Large-scale Kernel Methods and Applications to Lifelong Robot Learning
Raffaello Camoriano

TL;DR
This paper investigates scalable kernel methods for large datasets, analyzes approximation schemes, and applies these techniques to enable lifelong robot learning with the iCub humanoid robot, demonstrating improved efficiency and adaptability.
Contribution
It provides a comprehensive analysis of approximation schemes for large-scale kernel learning and introduces algorithms for lifelong robot learning that adapt to changing environments.
Findings
Approximate kernel methods scale effectively to large datasets.
Theoretical analysis links statistical properties with computational efficiency.
Algorithms enable robots to learn continuously and adapt in real-time.
Abstract
As the size and richness of available datasets grow larger, the opportunities for solving increasingly challenging problems with algorithms learning directly from data grow at the same pace. Consequently, the capability of learning algorithms to work with large amounts of data has become a crucial scientific and technological challenge for their practical applicability. Hence, it is no surprise that large-scale learning is currently drawing plenty of research effort in the machine learning research community. In this thesis, we focus on kernel methods, a theoretically sound and effective class of learning algorithms yielding nonparametric estimators. Kernel methods, in their classical formulations, are accurate and efficient on datasets of limited size, but do not scale up in a cost-effective manner. Recent research has shown that approximate learning algorithms, for instance random…
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Taxonomy
TopicsGaussian Processes and Bayesian Inference · Machine Learning and Algorithms · Sparse and Compressive Sensing Techniques
