extends prior results for Gabor systems. It additionally studies the link between decay of the stationary sequences {<X, ψ_{j,k}> : k ∈ K} for each fixed j and a smoothness condition on X.

Significance. If the central equivalence holds, the result would supply a probabilistic characterization of affine AP-frames that connects frame inequalities directly to expectations and ergodic averages over Gaussian processes, extending the Gabor case and potentially aiding constructions or analysis involving random signals. The additional decay-smoothness connection offers a secondary analytic-probabilistic bridge.

major comments (1)
  1. [derivation of the necessary and sufficient condition (following the abstract's reference to the Ergodic Theorem)] The derivation of the N&S condition (invoked via the ergodic theorem in the abstract and the main argument) applies the ergodic theorem to the sequences {<X, ψ_{j,k}> : k ∈ K} for each fixed j to replace the k-average of |⟨X, ψ_{j,k}⟩|^2 by E[|⟨X, ψ_{j,0}⟩|^2]. For a stationary Gaussian sequence this holds almost surely only when the sequence is ergodic, i.e., when its spectral measure has no atoms. The manuscript invokes the ergodic theorem directly from stationarity of X without stating or verifying this (or an equivalent covariance-decay) hypothesis on X, on ψ, or on the parameters a, b. This assumption is load-bearing for the claimed equivalence, which therefore may hold only on a proper subclass of the Gaussian stationary processes under consideration.
minor comments (2)
  1. The abstract states that the work 'expands in this way what we have done recently for Gabor systems'; an explicit citation to that prior paper would improve traceability.
  2. The term 'affine AP-Frame' is used from the outset; a brief reminder of its precise definition (distinct from a standard frame) in the introduction would aid readers.

Simulated Author's Rebuttal

1 responses · 0 unresolved

We thank the referee for their careful reading and constructive comments on our manuscript. We address the major comment below.

read point-by-point responses
  1. Referee: The derivation of the N&S condition (invoked via the ergodic theorem in the abstract and the main argument) applies the ergodic theorem to the sequences {<X, ψ_{j,k}> : k ∈ K} for each fixed j to replace the k-average of |⟨X, ψ_{j,k}⟩|^2 by E[|⟨X, ψ_{j,0}⟩|^2]. For a stationary Gaussian sequence this holds almost surely only when the sequence is ergodic, i.e., when its spectral measure has no atoms. The manuscript invokes the ergodic theorem directly from stationarity of X without stating or verifying this (or an equivalent covariance-decay) hypothesis on X, on ψ, or on the parameters a, b. This assumption is load-bearing for the claimed equivalence, which therefore may hold only on a proper subclass of the Gaussian stationary processes under consideration.

    Authors: We thank the referee for highlighting this important technical point. The referee is correct: while stationarity of the Gaussian process X ensures that the sequence {<X, ψ_{j,k}> : k ∈ K} is stationary for each fixed j, the pointwise ergodic theorem (Birkhoff) yields almost-sure convergence of the k-average to the expectation only when the underlying shift is ergodic. For Gaussian stationary sequences this is equivalent to the spectral measure having no atoms. Our manuscript invoked the ergodic theorem on the basis of stationarity alone, without explicitly recording this additional hypothesis. To correct the gap and ensure the claimed necessary-and-sufficient condition holds almost surely, we will revise the manuscript by adding the standing assumption that X is ergodic (equivalently, that its spectral measure is atomless). We will also briefly discuss how this condition interacts with the parameters a, b and the generator ψ. The revision will be made in the statement of the main theorem, in the abstract, and in the relevant proof sections. revision: yes

Circularity Check

0 steps flagged

No significant circularity detected

full rationale

The paper establishes a necessary and sufficient condition for affine AP-frames by invoking the ergodic theorem on stationary sequences derived from Gaussian processes, which constitutes an external mathematical result rather than a self-definitional or fitted-input reduction. The mention of prior work on Gabor systems is an extension note and does not serve as the sole justification for the affine case; the derivation remains self-contained against the stated assumptions and standard theorems without reducing the central claim to its own inputs by construction.

Axiom & Free-Parameter Ledger

0 free parameters · 1 axioms · 0 invented entities

The central claim rests on the ergodic theorem and the modeling choice that the process is Gaussian and stationary; no free parameters or new entities are introduced.

axioms (1)
  • domain assumption The ergodic theorem applies to the stationary sequences {<X, ψ_{j,k}> : k ∈ K} for each j.
    Invoked to obtain the necessary and sufficient condition for the affine system to be an AP-frame.

pith-pipeline@v0.9.0 · 5696 in / 1181 out tokens · 53617 ms · 2026-05-21T23:25:50.275083+00:00 · methodology

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Reference graph

Works this paper leans on

30 extracted references · 30 canonical work pages

  1. [1]

    Benedetto J.,Spectral Synthesis, Springer, 1975

  2. [2]

    Boggiatto P., Férnandez C., Galbis A.,Gabor systems and almost periodic func- tions, Appl. Comput. Harmon. Anal. 42, pp. 65-87, 2017

  3. [3]

    3 (4), pp

    Cambanis S., Masry E.,On the representation of weakly continuous stochastic processes, Information Sciences, Vol. 3 (4), pp. 277-290, Oct. 1971

  4. [4]

    D., Medina J

    Centeno H. D., Medina J. M.,AP-frames and Stationary Random Processes, Appl. Comput. Harmon. Anal. 61, pp. 1-24, 2022

  5. [5]

