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The Persistence Functional: A Candidate Formal Foundation for the Attractor Framework; Robert Galida (July 2026) [F]
Abstract
The attractor framework provides a domain-general vocabulary for describing persistence and change across physical, biological, cognitive, and social systems. However, its core variables—κ (corrective permeability), B (basin depth), and R (reality alignment)—have been defined inconsistently across application papers, and their formal relationships have remained implicit. This paper proposes a candidate mathematical formalization for the framework.
The central mathematical innovation of this paper is treating persistence as a functional defined over trajectories—DT(x)=∫0Td(ϕτ(x),A)dτ—rather than as a scalar property of states. We prove several mathematical properties of DT, including non-negativity, monotonicity in T, additivity, Lipschitz continuity with respect to initial conditions, and a bound relating D∞ to the recovery rate κ: D∞(x)≤κCd(x,A). We establish connections to dynamic programming and ergodic theory via occupation measures. We introduce a complementary topological persistence functional Ptopo(t), which measures the lifetime of topological features in the trajectory’s state-space geometry, and the topological evolution rate E(t).
We unify the framework’s variable set: κ is the recovery rate (operationalized as 1/τ); γ is a proposed drift rate for persistent chaos, grounded in the literature on high-dimensional neural networks; B is the energy barrier (basin depth); B~ is a complementary persistence depth; R is the expected log predictive likelihood. We propose testable predictions linking E(t) to κ and γ, and provide a falsifiable experimental protocol using neural network training and persistent homology.
The paper offers a candidate formal foundation, with explicit definitions, mathematical properties, and empirical grounding. All unverified sources are clearly labeled as such.
Keywords: attractor framework, persistence functional, cumulative deviation, topological persistence, corrective permeability, basin depth, reality alignment, persistent homology
1. Introduction
The attractor framework has been applied across physics (hydrogen decay, Jeans instability), biology (ECM mechanics, HRV), cognition (belief updating, performance attractors), and social systems (religious attractors, civilizational dynamics). A common vocabulary has emerged: κ (corrective permeability), B (basin depth), and R (reality alignment). However, these variables have been defined inconsistently across papers, and their formal relationships have remained implicit. This paper proposes a candidate mathematical formalization that addresses these inconsistencies.
The central mathematical innovation of this paper is treating persistence as a functional defined over trajectories rather than as a scalar property of states. DT(x)=∫0Td(ϕτ(x),A)dτ can be understood as a type of action functional (carefully qualified). Like the classical action ∫L(q,q˙)dt, it assigns a scalar to an entire trajectory, is additive under concatenation, and suggests variational and optimal-control interpretations. However, it is not the mechanical action; it is a cumulative deviation functional that measures time away from equilibrium. This moves the framework into the domain of trajectory-level analysis, aligning it with modern dynamical systems and geometric control theory.
We introduce the cumulative deviation functional DT(x) as this central object, and we establish its mathematical properties, including its relationship to the recovery rate κ. We introduce a complementary topological persistence functional Ptopo(t) and the topological evolution rate E(t). We unify the framework’s variable set with operational definitions and propose testable predictions with falsification criteria.
1.1 Scope and Status
This paper is a candidate formalization—it provides definitions, mathematical properties, and empirical hypotheses. It is not a completed empirical validation; that is the subject of future work. All claims are labeled as definitions (part of the formal structure), propositions/theorems (proved), hypotheses (testable predictions), or heuristics (suggestive connections not yet formalized). This distinction is maintained throughout.
2. Formal Definitions
Let X be a metric space with distance function ∥⋅∥. Let ϕτ(x) be the flow of a dynamical system starting from state x∈X at time τ=0. Let A⊆X be an attractor set (a compact, invariant set to which trajectories converge). Assume the flow is continuous and measurable so that d(ϕτ(x),A) is measurable. The flow ϕτ satisfies the semigroup property ϕt+s=ϕt∘ϕs for all t,s≥0, with ϕ0=id. We assume d(ϕτ(x),A)∈L1([0,T]) for all finite T, so the integral defining DT is well-defined.
