COOKIES: By using this website you agree that we can place Google Analytics Cookies on your device for performance monitoring. |
University of Cambridge > Talks.cam > CCIMI Seminars > STORM: Stochastic Trust Region Framework with Random Models
STORM: Stochastic Trust Region Framework with Random ModelsAdd to your list(s) Download to your calendar using vCal
If you have a question about this talk, please contact Rachel Furner. We will present a very general framework for unconstrained stochastic optimization which is based on standard trust region framework using random models. In particular this framework retains the desirable features such step acceptance criterion, trust region adjustment and ability to utilize of second order models. We make assumptions on the stochasticity that are different from the typical assumptions of stochastic and simulation-based optimization. In particular we assume that our models and function values satisfy some good quality conditions with some probability fixed, but can be arbitrarily bad otherwise. We will analyze the convergence and convergence rates of this general framework and discuss the requirement on the models and function values. We will will contrast our results with existing results from stochastic approximation literature. We will motivate the framework with examples of applications arising the area of machine learning. This talk is part of the CCIMI Seminars series. This talk is included in these lists:
Note that ex-directory lists are not shown. |
Other listsEurostrings 2015 Queens' College Politics Society Heritage Research Group Weekly Seminar Series Engineers Without Borders Panel Talks Central Medieval Graduate Workshop Well-being Institute SeminarsOther talksIdentifying new gene regulating networks in immune cells On Classical Tractability of Quantum Schur Sampling Political Thought, Time and History: An International Conference Solving the Reproducibility Crisis Title to be confirmed Investigation into appropriate statistical models for the analysis and visualisation of data captured in clinical trials using wearable sensors |