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arxiv: 2605.22666 · v1 · pith:35SMIH5Wnew · submitted 2026-05-21 · 🧮 math.CO · cs.LG· math.PR

Holographic functions and neural networks

Pith reviewed 2026-05-22 04:04 UTC · model grok-4.3

classification 🧮 math.CO cs.LGmath.PR
keywords fuzzy Boolean functionsholographic propertyneural network approximationpolynomial approximationhypergraph regularitybounded complexitysampling property
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The pith

Bounded complexity for fuzzy Boolean functions is equivalent across holographic sampling, polynomial structure in linear forms, and neural network approximation.

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

The paper establishes that three different ways of saying a fuzzy Boolean function has bounded complexity are equivalent, up to changes in the specific numerical bounds. The first requires that the function value at any point can be recovered with high probability by looking at only a bounded number of randomly sampled coordinates. The second requires the function to be close to a low-degree polynomial that depends on only a bounded number of linear combinations of the input coordinates. The third requires the function to be close to the output of a neural network that has a bounded number of hidden neurons, bounded-Lipschitz activation functions, and bounded incoming weights. A reader interested in the interplay between sampling, algebra, and computation would care because the result lets one move results and techniques freely between these three viewpoints.

Core claim

For a fuzzy Boolean function f mapping the hypercube to the unit interval, the holographic property, the property of being uniformly close to a bounded-degree polynomial in boundedly many bounded linear coordinate forms, and the property of being uniformly close to the output of a neural network with bounded non-input neurons, bounded Lipschitz activations, and bounded incoming weights are equivalent up to quantitative changes of the parameters. The direction from the holographic property to the polynomial structure is proved using a variant of a weak hypergraph regularity lemma.

What carries the argument

The equivalence (up to parameter changes) between the holographic sampling property, approximation by bounded-degree polynomials in linear coordinate forms, and approximation by bounded neural networks with Lipschitz activations.

If this is right

  • A function recoverable from few random coordinates is also approximable by a small neural network with Lipschitz activations.
  • Any function approximable by such a neural network is recoverable from few random coordinates.
  • The polynomial representation in linear forms acts as a structural bridge that transfers bounds between the sampling and computational views.
  • Quantitative changes in the bounds allow direct comparison of complexity measures across the three definitions.

Where Pith is reading between the lines

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

  • The same equivalence might be used to derive new sampling-based learning guarantees for functions that admit small neural representations.
  • Similar equivalences could be investigated for functions on larger alphabets or for higher-order hypergraph versions of the regularity step.
  • The polynomial view may connect to existing Fourier-analytic or influence-based notions of complexity without additional assumptions.

Load-bearing premise

The step from the holographic property to polynomial structure holds only if a suitable variant of the weak hypergraph regularity lemma supplies the needed quantitative bounds.

What would settle it

A concrete fuzzy Boolean function that satisfies the holographic sampling property with small parameters yet stays far from every bounded-degree polynomial in any bounded collection of linear forms would show the claimed equivalence fails.

read the original abstract

A fuzzy Boolean function is a map $f:\cube^n\to [0,1]$, where $n\in\mathbb N$. We introduce and compare three ways of saying that such a function has bounded complexity. The first is a sampling property: the value $f(x)$ can be recovered, up to small error and with high probability, from the values of a bounded number of randomly chosen coordinates of $x$. We call this the holographic property. The second is a structural property: $f$ is uniformly close to a bounded-degree polynomial in boundedly many bounded linear coordinate forms. The third is computational: $f$ is uniformly close to the output of a neural network with a bounded number of non-input neurons, bounded Lipschitz activation functions and bounded incoming weights. We prove that these three properties are equivalent up to quantitative changes of the parameters. The implication from holography to polynomial structure uses a variant of a weak version of hypergraph regularity.

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 paper defines three notions of bounded complexity for fuzzy Boolean functions f:{0,1}^n → [0,1]: the holographic property (recovering f(x) up to small error from a bounded number of random coordinates with high probability), uniform approximation by a bounded-degree polynomial in a bounded number of bounded linear forms, and uniform approximation by the output of a neural network with bounded non-input neurons, bounded Lipschitz activations, and bounded incoming weights. It proves these three properties are equivalent up to quantitative changes in the parameters, with the direction from holography to polynomial structure relying on a variant of the weak hypergraph regularity lemma.

