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Tue, 18. Nov at 11:15
1.023 (BMS Room, ...
Wall-crossing, Schur indices and symmetric quivers
Abstract. I will show that symmetric quivers encode various observables of 4d N=2 theories related to wall-crossing phenomena. The observables in question include (wild) Donaldson-Thomas invariants, as well as Schur indices, which at the same time are known to reproduce characters of 2d conformal field theories. Furthermore, symmetric quivers of our interest encode 3d N=2 theories, therefore all these relations can be interpreted as a web of dualities between 2d, 3d, and 4d systems.
Tue, 18. Nov at 13:15
Humboldt-Universi...
Wed, 19. Nov at 10:00
Weierstrass-Insti...
Early stopping in fixed-design regression with projection estimators
Abstract. The present work analyzes the behavior of early stopping rules in the context of fixed-design regression. The setting is the one of high-dimension with a limited amount of available data. In this setting reducing the dimension is a natural purpose and choosing how many features should be considered at the (non-linear) feature space level is a classical question. Projection estimators of the regression function are sequentially considered, each of them being associated with a nested collection of feature spaces. With no assumptions on the smoothness of the regression function, a first statement is given which proves that the (data-driven) early stopping rule based on the discrepancy principle achieves a non-improvable rate O(1/p(n)). By contrast if one makes stronger smoothness assumptions, considering a smoothed version of the empirical risk for choosing the dimension of the feature space allows for improving the rate of convergence up to being minimax optimal. These rates are made explicit in particular for Random Features when the regression function does belong to an RKHS. We discuss technical tools involving concentration inequalities for matrices under sub-Gaussian assumptions as well as the notion of critical equation combined with Random Linear Algebra results, which help deciding the level of smoothing to use.
Wed, 19. Nov at 13:00
Overparametrization as a Feature, Not a Bug: How Excess Capacity Drives Sparsity and Informs Uncertainty
Abstract. Overparametrized neural networks are often viewed as wasteful, yet they can be a powerful driver of structure and sparsity. This talk examines how excess capacity can be leveraged to induce sparse and interpretable representations. I will begin by showing how differentiable sparsity mechanisms transform redundant parameterizations into structured solutions with theoretical guarantees. Building on this, I will link these ideas to insights on balancedness and equal-probability manifolds in Bayesian neural networks, where overparametrization shapes the posterior geometry and promotes prior conformity. The talk concludes with an outlook on foundation models and their potential for scalable, uncertainty-aware learning.
Wed, 19. Nov at 14:15
WIAS, Erhard-Schm...
An H-convergence-based implicit function theorem and homogenization of nonlinear non-smooth elliptic systems
Abstract
Wed, 19. Nov at 16:00
Wed, 19. Nov at 16:30
EN 058
THE Lp-BRUNN-MINKOWSKI INEQUALITIES FOR VARIATIONAL FUNCTIONALS WITH 0 ≤ p < 1
Abstract
Thu, 20. Nov at 10:00
SR 009, Arnimallee 6
Stochastic differential mean field games
Thu, 20. Nov at 14:00
Thu, 20. Nov at 16:15
HU Berlin, Instit...
Large deviations for rough volatility
Abstract. A rough volatility model is a stochastic volatility model for an asset price process with rough volatility, meaning that the Hölder regularity of the volatility path is less than one half. In this talk, we will focus on the asymptotic behavior of implied volatility for short maturities under such models, and show that the large deviation principle for rough volatility models provides the short-time asymptotic behavior of implied volatility. Rough path theory sheds light on the calculus of these asymptotics.
Thu, 20. Nov at 17:15
HU Berlin, Instit...
