Research talk: Bucket of me: Using few-shot learning to realize teachable AI systems

Subscribers:
344,000
Published on ● Video Link: https://www.youtube.com/watch?v=WpvOkIJjg-A



Duration: 19:57
247 views
0


Speaker: Daniela Massiceti, Senior Researcher, Microsoft Research

We’re entering a technological era that is all about “me”—from personalized shopping recommendations to avatars, and even bespoke healthcare treatments. Deeper inspection of artificial intelligence (AI) systems, however, reveals that “me” is not really me. The coarse-grained ways that AI systems classify people has a significant impact on millions whose complex identities do not easily fit into a predefined bucket. Join Microsoft Researcher Daniela Massiceti in exploring how few-shot learning can realize a vision of teachable AI, giving users the agency to curate their own “bucket of me.” We will discuss recent advances in few-shot learning that now make it feasible to personalize a model using just the data a user selects about themselves. We invite researchers across machine learning and human-computer interaction to join in this vision through using a newly released real-world dataset for teachable object recognition collected by people who are blind or have low vision. Together, we’ll explore the vision of teachable AI systems, how we can leverage advances in few-shot learning to realize them, and how a new teachable benchmark and dataset can be a call to action in this space.

Learn more about the 2021 Microsoft Research Summit: https://Aka.ms/researchsummit




Other Videos By Microsoft Research


2022-02-08Closing remarks: Responsible AI
2022-02-08Opening remarks: The Future of Privacy and Security
2022-02-08Tutorial: Create human-centered AI with the Human-AI eXperience (HAX) Toolkit
2022-02-08Panel: Maximizing benefits and minimizing harms with language technologies
2022-02-08Lightning talks: Advances in fairness in AI: New directions
2022-02-08Closing remarks: Tech for resilient communities
2022-02-08Lightning talks: Advances in fairness in AI: From research to practice
2022-02-08Panel: Content moderation beyond the ban: Reducing toxic, misleading, and low-quality content
2022-02-08Technology demo: Using technology to combat human trafficking
2022-02-08Technology demo: Project Eclipse: Hyperlocal air quality monitoring for cities
2022-02-08Research talk: Bucket of me: Using few-shot learning to realize teachable AI systems
2022-02-08Tutorial: Best practices for prioritizing fairness in AI systems
2022-02-08Demo: RAI Toolbox: An open-source framework for building responsible AI
2022-02-08Opening remarks: Responsible AI
2022-02-08Closing remarks: Deep Learning and Large Scale AI
2022-02-08Roundtable discussion: Beyond language models: Knowledge, multiple modalities, and more
2022-02-08Research talk: Closing the loop in natural language interfaces to relational databases
2022-02-08Just Tech: Bringing CS, the social sciences, and communities together for societal resilience
2022-02-08Research talk: WebQA: Multihop and multimodal
2022-02-08Opening remarks: Tech for resilient communities
2022-02-08Research talk: Towards Self-Learning End-to-end Dialog Systems



Tags:
fair AI systems
reliable AI systems
responsible AI
social inequities in AI
societal implications of AI
societal impact
machine learning
natural language processing
microsoft research summit