ProtoBandit: Efficient Prototype Selection via Multi-Armed Bandits

In this work, we propose a multi-armed bandit-based framework for identifying a compact set of informative data instances (i.e., the prototypes) from a source dataset that best represents a given target set . Prototypical examples of a given dataset offer interpretable insights into the underlying data distribution and assist in example-based reasoning, thereby influencing every sphere of human decision-making. Current state-of-the-art prototype selection approaches require similarity comparisons between source and target data points, which becomes prohibitively expensive for large-scale settings. We propose to mitigate this limitation by employing stochastic greedy search in the space of prototypical examples and multi-armed bandits for reducing the number of similarity comparisons. Our randomized algorithm, ProtoBandit, identifies a set of prototypes incurring similarity comparisons, which is independent of the size of the target set. An interesting outcome of our analysis is for the -medoids clustering problem setting) in which we show that our algorithm ProtoBandit approximates the BUILD step solution of the partitioning around medoids (PAM) method in complexity. Empirically, we observe that ProtoBandit reduces the number of similarity computation calls by several orders of magnitudes ( times) while obtaining solutions similar in quality to those from state-of-the-art approaches.
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