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 budgeted stream-based active learning


Budgeted stream-based active learning via adaptive submodular maximization

Neural Information Processing Systems

Active learning enables us to reduce the annotation cost by adaptively selecting unlabeled instances to be labeled. For pool-based active learning, several effective methods with theoretical guarantees have been developed through maximizing some utility function satisfying adaptive submodularity. In contrast, there have been few methods for stream-based active learning based on adaptive submodularity. In this paper, we propose a new class of utility functions, policy-adaptive submodular functions, and prove this class includes many existing adaptive submodular functions appearing in real world problems. We provide a general framework based on policy-adaptive submodularity that makes it possible to convert existing pool-based methods to stream-based methods and give theoretical guarantees on their performance. In addition we empirically demonstrate their effectiveness comparing with existing heuristics on common benchmark datasets.


Reviews: Budgeted stream-based active learning via adaptive submodular maximization

Neural Information Processing Systems

Pros: The presentation is mostly clear. The paper shows that one can apply the proposed streaming algorithm, without changing the commonly used objective functions used in pool-based active learning setting. Proofs are sound, and experimental results show that the proposed algorithms work reasonably well in comparison with the pool-based setting. Cons: The stream-based adaptive sensor placement application does not appear convincing to me. Is the condition range(\pi) \subseteq V \setminus B in Def 3.1 necessary? Policy-adaptive submodularity is used for providng a lower bound on the expected gain of a policy on a random sequence of data points (Lemma B.7).


Budgeted stream-based active learning via adaptive submodular maximization

Fujii, Kaito, Kashima, Hisashi

Neural Information Processing Systems

Active learning enables us to reduce the annotation cost by adaptively selecting unlabeled instances to be labeled. For pool-based active learning, several effective methods with theoretical guarantees have been developed through maximizing some utility function satisfying adaptive submodularity. In contrast, there have been few methods for stream-based active learning based on adaptive submodularity. In this paper, we propose a new class of utility functions, policy-adaptive submodular functions, and prove this class includes many existing adaptive submodular functions appearing in real world problems. We provide a general framework based on policy-adaptive submodularity that makes it possible to convert existing pool-based methods to stream-based methods and give theoretical guarantees on their performance. In addition we empirically demonstrate their effectiveness comparing with existing heuristics on common benchmark datasets.