2022
DOI: 10.48550/arxiv.2206.02845
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On Efficient Approximate Queries over Machine Learning Models

Abstract: The question of answering queries over ML predictions has been gaining attention in the database community. This question is challenging because the cost of finding high quality answers corresponds to invoking an oracle such as a human expert or an expensive deep neural network model on every single item in the DB and then applying the query. We develop a novel unified framework for approximate query answering by leveraging a proxy to minimize the oracle usage of finding high quality answers for both Precision… Show more

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References 31 publications
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