Leda Sari, Samuel Thomas, et al.
ICASSP 2020
The online meta-learning framework is designed for the continual lifelong learning setting. It bridges two fields: meta-learning which tries to extract prior knowledge from past tasks for fast learning of future tasks, and online-learning which tackles the sequential setting where problems are revealed one by one. In this paper, we generalize the original framework from convex to non-convex setting, and introduce the local regret as the alternative performance measure. We then apply this framework to stochastic settings, and show theoretically that it enjoys a logarithmic local regret, and is robust to any hyperparameter initialization. The empirical test on a real-world task demonstrates its superiority compared with traditional methods.
Leda Sari, Samuel Thomas, et al.
ICASSP 2020
Ioannis Tsaknakis, Mingyi Hong, et al.
ICASSP 2020
Chao Han Yang, Jun Qi, et al.
ICASSP 2020
George Saon, Zoltan Tuske, et al.
ICASSP 2020