Continuous-time persuasion by filtering
Abstract. We frame dynamic persuasion in a partial observation stochastic control game with an ergodic criterion. The receiver controls the dynamics of a multidimensional unobserved state process. Information is provided to the receiver through a device designed by the sender that generates the observation process. The commitment of the sender is enforced and an exogenous information process outside the control of the sender is allowed. We develop this approach in the case where all dynamics are linear and the preferences of the receiver are linear-quadratic. We prove a verification theorem for the existence and uniqueness of the solution of the HJB equation satisfied by the receiver’s value function. An extension to the case of persuasion of a mean field of interacting receivers is also provided. We illustrate this approach in two applications: the provision of information to electricity consumers with a smart meter designed by an electricity producer; the information provided by carbon footprint accounting rules to companies engaged in a best-in-class emissions reduction effort. In the first application, we link the benefits of information provision to the mispricing of electricity production. In the latter, we show that when firms declare a high level of best-in-class target, the information provided by stringent accounting rules offsets the Nash equilibrium effect that leads firms to increase pollution to make their target easier to achieve. This is a joint work with Prof. René Aïd, Prof. Giorgia Callegaro and Prof. Luciano Campi.
Fri, 21. Nov at 14:15
TU (MA 042)
Anatomy of big algebras
Abstract
Mon, 24. Nov at 11:30
Weierstrass Lectu...
Mon, 24. Nov at 15:00
Rudower Chaussee ...
Physics-Informed Gaussian Process Regression Generalizes Linear PDE Solvers
Abstract. Linear partial differential equations (PDEs) are an important, widely applied class of mechanistic models, describing physical processes such as heat transfer, electromagnetism, and wave propagation. In practice, specialized numerical methods based on discretization are used to solve PDEs. They generally use an estimate of the unknown model parameters and, if available, physical measurements for initialization. Such solvers are often embedded into larger scientific models with a downstream application and thus error quantification plays a key role. However, by ignoring parameter and measurement uncertainty, classical PDE solvers may fail to produce consistent estimates of their inherent approximation error. In this work, we approach this problem in a principled fashion by interpreting solving linear PDEs as physics-informed Gaussian process (GP) regression. Our framework is based on a key generalization of the Gaussian process inference theorem to observations made via an arbitrary bounded linear operator. Crucially, this probabilistic viewpoint allows to (1) quantify the inherent discretization error; (2) propagate uncertainty about the model parameters to the solution; and (3) condition on noisy measurements. Demonstrating the strength of this formulation, we prove that it strictly generalizes methods of weighted residuals, a central class of PDE solvers including collocation, finite volume, pseudospectral, and (generalized) Galerkin methods such as finite element and spectral methods. This class can thus be directly equipped with a structured error estimate. In summary, our results enable the seamless integration of mechanistic models as modular building blocks into probabilistic models by blurring the boundaries between numerical analysis and Bayesian inference.
Mon, 24. Nov at 15:00
Rudower Chaussee ...
Strange formulas in homogenization theory
Tue, 25. Nov at 11:15
1.023 (BMS Room, ...
Panorama of matrix models and topological recursion I
Abstract. This is crash course which aims at explaning various aspects of: random matrix ensembles and Coulomb gases, loop equations, spectral curves, topological recursion, maps, free probability, how they fit together and pose some open problems.
Tue, 25. Nov at 15:15
Room 3.006, Rudow...
Wed, 26. Nov at 10:00
Weierstrass-Insti...
Physics-informed Functional Principal Component Analysis of Large-scale Datasets
Abstract. Physics-informed statistical learning is an emerging area of spatial and functional data analysis that integrates observational data with prior physical knowledge encoded by partial differential equations (PDEs). We propose an iterative Majorization–Minimization scheme for functional Principal Component Analysis of random fields in a general Hilbert space, formulated under the practically relevant assumption of partial observability of the data. By combining differential penalties with finite element discretizations, our approach recovers smooth principal component functions while preserving the geometric features of the spatial domain. The resulting estimation procedure involves solving a smoothing problem, which may become computationally demanding for large-scale datasets. After establishing the well-posedness of this smoothing problem under mild assumptions on the PDE parameters, we develop an efficient iterative algorithm for its solution. This framework enables the practical analysis of massive functional datasets at the population level, ranging from physics-informed fPCA to functional clustering, with applications to environmental and neuroimaging data.
