Toward industrial use of continual learning: new metrics proposal for class incremental learning

MA Konaté, AF Yao, T Chateau… - 2023 International Joint …, 2023 - ieeexplore.ieee.org
MA Konaté, AF Yao, T Chateau, P Bouges
2023 International Joint Conference on Neural Networks (IJCNN), 2023ieeexplore.ieee.org
In this paper, we investigate continual learning performance metrics used in class
incremental learning strategies for continual learning (CL) using some high performing
methods. We investigate especially mean task accuracy. First, we show that it lacks of
expressiveness through some simple experiments to capture performance. We show that
monitoring average tasks performance is over optimistic and can lead to misleading
conclusions for future real life industrial uses. Then, we propose first a simple metric …
In this paper, we investigate continual learning performance metrics used in class incremental learning strategies for continual learning (CL) using some high performing methods. We investigate especially mean task accuracy. First, we show that it lacks of expressiveness through some simple experiments to capture performance. We show that monitoring average tasks performance is over optimistic and can lead to misleading conclusions for future real life industrial uses. Then, we propose first a simple metric, Minimal Incremental Class Accuracy (MICA) which gives a fair and more useful evaluation of different continual learning methods. Moreover, in order to provide a simple way to easily compare different methods performance in continual learning, we derive another single scalar metric that take into account the learning performance variation as well as our newly introduced metric.
ieeexplore.ieee.org
Showing the best result for this search. See all results