2022
DOI: 10.48550/arxiv.2207.12710
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Active Learning of Ordinal Embeddings: A User Study on Football Data

Abstract: Humans innately measure distance between instances in an unlabeled dataset using an unknown similarity function. Distance metrics can only serve as proxy for similarity in information retrieval of similar instances. Learning a good similarity function from human annotations improves the quality of retrievals. This work uses deep metric learning to learn these user-defined similarity functions from few annotations for a large football trajectory dataset. We adapt an entropy-based active learning method with rec… Show more

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References 21 publications
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