Wed, 26. Nov at 11:30
WIAS-406
Wed, 26. Nov at 13:15
Room: 3.007 John ...
Wed, 26. Nov at 14:15
WIAS, Erhard-Schm...
Random boundary conditions for open resonators and the Laplace--Beltrami--Weyl asymptotics
Abstract
Thu, 27. Nov at 10:00
SR 009, Arnimallee 6
Ergodicity of φ^4_3
Fri, 28. Nov
How to measure quantum fields? Implementing a causal measurement scheme
Abstract. While measurement processes in standard quantum mechanics are well understood, the extension of these ideas to quantum field theory (QFT) remains a key challenge. In particular, ensuring that measurements respect fundamental principles such as relativistic causality is crucial. A persistent issue concerning measurements in QFT is, though, that the usual axioms for QFT alone are insufficient to prevent superluminal signaling. In this talk, I will discuss a recent proposal by Fewster and Verch for a local, covariant and causal measurement framework in algebraic QFT. In particular, I will discuss completeness of the framework and motivate its underlying assumptions focussing on the concrete setting of a free scalar field and Gaussian measurements. We conclude that the Fewster-Verch approach is suitable to model typical measurements in QFT.<br><br>The talk is based on joint work with Miguel Navascués (Lett Math Phys 115, 115 (2025), <a href="https://link.springer.com/article/10.1007/s11005-025-02001-3" target="_blank">https://doi.org/10.1007/s11005-025-02001-3</a>).
Tue, 02. Dec at 11:15
1.023 (BMS Room, ...
Small deviations of Gaussian multiplicative chaos and the free energy of the two-dimensional massless Sinh-Gordon model
Abstract. We derive a bound on the probability that the total mass of Gaussian multiplicative chaos measure obtained from a Gaussian field with zero spatial average, is small. We also give the probabilistic path integral formulation of the massless Sinh-Gordon model on a torus of side length R, and study its partition function R tends to infinity. We apply the small deviation bounds for Gaussian multiplicative chaos to obtain lower and upper bounds for the logarithm of the partition function, leading to the existence of a non-zero and finite subsequential infinite volume limit for the free energy.
Wed, 03. Dec at 10:00
Weierstrass-Insti...
Wed, 03. Dec at 11:30
Weierstrass Lectu...
Wed, 03. Dec at 16:00
Wed, 03. Dec at 16:00
Wed, 03. Dec at 16:30
EN 058
Thu, 04. Dec at 10:00
SR 009, Arnimallee 6
Thu, 04. Dec at 10:00
SR 009, Arnimallee 6
Robust Filtering: Correlated Noise and Multidimensional Observation
Thu, 04. Dec at 15:15
Rudower Chaussee ...
Thu, 04. Dec at 16:15
HU Berlin, Instit...
Thu, 04. Dec at 17:15
HU Berlin, Instit...
Fri, 05. Dec
Fri, 05. Dec at 14:15
TU (MA 042)
Randomness, quasirandomness, and decomposition problems
Tue, 09. Dec at 11:15
1.023 (BMS Room, ...
Panorama of matrix models and topological recursion II
Abstract. This is crash course which aims at explaning various aspects of: random matrix ensembles and Coulomb gases, loop equations, spectral curves, topological recursion, maps, free probability, how they fit together and pose some open problems.
Tue, 09. Dec at 15:15
Room 3.006, Rudow...
Wed, 10. Dec at 10:00
Weierstrass-Insti...
