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arxiv: 1810.13296 · v1 · pith:JLXNRBZ3new · submitted 2018-10-31 · 📊 stat.ML · cs.LG

On Exploration, Exploitation and Learning in Adaptive Importance Sampling

classification 📊 stat.ML cs.LG
keywords daiseeimportancesamplingadaptiveexploitationexplorationlearningadaptation
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We study adaptive importance sampling (AIS) as an online learning problem and argue for the importance of the trade-off between exploration and exploitation in this adaptation. Borrowing ideas from the bandits literature, we propose Daisee, a partition-based AIS algorithm. We further introduce a notion of regret for AIS and show that Daisee has $\mathcal{O}(\sqrt{T}(\log T)^{\frac{3}{4}})$ cumulative pseudo-regret, where $T$ is the number of iterations. We then extend Daisee to adaptively learn a hierarchical partitioning of the sample space for more efficient sampling and confirm the performance of both algorithms empirically.

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  1. Multi-Armed Sampling Problem and the End of Exploration

    cs.LG 2025-07 conditional novelty 8.0

    Multi-armed sampling framework shows near-optimal regret is achievable with minimal exploration, unlike bandits, and unifies both via a continuous temperature family.