A Multidimensional Fractional Hawkes Process for Multiple Earthquake Mainshock Aftershock Sequences
Pith reviewed 2026-05-24 02:24 UTC · model grok-4.3
The pith
A multidimensional fractional Hawkes process that makes magnitude triggering depend on history outperforms the ETAS model on two earthquake catalogs with multiple mainshock-aftershock sequences.
A machine-rendered reading of the paper's core claim, the machinery that carries it, and where it could break.
Core claim
By discretising magnitudes into disjoint intervals and modelling the intervals as mutually exciting subprocesses driven by Mittag-Leffler kernels, the multidimensional fractional Hawkes process incorporates history dependence into the magnitude distribution and produces superior fits, diagnostics, and predictions relative to the ETAS model on data sets that contain successive mainshock-aftershock sequences.
What carries the argument
multidimensional fractional Hawkes process whose subprocesses correspond to magnitude intervals and whose excitation kernel is the Mittag-Leffler density
If this is right
- The model returns lower information criteria values than ETAS for both the Japan and Middle America Trench catalogs.
- Residual analysis shows improved agreement with the observed point patterns.
- Retrospective prediction scores are higher than those obtained with ETAS.
- The fitted parameters recover magnitude-triggering characteristics already reported in the seismological literature that cannot be recovered from an ETAS fit.
Where Pith is reading between the lines
- The same discretised-mark construction could be tried on other marked point processes where the mark distribution is suspected to depend on history.
- If the inferred cross-magnitude excitation rates differ systematically between tectonic regions, the model could serve as a diagnostic for regional differences in aftershock productivity.
- Replacing the fixed magnitude bins with a continuous mark-dependent kernel would test whether the performance gain survives removal of the discretisation step.
Load-bearing premise
Discretising the magnitude range into a fixed set of disjoint intervals and adopting the Mittag-Leffler density as the kernel function is sufficient to capture history-dependent magnitude triggering without material bias.
What would settle it
On a new catalog containing multiple mainshock-aftershock sequences, the multidimensional fractional Hawkes process would need to fail to improve on the ETAS model across information criteria, residual plots, and prediction scores.
Figures
read the original abstract
Most point process models for earthquakes currently in the literature assume the magnitude distribution is i.i.d. potentially hindering the ability of the model to describe the main features of data sets containing multiple earthquake mainshock aftershock sequences in succession. This study presents a novel multidimensional fractional Hawkes process model designed to capture magnitude dependent triggering behaviour by incorporating history dependence into the magnitude distribution. This is done by discretising the magnitude range into disjoint intervals and modelling events with magnitude in these ranges as the subprocesses of a mutually exciting Hawkes process using the Mittag-Leffler density as the kernel function. We demonstrate this model's use by applying it to two data sets, Japan and the Middle America Trench, both containing multiple mainshock aftershock sequences and compare it to the existing ETAS model by using information criteria, residual diagnostics and retrospective prediction performance. We find that for both data sets all metrics indicate that the multidimensional fractional Hawkes process performs favourably against the ETAS model. Furthermore, using the multidimensional fractional Hawkes process we are able to infer characteristics of the data sets that are consistent with results currently in the literature and that cannot be found by using the ETAS model.
Editorial analysis
A structured set of objections, weighed in public.
Referee Report
Summary. The manuscript proposes a multidimensional fractional Hawkes process for modeling sequences containing multiple mainshock-aftershock earthquake clusters. Magnitudes are discretized into fixed disjoint intervals treated as subprocesses of a mutually exciting Hawkes process; each cross-excitation term uses a Mittag-Leffler density as the triggering kernel to introduce history dependence into the magnitude distribution. The model is fitted to the Japan and Middle America Trench catalogs and is reported to outperform the ETAS model on information criteria, residual diagnostics, and retrospective prediction metrics, while also permitting inference of magnitude-dependent features absent from ETAS.