Thu, 11. Dec at 10:00
SR 009, Arnimallee 6
Anomalous diffusions in inhomogeneous media
Thu, 11. Dec at 10:00
SR 009, Arnimallee 6
Anomalous diffusions in inhomogeneous media
Thu, 11. Dec at 14:00
Fri, 12. Dec
A Pre-tty Pre-amble to Pre-Lie Algebras from Combinatorial Species
Abstract. We present an introduction to pre-Lie algebras, an algebraic structure closely related to Lie algebras. From a combinatorial perspective, pre-Lie algebras are connected to the notion of insertion of objects of a given nature into one another. In recent years, pre-Lie algebras have found numerous applications in algebra, combinatorics, quantum field theory, and numerical analysis.<br><br>To better understand the nature of pre-Lie algebras, we employ the framework of species, a categorification of the concept of generating functions. This perspective allows us to describe, in a combinatorial way, several algebraic properties of pre-Lie algebras. In particular, we present a “pre-Lie-like” notion of symmetric operads, called Nested Pre-Lie operads (NPL for short). After giving several examples of NPL operads, we explain how to construct NPL-algebras, in the same way algebraic structures emerge from operads by considering algebras over operads.<br><br>To do so, we use a new variant of species based on polynomial functions. This is joint work with Dominique Manchon, Hedi Regeiba, and Imen Rjaiba.
Fri, 12. Dec at 14:15
FU (T9)
The classical coagulation equation: gelation, self-similarity and oscillations
Tue, 16. Dec at 11:15
1.023 (BMS Room, ...
Tue, 16. Dec at 11:15
1.023 (BMS Room, ...
Panorama of matrix models and topological recursion III
Abstract. This is crash course which aims at explaning various aspects of: random matrix ensembles and Coulomb gases, loop equations, spectral curves, topological recursion, maps, free probability, how they fit together and pose some open problems.
Wed, 17. Dec at 10:00
Weierstrass-Insti...
Incomplete U-Statistics of Equireplicate Designs: Berry-Esseen Bound and Efficient Construction.
Abstract. U-statistics are a fundamental class of estimators that generalize the sample mean and underpin much of nonparametric statistics. Although extensively studied in both statistics and probability, key challenges remain. These include their inherently high computational cost—addressed partly through incomplete U-statistics—and their non-standard asymptotic behavior in the degenerate case, which typically requires resampling methods for hypothesis testing. This talk presents a novel perspective on U-statistics, grounded in hypergraph theory and combinatorial designs. Our approach bypasses the traditional Hoeffding decomposition, which is the main analytical tool in this literature but is highly sensitive to degeneracy. By fully characterizing the dependence structure of a U-statistic, we derive a new Berry–Esseen bound that applies to all incomplete U-statistics based on deterministic designs, yielding conditions under which Gaussian limiting distributions can be established even in the degenerate case and when the order diverges. Moreover, we introduce efficient algorithms to construct incomplete U-statistics of equireplicate designs, a subclass of deterministic designs that, in certain cases, enable to achieve minimum variance. We apply it to kernel-based testing, focusing on the widely used two-sample Maximum Mean Discrepancy (MMD) test, leading to a permutation-free variant that delivers substantial computational gains while retaining statistical validity.
Wed, 17. Dec at 14:15
WIAS, Erhard-Schm...
A weak-strong uniqueness principle for the Mullins--Sekerka equation
Abstract
Wed, 17. Dec at 16:00
Wed, 17. Dec at 16:00
Thu, 18. Dec at 16:15
HU Berlin, Instit...
Thu, 18. Dec at 17:15
HU Berlin, Instit...
Tue, 06. Jan at 11:15
1.023 (BMS Room, ...
Panorama of matrix models and topological recursion III
Abstract. This is crash course which aims at explaning various aspects of: random matrix ensembles and Coulomb gases, loop equations, spectral curves, topological recursion, maps, free probability, how they fit together and pose some open problems.
Wed, 07. Jan at 13:15
Room: 3.007 John ...
Secant loci of scrolls over curves
Abstract. The secant loci associated to a linear system \(l\) over a curve C parametrise effective divisors which impose fewer conditions than expected on \(l\). For a rank \(r\) bundle \(E\) and a space of global sections of \(E\), we define and investigate generalised secant loci, which are determinantal loci on Quot schemes of torsion quotients of \(E\). We extend the Abel-Jacobi map to the context of Quot schemes, and examine the relation between smoothness of generalised secant loci and their associated Brill-Noether loci. In one case, we indicate how formulas of Oprea-Pandharipande and Stark can be used to enumerate the generalised secant locus when it has and attains expected dimension zero.
