Dec. 2025 January 2026 Feb.
Modify filter

Filter off: No filter for categories


07.01.2026 14:30 Antrittsvorlesungen: Violetta Weger (TUM) und Murad Alim (TUM):
FakultätskolloquiumMI HS 3 (MI 00.06.011) (Boltzmannstr. 3, 85748 Garching)

Quantum Geometry

Speaker: Murad Alim (TUM)

Abstract:

Quantum theory has not only reshaped our understanding of the physical world; it has also become a powerful source of ideas for modern mathematics. In this talk, I will introduce aspects of the emerging field of quantum geometry, where insights from quantum field theory and string theory interact with symplectic, complex, and algebraic geometry. I will explain how dualities in physical theories often reveal that seemingly different mathematical structures share common underlying principles, leading to deep new results and unexpected bridges between diverse areas. A central example is mirror symmetry, a duality relating symplectic and complex geometry with far-reaching consequences for enumerative geometry, representation theory and number theory.

08.01.2026 16:00 Alain Joye:
Scattering Quantum Walks on Graphs00.10.011 CIT meeting room 1 (Boltzmannstr. 3, 85748 Garching)

We consider a class of Unitary Quantum Walks on arbitrary graphs, parameterized by a family of scattering matrices.

After explaining that these Scattering Quantum Walks encompass several known Quantum Walks, we further introduce two classes of Scattering Open Quantum Walks on arbitrary graphs based on that construction, whose asymptotic states we discuss.

12.01.2026 14:15 Thomas Mikosch (University Copenhagen) :
Modeling extremal clusters in time series2.02.01 (Parkring 11, 85748 Garching)

Real-life financial time series exhibit heavy tails and clusters of extreme values. In this talk we will address models that exhibit these stylized facts. This is the class of regularly varying time series, introduced by Davis and Hsing (1995, AoP) and further developed by Basrak and Segers (2009, SPA). The marginal distribution of a regularly varying time series has tails of power-law type, and the dynamics caused by an extreme event in this time series is described by the spectral tail process. The perhaps best known financial time series models of this kind are Engle’s (1982) ARCH process, Bollerslev’s (1986) GARCH process and Engle’s and Russell’s (1998) Autoregressive Conditional Duration (ACD) model. The length and magnitude of extremal clusters in such a series can be described by an analog of the autocorrelation function for extreme events: the extremogram. The extremal index is another useful tool for describing expected extremal cluster sizes. Both objects can be expressed in terms of the spectral tail process and allow for statistical estimation. The probabilistic and statistical aspects of regularly varying time series are summarized in the recent monograph by Mikosch and Wintenberger (2024) “Extreme Value Theory for Time Series. Models with Power-Law Tails”. The talk is based on joint work with Olivier Wintenberger (Sorbonne).

12.01.2026 15:00 Christian Meisel:
Phase transitions govern optimal dynamics in deep learning and biological neural networksMI 03.06.011 (Boltzmannstr. 3, 85748 Garching)

The rapid advances in artificial intelligence (AI) have largely been driven by scaling deep neural networks (DNNs) - increasing model size, data, and computational resources. However, performance is ultimately governed by network dynamics. The lack of a principled understanding of DNN dynamics beyond heuristic-based design has contributed to challenges with their robustness, suboptimal performance, high energy consumption and pathologies in continual and AI-generated content learning. In contrast, the human brain does not seem to suffer these problems, and converging evidence suggest that these benefits are achieved by dynamics being poised at a critical phase transition. Inspired by this principle, we propose that criticality provides a unifying framework linking structure, dynamics, and function also in DNNs. First, by analyzing more than 80 state-of-the-art models, we report that a decade of AI progress has implicitly driven successful networks towards criticality – explaining why certain architectures succeeded while others failed. Second, we demonstrate that incorporating criticality explicitly into training improves robustness and accuracy preventing key limitations of current models. Third, we show that catastrophic AI pathologies, including the performance degradation in continual learning and in model collapse - where performance degrades when training on AI-generated data - constitute a loss of critical dynamics. By maintaining networks at criticality, we provide a principled solution to this fundamental AI problem, demonstrating how criticality-based optimization mitigates performance degradation. This work highlights criticality as substrate-independent principle of intelligence, connecting AI advancement with core principles of brain function. It provides theoretical insights along with immediate practical value solving major AI challenges to ensure long-term DNN performance and resilience as models grow in scale and complexity.

12.01.2026 15:15 Johannes Wiesel (University Copenhagen):
Measuring association with Wasserstein distances 2.02.01 (Parkring 11, 85748 Garching)

Let π∈Π(μ,ν) be a coupling between two probability measures μ and ν on a Polish space. In this talk we propose and study a class of nonparametric measures of association between μ and ν, which we call Wasserstein correlation coefficients. These coefficients are based on the Wasserstein distance between ν and the disintegration πx1 of π with respect to the first coordinate. We also establish basic statistical properties of this new class of measures: we develop a statistical theory for strongly consistent estimators and determine their convergence rate in the case of compactly supported measures μ and ν. Throughout our analysis we make use of the so-called adapted/bicausal Wasserstein distance, in particular we rely on results established in [Backhoff, Bartl, Beiglböck, Wiesel. Estimating processes in adapted Wasserstein distance. 2022]. Our approach applies to probability laws on general Polish spaces.

