Frontiers in Machine Learning: Learning from Limited Labeled Data: Challenges and Opportunities for NLP

Modern machine learning applications have enjoyed a great boost utilizing neural networks models, allowing them to achieve state-of-the-art results on a wide range of tasks. Such models, however, require large amounts of annotated data for training. In many real-world scenarios, such data is of limited availability making it difficult to translate these gains into real-world impact. Collecting large amounts of annotated data is often difficult or even infeasible due to the time and expense of labelling data and the private and personal nature of some of these datasets. This session will discuss several approaches to address the labelled data scarcity. In particular, the session will discuss work on: (1) transfer learning techniques that can transfer knowledge between different domains or languages to reduce the need for annotated data; (2) weakly-supervised learning where distant or heuristic supervision is derived from the data itself or other available metadata; (3) and techniques which learn from user interactions or other reward signals directly with techniques such as reinforcement learning. The discussion will be grounded on real-world applications where we aspire to bring AI experiences quickly and efficiently to everyone in more tasks, markets, languages, and domains.

Session Lead: Ahmed Hassan Awadallah, Microsoft

Speaker: Ahmed Hassan Awadallah, Microsoft
Talk Title: Bringing AI Experiences to Everyone

Speaker: Marti Hearst, University of California, Berkeley
Talk Title: Summarization without the Summaries

Speaker: Graham Neubig, Carnegie Mellon University
Talk Title: Lessons from the Long Tail: Methods for NLP in the Next 1,000 Languages

Speaker: Alex Ratner, University of Washington
Talk Title: ML Development with Weak Supervision: Notes from the Field

Q&A panel with all 4 speakers

Date:
Haut-parleurs:
Ahmed Hassan Awadallah, Marti Hearst, Graham Neubig, Alex Ratner
Affiliation:
Microsoft Research, University of California Berkeley, Carnegie Mellon University, University of Washington