Hans Rudolf Künsch: Robust estimation of fixed parameters in state space models

Hans Rudolf Künsch (Department of Mathematics, Swiss Federal Institute of Technology of Zurich, SUI) will give a talk on January 18th at 14:15 in the Erling Sverdrups plass, Niels Henrik Abels hus, 8th floor.

Hans Rudolf Künsch is Professor Emeritus at the Department of Mathematics of the Swiss Federal Institute of Technology of Zurich (SUI).

Title: Robust estimation of fixed parameters in state space models

Abstract: A state-space model consists of a latent state process $(X_t)$ with Markovian dynamics and a sequence of conditionally independent partial and noisy observations $Y_t$ of $X_t$. Such models are used in many applications, e.g. ecology, finance or engineering. Often the transition density of $(X_t)$ and/or the conditional density of $Y_t$ given $X_t$ contain unknown fixed parameters.  In this talk I consider robust estimation methods for such parameters, that is methods which are stable under small deviations from the nominal model. For this, the joint likelihood of states and observations is robustified by reducing the contribution of pairs $(X_{t-1}, X_t)$ and $(X_t, Y_t)$ with low likelihood.  I will discuss the computation of the robustified marginal likelihood, the correction required for Fisher consistency and the robustness properties of the resulting estimator. For the last point I use the influence functional as defined in Martin and Yohai (1986). The method is illustrated with data assessing the abundance of North Sea pollock.

Joint work with William Aeberhard, Eva Cantoni, Chris Field, Joanna Fleming and Ximin Xu.

Download the flyer here.

Tags: Seminar Series in Statistics and Data Science
Published Jan. 4, 2019 12:30 PM - Last modified Feb. 6, 2019 11:10 AM