5.1. Definition
The Type-III derangetropy functional introduces a non-entropy-based transformation of probability densities, designed to capture oscillatory and resonance-governed redistribution mechanisms. Unlike its Type-I and Type-II counterparts, which hinge on entropy attenuation and amplification, Type-III leverages phase modulation, using the CDF as a proxy for normalized phase.
Definition 3 (Type-III Derangetropy)
. The Type-III derangetropy functional is defined by the following mapping The evaluation of the derangetropy functional of Type-III at a specific point at is denoted by . This transformation constitutes a deterministic, nonlinear modulation of the input density, with the kernel introducing a wave-like amplification that peaks at and vanishes at the boundaries of the distribution support ( or 1). It enacts a phase-locked redistribution of mass toward central probability regions and attenuates the tails, yielding a shaped refinement that reflects an intrinsic balance across the support.
The phase-modulation mechanism implemented by the quadratic sine function encodes a symmetry consistent with harmonic structures: periodic, smooth, and centered. Unlike entropy-driven methods, which reshape the distribution in response to localized uncertainty, Type-III derangetropy is insensitive to local entropy gradients. Instead, it processes the distribution globally via its CDF, effectively normalizing the support and embedding the density into a circular or toroidal geometry. This embedding allows the transformation to capture cyclic symmetry, which would be obscured in linear coordinate representations.
From an operational standpoint, Type-III can be viewed as a probabilistic analog of bandpass filtering in signal processing, concentrating density in regions of spectral equilibrium while suppressing outliers. Importantly, the modulation factor is bounded within , ensuring that the transformed density remains normalizable and analytically tractable under repeated application. This boundedness distinguishes Type-III from sharpening kernels which may become numerically unstable or degenerate under iteration.
Mathematically, the repeated application of the Type-III operator induces smoothing in the Fourier domain. This behavior arises because the sinusoidal modulation in the probability domain corresponds to a convolution-like contraction in the characteristic function, thereby acting as a low-pass filter. Over successive iterations, this spectral contraction drives the distribution toward a Gaussian profile, a fact established in the proceeding convergence results. This process mirrors spectral diffusion observed in thermodynamically driven stochastic systems and establishes a bridge between phase-modulated density transformations and heat kernel smoothing on the probability simplex.
The applications of Type-III derangetropy span several domains where phase alignment and wave-based coherence dominate over mere entropy accumulation. In neuroscience, for example, the transformation is well-suited for extracting rhythmic activity across theta, alpha, beta, and gamma bands in EEG signals, where spectral localization and symmetry are paramount. In such contexts, classical entropy metrics may obfuscate phase-dominant features due to their bias toward flattening. Type-III instead enhances structured oscillatory components, maintaining alignment with periodic temporal behavior.
In engineered systems such as radar and sonar, Type-III can be used to accentuate return signals with coherent phase trajectories, effectively serving as a probabilistic phase-regularization operator. In optical physics, particularly in laser and interferometric analysis, the ability to redistribute energy across a normalized phase spectrum is analogous to cavity-mode shaping or phase-front correction. Likewise, in financial econometrics, where cyclical volatility patterns emerge, e.g., through intraday cycles, this phase-modulated transformation may help characterize regime-dependent behaviors without enforcing entropy-based distortions.
Conceptually, Type-III derangetropy emphasizes the role of global structure over local randomness. It encodes an operational belief that in certain classes of systems, particularly those governed by cyclic, resonant, or harmonic principles, information propagates not via entropy gradients but through structured, phase-aware reconfigurations. By eschewing direct entropy dependence, this transformation offers a unique lens for examining density evolution where preservation of symmetry, periodicity, or resonance is prioritized.
Hence, Type-III derangetropy presents a theoretically bounded, spectrally coherent, and phase-sensitive functional for probability refinement. Its cumulative phase-based modulation aligns naturally with applications involving resonance, coherence, and cyclic symmetry, offering an alternative to entropy-centric transformations in both the analysis and modeling of complex systems.
5.2. Mathematical Properties
For any absolutely continuous PDF
, the Type-III derangetropy functional
is a nonlinear operator that belongs to the space
having the following first derivative
where the derivatives are taken with respect to
x.
The following theorem shows that the Type-III derangetropy maps the PDF into another valid probability density function.
