Active Seriation: Efficient Ordering Recovery with Statistical Guarantees
Abstract
Active seriation aims at recovering an unknown ordering of n items by adaptively querying pairwise similarities. The observations are noisy measurements of entries of an underlying n x n permuted Robinson matrix, whose permutation encodes the latent ordering. The framework allows the algorithm to start with partial information on the latent ordering, including seriation from scratch as a special case. We propose an active seriation algorithm that provably recovers the latent ordering with high probability. Under a uniform separation condition on the similarity matrix, optimal performance guarantees are established, both in terms of the probability of error and the number of observations required for successful recovery.
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