14.01.2026 13:00 Fadoua Balabdaoui (ETH Zürich):
Unmatched linear regression: Asymptotic results under identifiability8101.02.110 / BC1 2.01.10 (Parkring 11, 85748 Garching)

Consider the regression problem where the response and the covariate are unmatched. Under this scenario, we do not have access to pairs of observations from their joint distribution, but instead we have separate data sets of responses and covariates, possibly collected from different sources. We study this problem assuming that the regression function is linear and the noise distribution is known or can be estimated. We introduce an estimator of the regression vector based on deconvolution (the DLSE) and demonstrate its consistency and asymptotic normality under parametric identifiability. Under non-identifiability of the regression vector but identifiability of the distribution of the predictor, we construct an estimator of the latter based on the DLSE and show that it converges to the true distribution of the predictor at the parametric rate in the Wasserstein distance of order 1. We illustrate the theory with several simulation results. \[ \] This talk is based on my joint work with Mona Azadkia, Antonio di Noia and Cecile Durot

19.01.2026 10:15 Dr. Burcu Gürbüz, Johannes-Gutenberg-Universität Mainz:
An SIRS model with waning vaccine efficacy and periodic re-vaccinationMI 03.04.011 (Boltzmannstr. 3, 85748 Garching)

In this study, we extend the classical SIRS (Susceptible-Infectious-Recovered-Susceptible) framework by including a vaccinated compartment (V) to capture waning vaccine efficacy and the effects of periodic re-vaccination. The resulting SIRSV model couples population dynamics with time-dependent vaccination efficacy, formulated as a PDE for continuous vaccination time and as an ODE system under discrete re-vaccination intervals. We analyze the equilibria and the stability of the disease-free state and develop an optimal control framework balancing vaccination rate, re-vaccination timing, and non-pharmaceutical interventions. Numerical continuation and bifurcation analyses reveal rich dynamics, including bistability and multiple bifurcation scenarios, underlining the importance of coordinated vaccination and contact control strategies for effective epidemic management.

https://www.analysis.mathematik.uni-mainz.de/burcu-gurbuz/ or https://burcugurbuz50127267.wordpress.com/

19.01.2026 15:00 Syoiti Ninomiya:
Architectures of high-order deep neural networks and weak approximation schemes for SDEsMI 03.06.011 (Boltzmannstr. 3, 85748 Garching)

New deep neural network architectures based on high-order weak approximation algorithms for stochastic differential equations (SDEs) are proposed. The core of these architectures is formed by high-order weak approximation algorithms of the explicit Runge--Kutta type, in which the approximation is realised solely through iterative compositions and linear combinations of the vector fields of the target SDEs.

20.01.2026 16:30 Sjoerd Dirksen (Utrecht University):
Random hyperplane tessellations and their applications in mathematical data scienceA 027 (Theresienstr. 39, 80333 München)

In my talk I will consider the following question: how many random hyperplanes are needed to uniformly tessellate a given subset of Rn with high probability? In my talk I will present an optimal answer to this question for selected distributions for the random hyperplanes and sketch three applications of these results in the mathematical foundations of data science. First, I will show how to create a fast encoding of any given dataset into a minimal number of bits. Second, I will consider performance guarantees for one-bit compressed sensing methods, which aim to reconstruct a signal from a small number of measurements that are each quantized to a single bit using an efficient analog-to-digital converter. Third, I will discuss implications for the robustness of ReLU neural networks. The talk will be a survey-style presentation for a general mathematical audience. Based on joint works with Shahar Mendelson (ANU Canberra), Alexander Stollenwerk (Louvain), Patrick Finke, Nigel Strachan (Utrecht), Paul Geuchen, Dominik Stöger, Felix Voigtlaender (Eichstätt-Ingolstadt) ___________________________ Invited by Prof. Johannes Maly

26.01.2026 15:00 Florian Kogelbauer:
Slow Spectral Manifolds in Kinetic ModelsMI 03.06.011 (Boltzmannstr. 3, 85748 Garching)

We discuss recent developments around Hilbert's Sixth Problem about the passage from kinetic models to macroscopic fluid equations. We employ the technique of slow spectral closure to rigorously establish the existence of hydrodynamic manifolds in the linear regime and derive new non-local fluid equations for rarefied flows independent of Knudsen number. We show the divergence of the Chapman--Enskog series for an explicit example and apply machine learning to learn the optimal hydrodynamic closure from DSMC and SBGK data. The new dynamically optimal constitutive laws are applied to classical rarefied flow problems and the light scattering experiment.

26.01.2026 16:30 Robin Kaiser:
From the Rotor-Router Model to Locally Markov Walks (Parkring 11, 85748 Garching-Hochbrück)

The rotor-router model is a deterministic process, in which we place an arrow at every vertex of the underlying graph G, which points to one of its neighbours. A particle then moves on our graph, by first turning the rotor at its current location based on a deterministc ruleset, and then moving towards the new direction of the rotor. A natural generalization of this model is then given, by allowing the turn of the rotor to be itself a random outcome, depending only on the current direction of the rotor. This leads us to defining locally Markov walks, which are stochastic processes, whose next step only depends on the last action the particle performed at its current location. In my talk we will thoroughly define the rotor-router model and discuss one of the main conjectures concerning the behaviour of the walkers, which is whether the rotor-router model with initial directions of the rotors chosen uniformly at random is recurrent on the two-dimensional integer grid. We will also introduce locally Markov walks, and discuss some results of locally Markov walks on finite graphs, as well as several open problems to consider for future research.