\dm_csml_event_details UCL ELLIS

Online Multitask Learning with Long-Term Memory


Speaker

Mark Herbster

Affiliation

University College London

Date

Friday, 12 November 2021

Time

16:00-17:00

Location

Zoom

Link

https://ucl.zoom.us/j/92007296671

Event series

DeepMind/ELLIS CSML Seminar Series

Abstract

We introduce a novel online multitask setting.  In this setting each task is partitioned into a sequence of segments that is unknown to the learner.  Associated with each segment is a hypothesis from some hypothesis class.  We give algorithms that are designed to exploit the scenario where there are many such segments but significantly fewer associated hypotheses.  We prove regret bounds that hold for any segmentation of the tasks and any association of hypotheses to the segments. In the single-task setting this is equivalent to switching with long-term memory in the sense of (Bousquet & Warmuth, 2003).  We provide an algorithm that predicts on each trial in time linear in the number of hypotheses when the hypothesis class is finite.  We also consider infinite hypothesis classes from reproducing kernel Hilbert spaces for which we give an algorithm whose per trial time complexity is cubic in the number of cumulative trials.  In the single-task special case this is the first example of an efficient regret-bounded switching algorithm with long-term memory for a non-parametric hypothesis class.

Biography