A Policy for Early Sequence Classification
Cao, Alexander, Utke, Jean, Klabjan, Diego
–arXiv.org Artificial Intelligence
Sequences are often not received in their entirety at once, but instead, received incrementally over time, element by element. Early predictions yielding a higher benefit, one aims to classify a sequence as accurately as possible, as soon as possible, without having to wait for the last element. For this early sequence classification, we introduce our novel classifier-induced stopping. While previous methods depend on exploration during training to learn when to stop and classify, ours is a more direct, supervised approach. Our classifier-induced stopping achieves an average Pareto frontier AUC increase of 11.8% over multiple experiments.
arXiv.org Artificial Intelligence
Apr-6-2023
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