Weekly Bulletin

The FIM provides a Newsletter called FIM Weekly Bulletin, which is a selection of the mathematics seminars and lectures taking place at ETH Zurich and at the University of Zurich. It is sent by e-mail every Tuesday during the semester, or can be accessed here on this website at any time.

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FIM Weekly Bulletin

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Monday, 20 June
Time Speaker Title Location
14:15 - 16:15 Martin Drees
Universität Bonn, D
Abstract
IFOR talks
Simplifying the Karlin-Klein-Oveis Gharan Analysis for a Better-Than-3/2 Approximation for TSP
HG G 19.2
17:30 - 18:45 Prof. Dr. Marc Levine
Universität Duisburg-Essen
Abstract
Algebraic Geometry and Moduli Seminar
Equivariant localization in quadratic enumerative geometry
Zoom
Tuesday, 21 June
— no events scheduled —
Wednesday, 22 June
Time Speaker Title Location
15:15 - 16:15 Rainer von Sachs
UC Louvain
Abstract
In this talk we treat statistical inference for an intrinsic wavelet estimator of curves of symmetric positive definite (SPD) matrices in a log-Euclidean manifold. Examples for these arise in Diffusion Tensor Imaging or related medical imaging problems as well as in computer vision and for neuroscience problems. Our proposed wavelet (kernel) estimator preserves positive-definiteness and enjoys permutation-equivariance, which is particularly relevant for covariance matrices. Our second-generation wavelet estimator is based on average-interpolation and allows the same powerful properties, including fast algorithms, known from nonparametric curve estimation with wavelets in standard Euclidean set-ups. The core of our work is the proposition of confidence sets for our high-level wavelet estimator in a non-Euclidean geometry. We derive asymptotic normality of this estimator, including explicit expressions of its asymptotic variance. This opens the door for constructing asymptotic confidence regions which we compare with our proposed bootstrap scheme for inference. Detailed numerical simulations confirm the appropriateness of our suggested inference schemes. This is joint work with Johannes Krebs, Eichstätt, and Daniel Rademacher, Heidelberg.
Research Seminar in Statistics
Statistical inference for intrinsic wavelet estimators of covariance matrices in a log-Euclidean manifold
HG G 19.1
Thursday, 23 June
Time Speaker Title Location
17:15 - 18:15 Prof. Dr. Ying Chen
National University of Singapore
Abstract
We propose a deep switching state space model (DS3M) for efficient inference and forecasting of nonlinear time series with irregularly switching among various regimes. The switching among regimes is captured by both discrete and continuous latent variables with recurrent neural networks. The model is estimated with variational inference using a reparameterization trick. We test the approach on a variety of simulated and real datasets. In all cases, achieves competitive performance compared to several state-of-the-art methods (e.g. GRU, SRNN, DSARF, SNLDS), with superior forecasting accuracy, convincing interpretability of the discrete latent variables, and powerful representation of the continuous latent variables for different kinds of time series. Specifically, the MAPE values increase by 0.09% to 15.71% against the second-best performing alternative models. This is a joint work with Xiuqin Xu. https://arxiv.org/abs/2106.02329
Talks in Financial and Insurance Mathematics
Deep Switching State Space Model (DS3M) for Nonlinear Time Series Forecasting with Regime Switching
HG G 43
Friday, 24 June
— no events scheduled —
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