Define the distance from a point to the attractor:d(x,A)=a∈Ainf∥x−a∥
The definition applies to any metric space; for infinite-dimensional spaces, the usual measurability and integrability conditions are assumed.
2.1 Cumulative Deviation Functional
Definition 1 (Cumulative Deviation Functional): For a finite horizon T>0, the cumulative deviation functional is:DT(x)=∫0Td(ϕτ(x),A)dτ
Interpretation: DT(x) is the total accumulated deviation from the attractor over the interval [0,T]. It measures integrated error, residence-time-weighted distance, or accumulated regret. This is not a path length; it measures time spent away from equilibrium, whereas path length ∫∥ϕ˙τ(x)∥dτ measures distance traveled.
Domain generality: This definition applies to any system with a well-defined state space, a flow, and an attractor set. It does not require linearity, differentiability, or specific functional forms.
Empirical note: DT is the fundamental object for empirical work; D∞ is primarily an analytical limit used for theoretical bounds.
Note: DT is not a Lyapunov function. A Lyapunov function is a scalar function of the current state; DT is a functional of the entire trajectory. It does not decrease monotonically along trajectories, and it does not provide pointwise stability information. Its purpose is to measure accumulated history, not instantaneous energy.
Occupation measure connection: Define the occupation measure of the trajectory up to time T as:μT(B)=∫0T1B(ϕτ(x))dτ
for measurable B⊆X. Then:DT(x)=∫Xd(y,A)dμT(y)
Thus DT is the expected distance to the attractor under the occupation measure. This connects the functional directly to ergodic theory and occupation measure analysis. For foundational treatments of occupation measures and invariant measures, see Ruelle (1989) and Bowen (1975).
2.1.1 Why the L¹ Trajectory Functional?
The choice of the L¹ integral over alternatives is motivated by the following properties:
- Linearity: Each moment contributes equally; accumulation is additive over time.
- Physical units: For systems with a natural distance metric, DT has units of distance × time, which is interpretable as accumulated deviation.
- Simplicity: It is the simplest nontrivial trajectory functional that is not a path length.
- Analogy: It mirrors cumulative regret and occupation measures in control theory and ergodic theory.
- Avoidance of overweighting: Unlike d2, it does not disproportionately weight large deviations; unlike max, it is sensitive to the full trajectory.
This is one natural choice; other functionals (e.g., dp, exponentially weighted integrals) could be substituted without changing the framework’s structure.
2.2 Topological Persistence Functional
Let Xτ={ϕs(x):s∈[0,τ]} be the trajectory segment up to time τ. Let PHk(Xτ) be the k-dimensional persistent homology of the point cloud Xτ at scale ϵ. Each feature (component, loop, void) has a birth scale b and a death scale d, with persistence d−b. For foundational treatments of persistent homology, see Edelsbrunner & Harer (2010) or Carlsson (2009).
Definition 2 (Topological Persistence Functional): We define the following complementary topological persistence functional. For t≥0:Ptopo(t)=∫0tk≥0∑(b,d)∈PHk(Xτ)∑(d−b)dτ
The map τ↦PHk(Xτ) is piecewise constant on intervals where the trajectory does not cross a homology-critical threshold. Assuming the trajectory crosses such thresholds at discrete times, the integral is well-defined as a sum of piecewise continuous segments. This is the standard assumption in time-varying persistent homology (see Carlsson & Zomorodian, 2009).
Interpretation: Ptopo(t) is the total lifetime of all topological features in the trajectory’s state-space geometry up to time t. This is a separate mathematical object from DT; the relationship between them is an empirical hypothesis. This is one possible choice among several topological summaries (e.g., persistence landscapes, persistence images) and is selected because it mirrors the cumulative interpretation of DT, rather than because it is uniquely canonical. Other stable summaries—such as persistence landscapes, persistence images, or Betti curves—could be substituted for the present functional without changing the framework’s structure.
