Stochastic Knapsack: Semi-Adaptivity Gaps and Improved Approximation
Zohar Barak, Inbal Talgam-Cohen

TL;DR
This paper investigates the adaptivity gap in stochastic knapsack problems, providing tighter bounds and a new framework for understanding how limited adaptivity compares to full adaptivity in decision-making.
Contribution
It improves bounds on the adaptivity gap and introduces a semi-adaptivity framework to analyze the effectiveness of limited adaptive queries.
Findings
Tighter bounds on the adaptivity gap in stochastic knapsack.
Quantification of semi-adaptivity gaps for limited queries.
Development of a new analytical approach for adaptive decision trees.
Abstract
In stochastic combinatorial optimization, algorithms differ in their adaptivity: whether or not they query realized randomness and adapt to it. Dean et al. (FOCS '04) formalize the adaptivity gap, which compares the performance of fully adaptive policies to that of non-adaptive ones. We revisit the fundamental Stochastic Knapsack problem of Dean et al., where items have deterministic values and independent stochastic sizes. A policy packs items sequentially, stopping at the first knapsack overflow or before. We focus on the challenging risky variant, in which an overflow forfeits all accumulated value, and study the problem through the lens of semi-adaptivity: We measure the power of adaptive queries for constant through the notions of - semi-adaptivity gap (the gap between -semi-adaptive and non-adaptive policies), and - semi-adaptivity gap (between fully…
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Taxonomy
TopicsOptimization and Search Problems · Constraint Satisfaction and Optimization · Optimization and Packing Problems
