English

Geometry Meets Vectors: Approximation Algorithms for Multidimensional Packing

Data Structures and Algorithms 2021-06-29 v1

Abstract

We study the generalized multidimensional bin packing problem (GVBP) that generalizes both geometric packing and vector packing. Here, we are given nn rectangular items where the ithi^{\textrm{th}} item has width w(i)w(i), height h(i)h(i), and dd nonnegative weights v1(i),v2(i),,vd(i)v_1(i), v_2(i), \ldots, v_{d}(i). Our goal is to get an axis-parallel non-overlapping packing of the items into square bins so that for all j[d]j \in [d], the sum of the jthj^{\textrm{th}} weight of items in each bin is at most 1. This is a natural problem arising in logistics, resource allocation, and scheduling. Despite being well studied in practice, surprisingly, approximation algorithms for this problem have rarely been explored. We first obtain two simple algorithms for GVBP having asymptotic approximation ratios 6(d+1)6(d+1) and 3(1+ln(d+1)+ε)3(1 + \ln(d+1) + \varepsilon). We then extend the Round-and-Approx (R&A) framework [Bansal-Khan, SODA'14] to wider classes of algorithms, and show how it can be adapted to GVBP. Using more sophisticated techniques, we obtain better approximation algorithms for GVBP, and we get further improvement by combining them with the R&A framework. This gives us an asymptotic approximation ratio of 2(1+ln((d+4)/2))+ε2(1+\ln((d+4)/2))+\varepsilon for GVBP, which improves to 2.919+ε2.919+\varepsilon for the special case of d=1d=1. We obtain further improvement when the items are allowed to be rotated. We also present algorithms for a generalization of GVBP where the items are high dimensional cuboids.

Keywords

Cite

@article{arxiv.2106.13951,
  title  = {Geometry Meets Vectors: Approximation Algorithms for Multidimensional Packing},
  author = {Arindam Khan and Eklavya Sharma and K. V. N. Sreenivas},
  journal= {arXiv preprint arXiv:2106.13951},
  year   = {2021}
}
R2 v1 2026-06-24T03:37:19.659Z