Measurement: In practice, Ptopo(t) is computed by sampling the trajectory at discrete times, computing persistent homology on latent activation manifolds, and summing the persistence of all features using standard libraries (e.g., GUDHI, Ripser). Turner & Barak (2023) demonstrated that trained RNNs develop attractors sequentially during training; the topological structure of these attractors can be analyzed using persistent homology.
Falsification: If persistent homology features do not correlate with any behavioral or dynamical measure in a given system, Ptopo is not a useful construct for that domain.
2.3 Topological Evolution Rate
Definition 3 (Topological Evolution Rate): For a learning system with time-dependent topological persistence, the topological evolution rate is defined as:E(t)=dtdPtopo(t)
where differentiable, and experimentally as E(t)≈ΔtΔPtopo over finite intervals.
Interpretation: E(t) measures how quickly the system’s topological complexity changes during learning. Negative E(t) indicates topological simplification (compression); positive E(t) indicates increasing complexity (expansion); E(t)≈0 indicates stagnation. Learning is one possible cause of topological change; random drift, noise, or chaotic wandering can also change topology.
Empirical anchor: Karuppiah, Nazreen Banu et al. (2026) examine the evolution of topological signatures during training. Turner & Barak (2023) show that RNNs develop attractors sequentially, which may correspond to phases of topological simplification. We hypothesize that successful learning corresponds to negative average values of E(t) over defined phases, but this is a testable claim, not a definition.
3. Mathematical Properties of the Cumulative Deviation Functional
This section establishes the mathematical behavior of DT, providing the foundation for its use in the framework.
3.1 Non-negativity
Proposition 1 (Non-negativity): For any x∈X and any T≥0:DT(x)≥0
with equality iff ϕτ(x)∈A for almost all τ∈[0,T].
Proof: The integrand is a distance function d(ϕτ(x),A), which is non-negative by definition. The integral of a non-negative function is non-negative. Equality holds only if the integrand is zero almost everywhere.
3.2 Monotonicity in T
Proposition 2 (Monotonicity): For fixed x, DT(x) is monotonically non-decreasing in T:DT2(x)≥DT1(x)for T2≥T1
Proof: For T2≥T1:DT2(x)=∫0T1d(ϕτ(x),A)dτ+∫T1T2d(ϕτ(x),A)dτ
The second integral is non-negative by Proposition 1. Therefore DT2(x)≥DT1(x).
Corollary: If the trajectory converges exactly to the attractor at time τ0<T, then:DT(x)=Dτ0(x)for all T≥τ0
3.3 Additivity
Proposition 3 (Additivity): For any T,S≥0:DT+S(x)=DT(x)+DS(ϕT(x))
Proof:DT+S(x)=∫0T+Sd(ϕτ(x),A)dτ=∫0Td(ϕτ(x),A)dτ+∫TT+Sd(ϕτ(x),A)dτ=DT(x)+∫0Sd(ϕτ+T(x),A)dτ=DT(x)+∫0Sd(ϕτ(ϕT(x)),A)dτ(by the semigroup property)=DT(x)+DS(ϕT(x))
This connects DT naturally to Bellman equations, dynamic programming, and occupation measures.
3.4 Heuristic Connection: Dynamic Programming
The additivity property DT+S(x)=DT(x)+DS(ϕT(x)) suggests a natural connection to dynamic programming. For a controlled system X˙=f(X,u) with control u∈U, the value function V(x)=infuD∞(x) would formally satisfy the Hamilton-Jacobi-Bellman equation:0=uinf{d(x,A)+∇V(x)⋅f(x,u)}
This is a standard result for additive cost functionals. A full derivation for the specific functional DT is left for future work. This section is a heuristic connection, not a formal result.
