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Mingda Qiao
Collaborative PAC Learning
Avrim Blum, Nika Haghtalab, Ariel D. Procaccia, Mingda Qiao
We consider a collaborative PAC learning model, in which k players attempt to learn the same underlying concept. We ask how much more information is required to learn an accurate classifier for all players simultaneously. We refer to the ratio between the sample complexity of collaborative PAC learning and its non-collaborative (single-player) counterpart as the overhead.
Collaborative PAC Learning
Avrim Blum, Nika Haghtalab, Ariel D. Procaccia, Mingda Qiao
We consider a collaborative PAC learning model, in which k players attempt to learn the same underlying concept. We ask how much more information is required to learn an accurate classifier for all players simultaneously. We refer to the ratio between the sample complexity of collaborative PAC learning and its non-collaborative (single-player) counterpart as the overhead.