Different valid temporal partitions of the same streaming dataset can produce materially different rankings and performance numbers for continual learning methods.
Proceedings of the 26th Annual International Conference on Machine Learning (ICML) , pages =
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Temporal Taskification in Streaming Continual Learning: A Source of Evaluation Instability
Different valid temporal partitions of the same streaming dataset can produce materially different rankings and performance numbers for continual learning methods.