2nd Workshop on Continual Learning and Adaptation for Time Evolving Data, CLEATED 2021

  • Decebal Constantin Mocanu (Organiser)
  • Ghada A.Z.N. Sokar (Organiser)
  • Albert Bifet (Organiser)

Activity: Participating in or organising an eventOrganising a conference, workshop, ...

Description

In continual learning, models can continually accumulate knowledge over time without the need to retrain from scratch, with particular methods aimed to alleviate forgetting. It can continually learn from a stream of experiential data, building on what was learnt previously, while being able to reapply, adapt and generalize to new situations. This is particularly important when there are changes in the data streams. Current predictive models need to be adapted to these changes (drifts) as soon as possible while maintaining good performance measures (e.g. accuracy, time, delay, energy efficiency).

The aim of this workshop is to bring together researchers from the areas of continual learning, model adaptation and concept drift in order to encourage discussions and new collaborations on solving the problems in this domain. We like to encourage state-of-the art research in the area of continual learning, model adaptation and concept drift. Beyond that we encourage research that demonstrates the applicability of these research in various areas including (but not limited to) earth and environmental science, sensor networks and transportation network. We encourage the submissions of research that incorporates the fundamentals of green AI. Therefore, this workshop encourages submissions that attempts to address any of these issues.

This workshop will provide a forum for international researchers and practitioners to share and discuss their original and interesting work on addressing new challenges and research issues in the area.
Period7 Dec 2021
Event typeWorkshop
Conference number2
LocationAuckland, New ZealandShow on map
Degree of RecognitionInternational

Keywords

  • continual learning
  • deep learning
  • evolving data