Poster
Multi-label Multiple Kernel Learning by Stochastic Approximation: Application to Visual Object Recognition
Serhat S Bucak · Rong Jin · Anil K Jain
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Abstract
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Abstract:
Recent studies have shown that multiple kernel learning is very
effective for object recognition, leading to the popularity
of kernel learning in computer vision problems. In
this work, we develop an efficient algorithm for multi-label
multiple kernel learning (ML-MKL). We assume that all the classes under
consideration share the same combination of kernel functions, and the
objective is to find the optimal kernel combination that benefits
all the classes. Although several algorithms have been developed for
ML-MKL, their computational cost is linear in the number of classes,
making them unscalable when the number of classes is large, a challenge
frequently encountered in visual object recognition. We address this computational
challenge by developing a framework for ML-MKL that combines
the worst-case analysis with stochastic approximation. Our analysis shows
that the complexity of our algorithm is $O(m^{1/3}\sqrt{ln m})$,
where $m$ is the number of classes. Empirical studies with object
recognition show that while achieving similar classification
accuracy, the proposed method is significantly more efficient
than the state-of-the-art algorithms for ML-MKL.
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