Why only Micro-F1? Class Weighting of Measures for Relation Classification
Abstract
A new framework for weighting schemes in relation classification highlights model strengths and weaknesses by reporting results across different schemes, particularly useful for imbalanced datasets.
Relation classification models are conventionally evaluated using only a single measure, e.g., micro-F1, macro-F1 or AUC. In this work, we analyze weighting schemes, such as micro and macro, for imbalanced datasets. We introduce a framework for weighting schemes, where existing schemes are extremes, and two new intermediate schemes. We show that reporting results of different weighting schemes better highlights strengths and weaknesses of a model.
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