3.5 Lipschitz Continuity with Respect to Initial Conditions
Proposition 4 (Lipschitz Continuity of DTDT): Suppose the flow ϕτ is Lipschitz continuous in x with constant L, i.e., ∥ϕτ(x)−ϕτ(y)∥≤eLτ∥x−y∥. Then for any x,y in the basin of A:∣DT(x)−DT(y)∣≤∫0TeLτdτ∥x−y∥=LeLT−1∥x−y∥
Proof: First, note that the distance function d(⋅,A) is 1-Lipschitz: for any x,y∈X,∣d(x,A)−d(y,A)∣≤∥x−y∥
This follows from the triangle inequality and the definition of the infimum. Then, using the Lipschitz property of the flow:∣DT(x)−DT(y)∣≤∫0T∣d(ϕτ(x),A)−d(ϕτ(y),A)∣dτ≤∫0T∥ϕτ(x)−ϕτ(y)∥dτ≤∫0TeLτ∥x−y∥dτ=LeLT−1∥x−y∥
Interpretation: This proposition guarantees that empirical estimates of DT are robust under small perturbations of initial conditions and establishes that DT defines a continuous functional on the basin of attraction. This is essential for numerical estimation and experimental measurement.
3.6 Instantaneous Growth Rate
Remark 1 (Instantaneous Growth Rate): If the integrand d(ϕτ(x),A) is continuous in τ, then:dTdDT(x)=d(ϕT(x),A)
This follows directly from the Fundamental Theorem of Calculus.
3.7 Ergodic Limit
Proposition 5 (Ergodic Limit): Suppose the normalized occupation measure νT=μT/T converges weakly to an invariant probability measure μ as T→∞. Then:T→∞limT1DT(x)=∫Xd(y,A)dμ(y)
Proof: From the occupation measure representation DT(x)=∫d(y,A)dμT(y)=T∫d(y,A)dνT(y), weak convergence of νT to μ and boundedness/continuity of d(⋅,A) gives the result.
This is the pointwise ergodic theorem applied to the observable d(⋅,A). For the ergodic theory of dynamical systems, see Bowen (1975) and Ruelle (1989).
3.8 Bound under Exponential Stability
Theorem 2 (Bound under Exponential Stability): Suppose the flow ϕτ(x) converges to the attractor A with exponential rate κ>0:d(ϕτ(x),A)≤Ce−κτd(x,A)
for some constant C<∞, for all τ≥0. Then:D∞(x)=∫0∞d(ϕτ(x),A)dτ≤κCd(x,A)
Proof:D∞(x)=∫0∞d(ϕτ(x),A)dτ≤∫0∞Ce−κτd(x,A)dτ=Cd(x,A)∫0∞e−κτdτ=κCd(x,A)
Corollary: For linearly stable systems with recovery rate κ, D∞(x)≤κ1d(x,A) (when C=1).
Important: Exponential stability implies D∞<∞. The converse is not claimed; polynomial convergence can also yield finite D∞.
3.9 Recovery Rate Bound
Corollary 1 (Recovery Rate Bound): For a system satisfying the exponential stability hypothesis with constant C, the recovery rate κ satisfies:κ≤D∞(x)Cd(x,A)
For systems with C=1 (e.g., normal/symmetric linearizations with no transient overshoot), this reduces to:κ≤D∞(x)d(x,A)
Proof: From Theorem 2, we have D∞(x)≤κCd(x,A). Rearranging gives κ≤D∞(x)Cd(x,A). When C=1, this reduces to κ≤D∞(x)d(x,A).
Interpretation: Small cumulative deviation implies rapid recovery (large κ). Large cumulative deviation implies slow recovery (small κ). This formalizes the intuitive link between DT and κ. The C factor accounts for possible transient overshoot in non-normal systems.
3.10 Finite Horizon Approximation
Proposition 6 (Finite Horizon): For any ϵ>0, there exists a finite Tϵ such that for all T>Tϵ:∣DT(x)−D∞(x)∣≤ϵ
Proof: This follows directly from Theorem 2 under the exponential stability hypothesis. Since the integrand decays exponentially, the tail integral ∫T∞d(ϕτ(x),A)dτ can be made arbitrarily small by choosing T sufficiently large.
