Online Sparse Passive Aggressive Learning With Kernels
Speaker (s):

LU Jing
PhD Candidate
School of Information Systems
Singapore Management University
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Date:
Time:
Venue:
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April 28, 2016, Thursday
10:00am - 10:30am
Meeting Room 4.4, Level 4 School of Information Systems Singapore Management University
80 Stamford Road Singapore 178902
We look forward to seeing you at this research seminar.

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About the Talk
Conventional online kernel methods often yield an unbounded large number of support vectors, making them inefficient and non-scalable for large-scale applications. Recent studies on bounded kernel-based online learning have attempted to overcome this shortcoming. Although they can bound the number of support vectors at each iteration, most of them fail to bound the number of support vectors for the final output solution which is often obtained by averaging the series of solutions over all the iterations. In this paper, we propose a novel kernel-based online learning method, Sparse Passive Aggressive learning (SPA), which can output a final solution with a bounded number of support vectors. The key idea of our method is to explore an efficient stochastic sampling strategy, which turns an example into a new support vector with some probability that depends on the loss suffered by the example. We theoretically prove that the proposed SPA algorithm achieves an optimal regret bound in expectation, and empirically show that the new algorithm outperforms various bounded kernel-based online learning algorithms.
This a pre-conference talk for 2016 SIAM International Conference on Data Mining.
About the Speaker
LU Jing is a PhD candidate in School of Information Systems, Singapore Management University. She joined SMU in 2014, and is supervised by Associate Professor Steven C.H. Hoi. Her research interests include machine learning, online learning, learning with kernels, and their applications, with specific focus on designing scalable algorithms for large scale data analytics.