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Lower the Barrier of Machine Learning: Meta Learning for Transfer Learning and AutoML
PhD Thesis Proposal Defence
Title: "Lower the Barrier of Machine Learning: Meta Learning for
Transfer Learning and AutoML"
by
Mr. Wenyuan DAI
Abstract:
Recent years, machine learning becomes the main methodology to develop
artificial intelligence technology. However, traditional machine learning
may face to three barriers: lack of data, poor feature quality, and less
data scientists. In this thesis, we focus on how to lower the barrier of
machine learning. We propose to use meta learning methodology to solve
these problems. Specifically, meta learning can be applied to improve
machine learning performance in transfer learning and AutoML scenarios,
and lower the three main barriers correspondingly. We designed several new
algorithms to solve the data, feature and model tuning problems, and
showed advantages on many empirical studies.
Date: Tuesday, 10 September 2019
Time: 2:00pm - 4:00pm
Venue: Room 5501
lifts 25/26
Committee Members: Prof. Qiang Yang (Supervisor)
Dr. Yangqiu Song (Chairperson)
Dr. Kai Chen
Dr. Qifeng Chen
**** ALL are Welcome ****