3.11 Summary of Properties
| Property | Statement | ||
|---|---|---|---|
| Non-negativity | DT(x)≥0 | ||
| Monotonicity | DT2(x)≥DT1(x) for T2≥T1 | ||
| Additivity | DT+S(x)=DT(x)+DS(ϕT(x)) | ||
| Lipschitz continuity | ( | D_T(x) – D_T(y) | \leq \frac{e^{LT} – 1}{L} |x – y| ) |
| Instantaneous growth | dTdDT(x)=d(ϕT(x),A) | ||
| Ergodic limit | limT→∞T1DT(x)=∫d(y,A)dμ(y) | ||
| Exponential stability implies finite D∞D∞ | D∞(x)≤κCd(x,A) | ||
| Recovery bound (general) | κ≤D∞(x)Cd(x,A) | ||
| Recovery bound (C=1) | κ≤D∞(x)d(x,A) | ||
| Finite horizon approximation | DT(x)→D∞(x) as T→∞ |
4. The Unified Variable Set
The following variables are defined operationally. Where a variable is a proposal, that is stated explicitly.
4.1 Corrective Permeability (κ)
Definition 4 (Corrective Permeability): κ is the recovery rate of the system to its attractor after a small perturbation. Operationally estimated as κ=1/τ under approximately exponential relaxation, where τ is the characteristic recovery time constant. This coincides with the exponential convergence exponent in the linearized regime and is consistent with the original definition in the attractor framework.
Relationship to DTDT: From Corollary 1, for a system with initial deviation d(x,A), κ≤D∞(x)Cd(x,A).
Note on κ’s status: In this paper, κ is treated as a primitive empirical regime parameter. A stronger theory would derive κ from DT and system geometry; this remains an open direction for future work.
4.2 Drift Rate (γ) — A Proposed Distinction
Definition 5 (Drift Rate): We propose the following operational distinction between dynamical regimes, based on the dominant Lyapunov exponent λmax:
| Regime | λmax | κ | γ | Behavior |
|---|---|---|---|---|
| Stable attractor | <−0.01 | >0 | 0 | Converges to fixed point |
| Persistent chaos | ≈0 | ≈0 | >0 | Wanders without convergence |
| Full chaos | >0 | undefined | >0 | Diverges |
Thresholds: λmax<−0.01, ∣λmax∣≤0.01, and λmax>0.01 (pre-registered, measured in units of 1/epoch). These numerical thresholds are illustrative defaults rather than theoretically privileged constants.
Grounding: This distinction is inspired by the literature on chaos in high-dimensional neural networks (Engelken, Wolf & Abbott, 2023; Sompolinsky, Crisanti & Sommers, 1988; Clark, Abbott & Litwin-Kumar, 2023; Fournier & Urbani, 2023). For the treatment of stochastic and random perturbations, see Arnold (1998).
Falsification: If κ and γ are perfectly correlated (i.e., systems with small κ always have small γ), the distinction is not useful.
4.3 Basin Depth (B) and Persistence Depth (B~)
Definition 6a (Basin Depth — Energy Barrier): B is the energy barrier required to escape the basin, measured as the potential difference between the attractor and the saddle point on the basin boundary:B=V(saddle)−V(attractor)
This preserves the original definition from earlier papers.
Definition 6b (Persistence Depth): As a complementary measure, we define:B~=x∈∂BminDT(x)
This is the cumulative deviation required to reach the basin boundary. The relationship between B and B~ remains an open mathematical question.
Operational alternative: In practice, the basin boundary may not be well-defined. Estimate B via the Arrhenius relationship Pescape∝e−B/T, where T is the noise level.
