Toward Scientific Workflows in a Serverless World
Aakash Khochare, Yogesh Simmhan, et al.
eScience 2022
Recently, sample complexity bounds have been derived for problems involving linear functions such as neural networks and support vector machines. In many of these theoretical studies, the concept of covering numbers played an important role. It is thus useful to study covering numbers for linear function classes. In this paper, we investigate two closely related methods to derive upper bounds on these covering numbers. The first method, already employed in some earlier studies, relies on the so-called Maurey's lemma; the second method uses techniques from the mistake bound framework in online learning. We compare results from these two methods, as well as their consequences in some learning formulations.
Aakash Khochare, Yogesh Simmhan, et al.
eScience 2022
Zahra Ashktorab, Djallel Bouneffouf, et al.
IJCAI 2025
Rakesh Mohan, Ramakant Nevatia
IEEE Transactions on Pattern Analysis and Machine Intelligence
Rocco Langone, Carlos Alzate, et al.
SSCI 2013