English

Approximation Schemes for Multiperiod Binary Knapsack Problems

Data Structures and Algorithms 2021-04-02 v1

Abstract

An instance of the multiperiod binary knapsack problem (MPBKP) is given by a horizon length TT, a non-decreasing vector of knapsack sizes (c1,,cT)(c_1, \ldots, c_T) where ctc_t denotes the cumulative size for periods 1,,t1,\ldots,t, and a list of nn items. Each item is a triple (r,q,d)(r, q, d) where rr denotes the reward of the item, qq its size, and dd its time index (or, deadline). The goal is to choose, for each deadline tt, which items to include to maximize the total reward, subject to the constraints that for all t=1,,Tt=1,\ldots,T, the total size of selected items with deadlines at most tt does not exceed the cumulative capacity of the knapsack up to time tt. We also consider the multiperiod binary knapsack problem with soft capacity constraints (MPBKP-S) where the capacity constraints are allowed to be violated by paying a penalty that is linear in the violation. The goal is to maximize the total profit, i.e., the total reward of selected items less the total penalty. Finally, we consider the multiperiod binary knapsack problem with soft stochastic capacity constraints (MPBKP-SS), where the non-decreasing vector of knapsack sizes (c1,,cT)(c_1, \ldots, c_T) follow some arbitrary joint distribution but we are given access to the profit as an oracle, and we choose a subset of items to maximize the total expected profit, i.e., the total reward less the total expected penalty. For MPBKP, we exhibit a fully polynomial-time approximation scheme with runtime O~(min{n+T3.25ϵ2.25,n+T2ϵ3,nTϵ2,n2ϵ})\tilde{\mathcal{O}}\left(\min\left\{n+\frac{T^{3.25}}{\epsilon^{2.25}},n+\frac{T^{2}}{\epsilon^{3}},\frac{nT}{\epsilon^2},\frac{n^2}{\epsilon}\right\}\right) that achieves (1+ϵ)(1+\epsilon) approximation; for MPBKP-S, the (1+ϵ)(1+\epsilon) approximation can be achieved in O(nlognϵmin{Tϵ,n})\mathcal{O}\left(\frac{n\log n}{\epsilon}\cdot\min\left\{\frac{T}{\epsilon},n\right\}\right); for MPBKP-SS, a greedy algorithm is a 2-approximation when items have the same size.

Keywords

Cite

@article{arxiv.2104.00034,
  title  = {Approximation Schemes for Multiperiod Binary Knapsack Problems},
  author = {Zuguang Gao and John R. Birge and Varun Gupta},
  journal= {arXiv preprint arXiv:2104.00034},
  year   = {2021}
}