Theorem 5. For any absolutely continuous , the Type-III derangetropy functional is a valid probability density function.
Proof. To prove that
is a valid PDF, we need to show that
for all
and that
. The non-negativity of
is clear due to the non-negativity of the terms involved in its definition. The normalization condition can further be verified by the change of variables
, yielding
Hence,
is a valid PDF. □
Similar to its Type-I and Type-II counterparts, the Type-III derangetropy functional
has self-referential properties, which are expressed as follows:
where
represents the
nth iteration of the transformation, and
is the CDF at the
nth stage. The initial conditions for the recursion are set as
The recursive formulation of Type-III derangetropy highlights a structured refinement process where each successive iteration enhances the probabilistic modulation applied in the previous step. Unlike Type-I, which balances entropy gradients, and Type-II, which amplifies entropy regions, Type-III enforces a periodic redistribution mechanism governed by the sine-squared function. This transformation progressively sharpens probability mass near mid-range values of the CDF while suppressing contributions from extreme regions. As a result, with each iteration, the density function becomes increasingly concentrated in regions where is maximized, leading to a self-reinforcing oscillatory refinement.
Figure 2 illustrates how successive iterations of Type-III derangetropy transform different probability distributions. Despite the absence of explicit entropy terms, the iterative application of Type-III derangetropy exhibits a clear pattern of redistribution that progressively refines probability mass. The transformation does not merely preserve the shape of the original density but instead pushes probability toward a more structured, centralized form. Regardless of the initial distribution, the repeated application of Type-III derangetropy leads to a progressively smoother and more bell-shaped structure, ultimately converging toward a normal distribution.
For the uniform distribution, the initial transformation reshapes the density into a symmetric bell-like function, emphasizing probability concentration near the median. The second iteration intensifies this effect, reducing mass at the edges and further reinforcing the central region. A similar pattern is observed in the normal distribution, where each iteration enhances probability mass concentration near the mean while reducing the density of the tails. The effect is more apparent in skewed distributions such as the exponential distribution, where the first transformation shifts probability mass away from the heavy tail, while the second iteration further reduces the density gradient, making the distribution increasingly symmetric.
This process is evident in compact distributions such as the semicircle, where each transformation reduces the impact of boundary effects, favoring a more centralized redistribution of probability mass. In the case of the arcsine distribution, which is initially highly concentrated at the boundaries, the transformation effectively mitigates this extreme localization, redistributing probability toward the interior and gradually shifting toward a bell-shaped distribution. The common trend across all distributions is that Type-III derangetropy iteratively smooths and reshapes probability densities in a structured manner, reinforcing central regions while gradually eliminating extremities. The transformation acts as a refinement mechanism that reinforces a well-defined probabilistic structure, ensuring that the density evolves in a direction consistent with the Gaussian limit.
The differential equation governing the Type-III derangetropy functional for a uniform distribution, as stated in the following theorem, reveals fundamental principles of wave-based probability refinement and structured probability evolution.
Theorem 6. Let X be a random variable following a uniform distribution on the interval . Then, the derangetropy functional satisfies the following third-order ordinary differential equationwhere the initial conditions are set as Proof. The first and third derivatives of
are computed as follows:
and
respectively. Substituting these expressions into the differential equation, we obtain
which implies that
satisfies the given third-order differential equation. □
The governing equation for Type-III derangetropy is a third-order linear differential equation with the following characteristic equation
whose roots are as follows:
This indicates a combination of stationary and oscillatory modes, implying that the probability refinement process follows a wave-like evolution rather than simple diffusion. Unlike purely diffusive models, which allow probability mass to spread indefinitely, the presence of oscillatory solutions implies a cyclic probability refinement mechanism, where mass is systematically redistributed in a structured manner.
The third-order nature of this equation introduces higher-order control over probability redistribution, capturing not only the rate of change of probability mass but also its jerk (the rate of change of acceleration). This distinguishes Type-III derangetropy from simple diffusion-based models, which typically involve only first- or second-order derivatives. The third derivative term ensures dynamic feedback regulation, where probability mass alternates between expansion and contraction, maintaining a structured oscillatory refinement process.