4.4 Reality Alignment (R)
Definition 7 (Reality Alignment): R is the expected log predictive likelihood:R=E[logp(y∣X)]
where p(y∣X) is the system’s predictive distribution over outcomes y given state X. Higher R indicates better predictive accuracy. This is a standard measure of predictive performance; the label “reality alignment” is a philosophical interpretation.
Direction-dependence: The framework interprets R as potentially direction-dependent: RA→B=RB→A. This captures the asymmetry found in Berglund et al. (2024), where models trained on “A is B” fail to generalize to “B is A.” This interpretation is a framework-level claim.
Note on integration: Among the core variables, R is the least integrated with the trajectory-based formalism. Unlike κ, B, and B~, which are directly derived from or related to DT, R is imported from Bayesian statistics. A more complete theoretical derivation of R from the same dynamical principles—perhaps as an information-theoretic functional of the occupation measure—remains an open direction for future work.
5. Theoretical Framework
5.1 Relationship Between DT, Ptopo, and E(t)
| Functional | What It Measures | Regime |
|---|---|---|
| DT(x) | Cumulative deviation from attractor | All systems |
| Ptopo(t) | Topological feature lifetime | Systems with topological structure |
| E(t) | Rate of topological change | Learning systems |
Hypothesis: In learning systems, DT and Ptopo are positively correlated early in learning and negatively correlated late in learning. Turner & Barak (2023) demonstrate that RNNs develop attractors sequentially during training, which may correspond to phases of topological simplification. This is a testable prediction.
5.2 Relationship Between κ, γ, and E(t)
Hypothesis: In a learning system, the topological evolution rate E(t) is monotonically related to κ only if the system is not in persistent chaos: ∂E/∂κ>0 (with E and κ measured on appropriate scales) in convergent regimes. In persistent chaos, E(t) is monotonically related to γ: ∂E/∂γ>0. Correlation analysis provides a statistical test of these monotonicity relationships.
5.3 Adaptive Landscape (Heuristic Note)
The adaptive landscape V(X,t) evolves as:V˙=g(X,V)−λV+ξ(t)
For gradient systems with X˙=−∇XV(X), and assuming the dynamics remain within the basin where higher-order nonlinearities are negligible, the cumulative deviation functional can be approximated as:DT(x)≈∫0T∥∇XV(ϕτ(x),τ)∥dτ
This is a local heuristic. A full derivation and integration into the core formalism is left for future work.
6. Testable Predictions
6.1 Core Prediction
Prediction: In a learning system, E(t) is monotonically related to κ in convergent regimes: ∂E/∂κ>0 (with E and κ measured on appropriate scales), and ∂E/∂γ>0 in persistent chaos. Correlation analysis provides a statistical test of this monotonicity:Corr(E(t),κ)>0⟺λmax<0Corr(E(t),γ)>0⟺λmax≈0
Falsification: If E(t) correlates with κ in all regimes, or with γ in all regimes, the prediction is falsified.
6.2 Secondary Prediction
Prediction: In systems with high R, DT and Ptopo are negatively correlated late in learning; in systems with low R, they are uncorrelated or positively correlated.
Falsification: If DT and Ptopo are negatively correlated in both high-R and low-R systems, the prediction is falsified.
6.3 Boundary Condition and Global Falsifier
Conjecture: We conjecture that the framework applies to any system satisfying:
- A. Well-defined state space.
- B. Subject to perturbations.
- C. Exhibits at least one identifiable attractor.
- D. Dynamics are observable and measurable.
Global Falsifier: The unified ontology claim collapses if a system is found where DT, κ, and topological persistence are mutually independent across all regimes, and where R cannot be expressed as a functional of the trajectory or occupation measure. If such a system exists, the framework’s claim to unify persistence, stability, and reality alignment would be falsified.
7. Experimental Design
7.1 System Choice
Train a CNN on MNIST or CIFAR-10. Use latent activation manifolds for topological analysis.
Justification: Karuppiah, Nazreen Banu et al. (2026) demonstrate the use of persistent homology on activations to study feature learning and generalization. Turner & Barak (2023) show that RNNs develop attractors sequentially, providing a controlled setting for studying topological evolution during learning.