Tue, 13. Jan at 11:15
1.023 (BMS Room, ...
Wed, 14. Jan at 10:00
Weierstrass-Insti...
Wed, 14. Jan at 11:30
Weierstrass Lectu...
Wed, 14. Jan at 16:00
Thu, 15. Jan at 17:15
HU Berlin, Instit...
Fri, 16. Jan
Wed, 21. Jan at 10:00
Weierstrass-Insti...
Thu, 22. Jan at 15:15
Rudower Chaussee ...
Fri, 23. Jan
Fri, 23. Jan
Tue, 27. Jan at 11:15
1.023 (BMS Room, ...
Wed, 28. Jan at 10:00
Weierstrass-Insti...
Wed, 28. Jan at 16:00
Wed, 28. Jan at 16:00
Thu, 29. Jan at 16:15
HU Berlin, Instit...
Thu, 29. Jan at 16:15
Equivalence between local and global Hadamard States with Robin boundary conditions on half-Minkowski spacetime
Abstract. We construct the fundamental solutions and Hadamard states for a Klein-Gordon field in half-Minkowski spacetime with Robin boundary conditions in arbitrary dimensions using a generalisation of the Robin-to-Dirichlet map. On the one hand this allows us to prove the uniqueness and support properties of the Green operators. On the other hand, we obtain a local representation for the Hadamard parametrix that provides the correct local definition of Hadamard states, capturing `reflected' singularities from the spacetime timelike boundary. This allows us to prove the equivalence of our local Hadamard condition and the global Hadamard condition with a wave-front set described in terms of generalized broken bicharacteristics, obtaining a Radzikowski-like theorem in half-Minkowski spacetime.<br><br>Joint work with B. Costeri, R. D. Singh and B. Juárez-Aubry -- ArXiv: 2509.26035 [math-ph]
Thu, 29. Jan at 17:15
HU Berlin, Instit...
Fri, 30. Jan
Wed, 11. Feb at 10:00
Weierstrass-Insti...
Linear Monge is All You Need
Abstract. In this talk, we explore the geometry of the Bures–Wasserstein space for potentially degenerate Gaussian measures on a separable Hilbert space, based on our recent work with Yoav Zemel. A key feature of our approach is its simplicity: relying only on elementary arguments from linear operator theory, we are able to derive explicit results without resorting to Kantorovich duality or Otto's Calculus. We provide a complete characterisation of both the Monge and Kantorovich problems in this context, regardless of the degeneracy of their measures. Furthermore, we show a simple way to construct all possible Wasserstein geodesics connecting two Gaussian measures. Finally, we generalise our results to characterise Wasserstein barycenters of Gaussian measures, borrowing the idea of Procrustes distance from statistical shape analysis.
Wed, 11. Feb at 10:00
Weierstrass-Insti...
Kernel ridge regression for spherical responses
Abstract. The aim is to propose a novel nonlinear regression framework for responses taking values on a hypersphere. Rather than performing tangent space regression, where all the sphere responses are lifted to a single tangent space on which the regression is performed, we estimate conditional Fréchet means by minimizing squared distances on the nonlinear manifold. Yet, the tangent space serves as a linear predictor space where the regression function takes values. The framework integrates Riemannian geometry techniques with functional data analysis by modelling the regression function using methods from vector-valued reproducing kernel Hilbert space theory. This formulation enables the reduction of the infinite-dimensional estimation problem to a finite-dimensional one via a representer theorem and leads to an estimation algorithm by means of Riemannian gradient descent. Explicit checkable conditions on the data that ensure the existence and uniqueness of the minimizing estimator are given.
Wed, 11. Feb at 14:15
WIAS, Erhard-Schm...
Wed, 11. Feb at 16:00
Wed, 11. Feb at 16:00
Thu, 12. Feb at 16:15
HU Berlin, Instit...
Thu, 12. Feb at 17:15
HU Berlin, Instit...