Significance. If the reported gains survive scrutiny of the discretization step and the fitting procedure is fully reproducible, the construction would supply a concrete route to magnitude-dependent triggering that standard ETAS lacks, potentially improving description of complex seismic catalogs.
major comments (2)
- [Abstract (model construction paragraph)] Abstract (paragraph describing model construction): the central claim that the model captures history-dependent magnitude triggering rests on partitioning the continuous magnitude range into a small number of fixed disjoint intervals whose boundaries are chosen once and never varied; nothing demonstrates that the resulting discrete subprocesses recover the same continuous-magnitude dynamics that would appear in an undiscretized formulation, so any performance advantage over ETAS could be an artifact of that arbitrary partition.
- [Abstract] Abstract: superior performance is asserted on information criteria, residual diagnostics, and retrospective prediction tasks, yet no derivation of the likelihood, fitting algorithm, optimization details, or uncertainty quantification is supplied, preventing independent verification of the metrics that support the main conclusion.
minor comments (1)
- The phrase 'fractional Hawkes process' is used without an explicit definition or reference to the fractional calculus literature; a short clarifying sentence would aid readers.
Simulated Author's Rebuttal
We thank the referee for their insightful comments. We address each major comment below and indicate planned revisions.
read point-by-point responses
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Referee: [Abstract (model construction paragraph)] Abstract (paragraph describing model construction): the central claim that the model captures history-dependent magnitude triggering rests on partitioning the continuous magnitude range into a small number of fixed disjoint intervals whose boundaries are chosen once and never varied; nothing demonstrates that the resulting discrete subprocesses recover the same continuous-magnitude dynamics that would appear in an undiscretized formulation, so any performance advantage over ETAS could be an artifact of that arbitrary partition.
Authors: The discretization into fixed intervals is a deliberate modeling choice that enables the multidimensional mutually exciting structure and cross-excitation terms needed to introduce history dependence into the magnitude distribution. Boundaries are chosen using standard seismic magnitude classes for interpretability. We agree that this is an approximation and does not prove equivalence to a hypothetical continuous-magnitude formulation. In revision we will add a sensitivity study across alternative partitions (varying both number and cut-points) and report whether the reported gains over ETAS remain stable. revision: partial
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Referee: [Abstract] Abstract: superior performance is asserted on information criteria, residual diagnostics, and retrospective prediction tasks, yet no derivation of the likelihood, fitting algorithm, optimization details, or uncertainty quantification is supplied, preventing independent verification of the metrics that support the main conclusion.
Authors: Section 3 derives the likelihood for the multidimensional fractional Hawkes process; Section 4 describes the maximum-likelihood fitting procedure and numerical optimization; uncertainty is obtained from the observed information matrix. To improve verifiability we will expand these sections with explicit likelihood expressions, pseudocode for the optimization routine, and additional implementation details. We will also release the fitting code upon publication. revision: yes
Circularity Check
No circularity: model is an explicit extension validated on external data
full rationale
The derivation defines a new process via magnitude discretization into fixed intervals and Mittag-Leffler kernels for cross-excitation, then evaluates it against ETAS using standard IC, residual, and retrospective prediction metrics on two independent catalogs. No equation reduces a claimed result to a fitted input by construction, no uniqueness theorem is imported from self-citation, and no prediction is statistically forced by the fitting procedure itself. The central performance claim therefore rests on observable data comparisons rather than tautology.
Axiom & Free-Parameter Ledger
free parameters (2)
- magnitude interval boundaries
- Mittag-Leffler kernel parameters
axioms (1)
- domain assumption Earthquake events partitioned by magnitude interval form a collection of mutually exciting point processes
Forward citations
Cited by 1 Pith paper
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Multivariate Representations of Univariate Marked Hawkes Processes
Multivariate unmarked Hawkes representations asymptotically approximate univariate marked Hawkes processes while preserving stationarity and parameter identifiability.
Reference graph
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