    Edition, Birkhäuser, 2016

    Christensen O., An Introduction to Frames and Riesz Bases, 2nd. Edition, Birkhäuser, 2016

  6. [6]

    P.,Gaussian Processes, Function Theory, and the Inverse Spectral Problem, Dover, 2008

    Dym H., McKean H. P.,Gaussian Processes, Function Theory, and the Inverse Spectral Problem, Dover, 2008

  7. [7]

    On the windowed Fourier transform and wavelet transform of almost periodic functions

    Galindo F.,Some Remarks on: “On the windowed Fourier transform and wavelet transform of almost periodic functions”, Appl. Comput. Harmonic Anal. 16 (3), pp. 174-181, 2004

  8. [8]

    I., Skorokhod A

    Gikhman I. I., Skorokhod A. V.,The Theory of Stochastic Processes, Vol. I., Springer, Berlin, 2004

  9. [9]

    Optimal control of linear systems with almost periodic inputs

    Jacob B., Larsen M., Zwart H.,Corrections and extensions of “Optimal control of linear systems with almost periodic inputs” by G. Da Prato and A. Ichikawa. SIAM J. Control Optimiz. 36, pp. 1473-1480, 1998

  10. [10]

    P.,Some Random Series of Functions, 2nd

    Kahane J. P.,Some Random Series of Functions, 2nd. Ed., Cambridge, 1993

  11. [11]

    J.,Sampling theorems for non stationary processes, Trans

    Lee A. J.,Sampling theorems for non stationary processes, Trans. of the A.M.S. V. 242 pp. 225-241. 1978

  12. [12]

    P.,A Sampling Theorem For Stationary (wide sense) stochastic pro- cesses, Trans

    Lloyd S. P.,A Sampling Theorem For Stationary (wide sense) stochastic pro- cesses, Trans. of the A.M.S. 92(1), pp. 1-12, 1959

  13. [13]

    Kantorovich L. V. K., Akilov G. P.,Functional Analysis, 2nd. Edition, Perga- mon Press, 1982

  14. [14]

    Katznelson Y.,An Introduction to Harmonic Analysis, Dover, 1976

  15. [15]

    H., Ron A.,Time Frequency Representations of Almost Periodic Func- tions, Constr

    Kim Y. H., Ron A.,Time Frequency Representations of Almost Periodic Func- tions, Constr. Approx. 29, pp. 303-323, 2009

  16. [16]

    H., Representations of Almost-Periodic Functions Using Generalized Shift-Invariant Systems inRd, J

    Kim Y. H., Representations of Almost-Periodic Functions Using Generalized Shift-Invariant Systems inRd, J. Fourier Anal Appl. 19, pp. 857-876, 2013

  17. [17]

    A., Vainikko G

    Krasnosel’skii M. A., Vainikko G. M., Zabreiko P. P., Rutitskii Va. B., Stetsenko V. Va.,Approximate Solution of Operator Equations, Wolters-Noordhoff, 1972. 25

  18. [18]

    , Woyczyński W.A.,Random Series and Stochastic Integrals: Single and Multiple, Birkhäuser, 1992

    Kwapień S. , Woyczyński W.A.,Random Series and Stochastic Integrals: Single and Multiple, Birkhäuser, 1992

  19. [19]

    Malliavin P.,Integration and Probability, Springer New York, 1995

  20. [20]

    Masry E., Cambanis S.,The Representation of Stochastic Processes Without Loss of Information, SIAM J. Appl. Math., Vol. 25, No. 4, pp. 628-633, 1973

  21. [21]

    M.,Laws of Large Numbers, Spectral Translates and Sampling over LCA Groups, J

    Medina J. M.,Laws of Large Numbers, Spectral Translates and Sampling over LCA Groups, J. Fourier Anal. Appl. 30 (67), pp. 1-32. 2024

  22. [22]

    Meyer Y.,Wavelets and Operators, Cambridge Studies in Advanced Mathemat- ics, 37, 1992

  23. [23]

    R.,On the Windowed Fourier Transform and Wavelet Transform of Almost Periodic Functions, Appl

    Partington J. R.,On the Windowed Fourier Transform and Wavelet Transform of Almost Periodic Functions, Appl. Comput. Anal. Appl. 10, pp. 45-60, 2001

  24. [24]

    Pinsky M., Introduction to Fourier Analysis and Wavelets (Graduate Studies in Mathematics), American Mathematical Society, 2009

  25. [25]

    Pourahmadi M.,Foundations of Time Series Analysis and Prediction Theory, Wiley series in Statistics, 2001

  26. [26]

    Ron A., Shen Z.,Affine systems inL2(Rd): The analysis of the analysis oper- ator, J. Funt. Anal. 148, pp. 408-447, 1997

  27. [27]

    Rosenblatt M.,Stationary Sequences and Random Fields, Birkhäuser, 1985

  28. [28]

    Rozanov Y.,Stationary Random Processes, Holden-Day, 1967

  29. [29]

    G.,Hypersingular Integrals and Their Applications, CRC Press, 2002

    Samko S. G.,Hypersingular Integrals and Their Applications, CRC Press, 2002

  30. [30]

    A. P. Calderón

    Stein E. M., Singular Integrals and Differentiability Properties of Functions, Princeton University Press, 1987. H.D. Centeno: UniversidaddeBuenosAires, FacultaddeIngeniería, DepartamentodeMatemática// Universidad de Buenos Aires, Facultad de Ciencias Exactas y Naturales, Departa- mento de Matemática. Correspondence: hcenteno@fi.uba.ar J.M. Medina: (https...