Inhalt des Dokuments
A dynamical systems approach to outlier robust machine learning
Abstract:
We consider a typical problem of machine learning - the
reconstruction
of probability distributions of observed data. We
introduce the
so-called gradient conjugate prior (GCP) update and
study the induced
dynamical system. We will explain the dynamics
of the parameters and
show how one can use insights from the
dynamical behavior to recover the
ground truth distribution in a
way that is more robust against outliers.
The developed approach
also carries over to neural networks.
This is joint work with
Pavel Gurevich.
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Copyright TU Berlin 2008
https://www3.itp.tu-berlin.de/collaborative_research_center_910/sonderforschungsbereich_910/events/symposia/slow_fast_dynamics_and_applications_30112018/a_dynamical_systems_approach_to_outlier_robust_machine_learning/