Cost Effective Active Search
–Neural Information Processing Systems
We study a special paradigm of active learning, called cost effective active search, where the goal is to find a given number of positive points from a large unlabeled pool with minimum labeling cost. Most existing methods solve this problem heuristically, and few theoretical results have been established. We adopt a principled Bayesian approach for the first time. We first derive the Bayesian optimal policy and establish a strong hardness result: the optimal policy is hard to approximate, with the best-possible approximation ratio lower bounded by \Omega(n {0.16}) . We then propose an efficient and nonmyopic policy using the negative Poisson binomial distribution.
Neural Information Processing Systems
Oct-11-2024, 02:37:14 GMT
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