Rudra M. Tripathy, Amitabha Bagchi, et al.
Intelligent Data Analysis
Satyen Kale from IBM T.J. Watson Research Center shares his views on the commentary entitled 'online optimization with gradual variations'. The commentary is a result of the combination of two papers where both explore whether it is possible to obtain regret bounds in various online learning settings that depend on some notion of variation in the costs instead of the number of period. These papers give similar algorithms for this problem and obtain very similar results, despite the analysis being different. A group of researchers gives a unified framework to obtain such regret bounds for three specific cases of convex optimization (OCO), such as online linear optimization, online learning with experts, and online expconcave optimization, while another group of researchers gives two algorithms obtaining such regret bounds for general online OCO.
Rudra M. Tripathy, Amitabha Bagchi, et al.
Intelligent Data Analysis
Ora Nova Fandina, Eitan Farchi, et al.
AAAI 2026
Youssef Mroueh, Apoorva Nitsure
TMLR
Kazuaki Ishizaki, Takeshi Ogasawara, et al.
VEE 2012