Significance. If the quantitative equivalences hold, the result would connect sampling-based, algebraic, and computational notions of simplicity for functions on the hypercube, with potential relevance to Boolean analysis, property testing, and neural network approximation theory. The manuscript supplies a proof rather than an empirical claim, which strengthens the contribution; however, the strength of the central equivalence rests on the correctness and parameter control of the invoked regularity variant.

major comments (1)
  1. [Section 3 (proof of the holography-to-polynomial implication)] The proof that the holographic property implies the polynomial-structure property (the direction stated to use a variant of weak hypergraph regularity) requires an explicit statement of the variant lemma, including the precise dependence of the degree and number-of-forms bounds on the holographic parameters ε, k, and δ. Without this, it is impossible to verify that the quantitative equivalence claimed in the main theorem holds without uncontrolled blow-up in the parameters.
minor comments (2)
  1. [Section 2] Notation for the linear forms and the precise definition of 'bounded linear coordinate forms' should be introduced earlier and used consistently across the three properties.
  2. [Abstract] The abstract mentions 'quantitative changes of the parameters' but does not indicate whether the changes are polynomial or exponential; a brief remark on the nature of the quantitative dependence would help readers assess applicability.

Simulated Author's Rebuttal

1 responses · 0 unresolved

We thank the referee for their careful reading and for identifying the need to make the quantitative aspects of the holography-to-polynomial implication fully explicit. We address the major comment below and will revise the manuscript to incorporate the requested clarification.

read point-by-point responses
  1. Referee: [Section 3 (proof of the holography-to-polynomial implication)] The proof that the holographic property implies the polynomial-structure property (the direction stated to use a variant of weak hypergraph regularity) requires an explicit statement of the variant lemma, including the precise dependence of the degree and number-of-forms bounds on the holographic parameters ε, k, and δ. Without this, it is impossible to verify that the quantitative equivalence claimed in the main theorem holds without uncontrolled blow-up in the parameters.

    Authors: We agree that an explicit statement of the variant lemma is required to allow verification of the claimed quantitative equivalence. In the revised manuscript we will insert, at the beginning of Section 3, a self-contained statement of the variant of the weak hypergraph regularity lemma that is invoked. The statement will record the precise functional dependence of the resulting degree bound and the number of linear forms on the holographic parameters ε, k, and δ. The subsequent proof will be updated to cite this lemma directly, confirming that the parameter changes remain controlled and that no uncontrolled blow-up occurs. revision: yes

Circularity Check

0 steps flagged

No circularity: equivalence proof between independently defined complexity measures

full rationale

The paper defines three distinct notions of bounded complexity for fuzzy Boolean functions on the cube: (1) the holographic sampling property (recovering f(x) from few random coordinates), (2) uniform approximation by a bounded-degree polynomial in boundedly many bounded linear forms, and (3) approximation by a neural network with bounded neurons, Lipschitz activations, and weights. It then proves logical equivalence (up to quantitative parameter changes) among these independently stated properties. The one direction that invokes a variant of weak hypergraph regularity is an external analytic tool applied to the sampling assumption; it does not reduce any claimed result to a fitted parameter, self-definition, or prior self-citation that itself depends on the target equivalence. No equation or claim in the derivation is forced by construction from its own inputs, and the central theorem remains a non-tautological implication between separate definitions.

Axiom & Free-Parameter Ledger

0 free parameters · 1 axioms · 0 invented entities

The central proof direction relies on an external combinatorial tool whose details are not supplied in the abstract.

axioms (1)
  • domain assumption A variant of the weak hypergraph regularity lemma holds and can be applied to the sampling property.
    Invoked explicitly for the holography-to-polynomial implication.

pith-pipeline@v0.9.0 · 5685 in / 1060 out tokens · 31295 ms · 2026-05-22T04:04:21.170254+00:00 · methodology

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Reference graph

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9 extracted references · 9 canonical work pages

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