The term plays a crucial role in reinforcing oscillatory stabilization. Unlike a conventional damping mechanism, which suppresses oscillations over time, this term acts as a restorative force, ensuring that probability oscillations remain well-structured while preventing uncontrolled dispersion. This prevents the transformation from excessively smoothing out the density, instead enforcing a controlled wave-based refinement of probability mass. This structured evolution explains why Type-III derangetropy systematically enhances mid-range probability densities while suppressing boundary effects, leading to a self-regulating probability distribution that resists both excessive diffusion and over-concentration.
5.3. Spectral Representation
The Type-III derangetropy functional defines a structured probability transformation governed by a frequency-modulated mechanism. As a valid PDF, this transformation induces a well-defined characteristic function, encapsulating its spectral properties. The following theorem establishes the explicit form of the characteristic function associated with Type-III derangetropy.
Theorem 7. The characteristic function of the distribution induced by the Type-III derangetropy transformation is given bywhereis the characteristic function of the original density, andare modulated characteristic functions incorporating phase shifts. Applying this result to the special case of a uniform distribution on
, we obtain
The characteristic function of the Type-III derangetropy functional for a uniform distribution follows a structured transformation process, which can be expressed in terms of the characteristic function of the base distribution. Given that the characteristic function of a uniform random variable is
the transformation induced by the Type-III derangetropy functional modifies the spectral representation as follows:
This transformation defines an operator that acts recursively on the characteristic function, introducing frequency shifts at and enforcing a structured refinement process in Fourier space. The recursive application of induces a diffusion-like behavior, where successive iterations lead to a spectral stabilization process governed by a structured decay. The following theorem formalizes this structured diffusion process, showing that the characteristic function of the sequence of transformed distributions satisfies a recurrence relation.
Theorem 8. Let be a sequence of random variables whose characteristic function evolves under the transformationand define the re-normalized iteratewith corresponding , where m denotes the median of the distribution. Then, the scaled sequence converges in distribution to a standard Gaussian; i.e.,with convergence rate in the variance collapse. Proof. We begin by analyzing the recursive evolution of the characteristic functions
under the transformation
To approximate the right-hand side, we apply a second-order Taylor expansion of
around the point
t, assuming sufficient smoothness, which yields
Substituting this expansion into the recurrence yields the following approximation
which reveals that the recursive map approximately evolves according to a discrete second-order differential operator in Fourier space.
Next, we consider the behavior of the variance of
. Since
is the characteristic function of a random variable with median
m, and assuming finite second moments, a second-order expansion around the origin gives
where
. Substituting this expansion into the evolution equation for
leads to
This recurrence implies that the variance decreases monotonically with
n, and in particular, it decays according to
. Consequently, the sequence
collapses in
toward the constant value
m; i.e.,
We now analyze the asymptotic behavior of the re-scaled random variables
Let
denote the characteristic function of
, and define the following auxiliary function
This scaling is chosen so that
captures the low-frequency behavior of
near the origin, where Gaussian approximations are valid.
Expanding
to second order, and using the earlier estimate
, we obtain the following recurrence
Taking logarithms and summing over
k, we obtain
Exponentiating both sides yields
Therefore, the characteristic functions
converge pointwise to the standard Gaussian characteristic function. By Lévy’s continuity theorem, this establishes
as
, which completes the proof. □
The Type-III derangetropy transformation defines a structured probability refinement process that induces an diffusion mechanism in Fourier space. The evolution of the characteristic function follows a discrete approximation to the heat equation
which describes how probability mass redistributes over successive iterations. Unlike uniform diffusion, which spreads probability evenly, Type-III derangetropy suppresses high-frequency oscillations while preserving structured probability redistribution, leading to a controlled refinement process. The sinusoidal modulation term
plays a central role in shaping this evolution. Rather than introducing oscillatory probability mass adjustments, this term guides structured refinement by selectively suppressing high-frequency variations, ensuring that probability mass does not dissipate arbitrarily.
The iterative application of Type-III derangetropy ultimately converges to a Gaussian distribution. This convergence is a direct consequence of the underlying diffusion mechanism in Fourier space, where the transformation systematically smooths the probability density while preserving structured patterns. The final equilibrium state corresponds to a probability density with maximal entropy under the imposed constraints, reinforcing the well-known result that repeated refinement of a distribution under structured diffusion leads to a Gaussian limit.