Speaker: Prof. Kai-Wei Chang, UCLA
Time:2024.08.27
(Tue) 14:00
Location:自強校區啟端館1樓智慧階梯教室
(96112)
Title: From Learning through Labels to Learning
through Language
Abstract:
Over the past few decades, machine learning has predominantly
relied on labeled data. Achieving high performance has depended on the
availability of vast, high-quality annotated training data, as well as the
assumption that the test conditions are identical to the training conditions.
However, it's noteworthy that humans don't learn from hundreds of thousands of
annotated samples, but often learn from conceptual explanations, instructions,
and contextual understanding. With the advancement of large language models, AI
agents can now understand descriptions and follow instructions. Therefore, we
investigate how to empower AI agents to learn from natural language narratives
and multimodal interactions with humans, making them more adaptable to rapidly
changing environments.
In this talk, I will showcase our journey of developing object recognition
models that can absorb knowledge from rich natural language descriptions to
recognize new objects. I will further discuss how to use language to steer
language models and text-to-image models, enhancing their inclusivity and
robustness. Finally, I will conclude the talk by discussing future directions and potential challenges
in empowering models to learn through language.
Biography:
Kai-Wei Chang is
an Associate Professor in the Department of Computer Science at the
University of California Los Angeles and an Amazon Scholar at Amazon AGI. His
research interests include designing trustworthy natural language
processing systems and developing multimodal models for vision-language
applications. Kai-Wei has published broadly in NLP, AI, and
ML. His awards include the Sloan Fellow (2021), AAAI Senior Member
(2023), EMNLP Best Long Paper Award (2017), and KDD Best Paper Award
(2010). He is elected as a Vice President-Elect of SIGDAT, the organizer
running EMNLP. Kai-Wei obtained his Ph.D. from the University of
Illinois at Urbana-Champaign in 2015 and was a post-doctoral researcher at Microsoft
Research in 2016. Additional information is available at http://kwchang.net
瀏覽數:30
公告類型: 公告/演講及活動
公告狀態: 一般
公告人員: 系辦
公告日期: 2024 / 08 / 23 14:25
更新日期: 2024 / 08 / 23 14:25