Logo: University of Southern California

Events Calendar


  • Seminar will be exclusively online (no in-room presentation) - CS Colloquium: Yuxiong Wang (Carnegie Mellon University) - Learning to Learn More with Less

    Thu, Apr 09, 2020 @ 11:00 AM - 12:00 PM

    Thomas Lord Department of Computer Science

    Conferences, Lectures, & Seminars


    Speaker: Yuxiong Wang, Carnegie Mellon University

    Talk Title: Learning to Learn More with Less

    Series: CS Colloquium

    Abstract: Understanding how humans and machines learn from few examples remains a fundamental challenge. Humans are remarkably able to grasp a new concept from just few examples, or learn a new skill from just few trials. By contrast, state-of-the-art machine learning techniques typically require thousands of training examples and often break down if the training sample set is too small.

    In this talk, I will discuss our efforts towards endowing visual learning systems with few-shot learning ability. Our key insight is that the visual world is well structured and highly predictable in feature, data, and model spaces. Such structures and regularities enable the systems to learn how to learn new tasks rapidly by reusing previous experience. I will focus on two topics to demonstrate how to leverage this idea of learning to learn, or meta-learning, to address a broad range of few-shot learning tasks: task-oriented generative modeling and meta-learning in model space. I will also discuss some ongoing work towards building machines that are able to operate in highly dynamic and open environments, making intelligent and independent decisions based on limited information.

    This lecture satisfies requirements for CSCI 591: Research Colloquium

    Biography: Yuxiong Wang is a postdoctoral fellow in the Robotics Institute at Carnegie Mellon University. He received a Ph.D. in robotics from Carnegie Mellon University under the supervision of Martial Hebert in 2018. His research interests lie in computer vision, machine learning, and robotics, with a particular focus on few-shot learning and meta-learning. He has spent time at Facebook AI Research (FAIR), and has collaborated with researchers in other institutions, including NYU, UIUC, UC Berkeley, Cornell University, INRIA (France), and CSIC-UPC (Spain).

    Host: Ramakant Nevatia

    Location: Seminar will be exclusively online (no in-room presentation)

    Audiences: Everyone Is Invited

    Contact: Assistant to CS chair

    Add to Google CalendarDownload ICS File for OutlookDownload iCal File

Return to Calendar