7.2 Variable Measurement
| Variable | Protocol |
|---|---|
| DT(x) | Sample weights; compute distance to final attractor; integrate. |
| Ptopo(t) | Compute persistent homology on latent activations; sum feature lifetimes. |
| E(t) | Finite differences of Ptopo(t). |
| κ | Perturb weights; measure recovery time τ; κ=1/τ. |
| γ | Compute average drift rate during training. |
| R | Cross-domain generalization accuracy. |
7.3 Statistical Analysis
- Correlate E(t) with κ and γ conditional on regime.
- Pre-register thresholds and sample size.
Note on future empirical work: A full empirical validation would require pre-registration with specified sample size, significance thresholds, power analysis, and robustness checks. These are planned for subsequent work.
8. Discussion
8.1 Implications
The paper provides a candidate formalization with defined variables, mathematical properties, and testable predictions. The mathematical properties of DT establish its relationship to κ and provide a foundation for the framework’s core claims.
8.2 Limitations
- Ptopo is computationally expensive.
- The framework is a meta-theory, not a complete domain-specific theory.
- Variables may be confounded; causal inference requires controlled experiments.
- The κ/γ regime distinction is proposed and requires empirical validation.
8.3 Future Work
- Empirical validation of predictions.
- Formal derivation of relationships from first principles.
- Extension to other domains.
- Computational efficiency improvements.
9. Conclusion
This paper proposes a candidate formalization for the attractor framework. The central mathematical innovation is treating persistence as a functional defined over trajectories—DT(x)=∫0Td(ϕτ(x),A)dτ—rather than as a scalar property of states. We defined the cumulative deviation functional DT, the topological persistence functional Ptopo(t), and the topological evolution rate E(t). We proved several mathematical properties of DT, including non-negativity, monotonicity, additivity, Lipschitz continuity, and a bound relating D∞ to κ: D∞(x)≤κCd(x,A). We established connections to dynamic programming and ergodic theory. We unified the variable set with operational definitions. We derived testable predictions and provided a falsifiable experimental protocol.
The framework now admits formal definitions, operational variables, and empirical tests. The next step is empirical validation.
Appendix A: Possible Extensions from Larose (2025) — Unverified Source
Note: The following source has not been independently verified. It is included for completeness and as a potential direction for future exploration, but should not be treated as established.
Larose (2025) develops a framework for recursive deformation systems. Two constructs are potentially relevant:
Constraint Functional: C(X)=∫trajectory∥∇Φ∥dτ, measuring cumulative irreversible deformation.
Persistence Invariant: Ip=∮RdΦ, a topological invariant.
These are not yet integrated into the core framework and are presented here for completeness and future exploration. They should be treated as unverified candidate extensions.
References
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Edelsbrunner, H., & Harer, J. (2010). Computational Topology: An Introduction. American Mathematical Society.
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Karuppiah, K., Nazreen Banu, M., et al. (2026). “Topological Data Analysis (TDA) as a Framework for Understanding Deep Learning Behavior.” 2025 IEEE 5th International Conference on ICT in Business Industry & Government (ICTBIG), Indore, India, December 12-13, 2025. IEEE Xplore. DOI: 10.1109/ICTBIG68706.2025.11323998.
Larose, H. (2025). “A Mathematical Theory of Frame-Independent Persistence.” Academia.edu. [Unverified source.]
Ruelle, D. (1989). Chaotic Evolution and Strange Attractors. Cambridge University Press.
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Turner, E., & Barak, O. (2023). “The Simplicity Bias in Multi-Task RNNs: Shared Attractors, Reuse of Dynamics, and Geometric Representation.” Advances in Neural Information Processing Systems (NeurIPS).
Suggested citation: Galida, R. S. (2026). The Persistence Functional: A Candidate Formal Foundation for the Attractor Framework (Foundational Edition). Fantasy Attractor.

