Hardness of Approximation for Strip Packing

Author:

Adamaszek Anna1,Kociumaka Tomasz2,Pilipczuk Marcin2,Pilipczuk Michał2

Affiliation:

1. University of Copenhagen, København Ø, Denmark

2. University of Warsaw, Warsaw, Poland

Abstract

Strip packing is a classical packing problem, where the goal is to pack a set of rectangular objects into a strip of a given width, while minimizing the total height of the packing. The problem has multiple applications, for example, in scheduling and stock-cutting, and has been studied extensively. When the dimensions of the objects are allowed to be exponential in the total input size, it is known that the problem cannot be approximated within a factor better than 3/2, unless P= NP. However, there was no corresponding lower bound for polynomially bounded input data. In fact, Nadiradze and Wiese [SODA 2016] have recently proposed a (1.4 + ϵ)-approximation algorithm for this variant, thus showing that strip packing with polynomially bounded data can be approximated better than when exponentially large values are allowed in the input. Their result has subsequently been improved to a (4/3 + ϵ)-approximation by two independent research groups [FSTTCS 2016, WALCOM 2017]. This raises a question whether strip packing with polynomially bounded input data admits a quasi-polynomial time approximation scheme, as is the case for related two-dimensional packing problems like maximum independent set of rectangles or two-dimensional knapsack. In this article, we answer this question in negative by proving that it is NP-hard to approximate strip packing within a factor better than 12/11, even when restricted to polynomially bounded input data. In particular, this shows that the strip packing problem admits no quasi-polynomial time approximation scheme, unless NP} ⊑ DTIME(2 polylog (n) ).

Funder

Foundation for Polish Science

Danish Council for Independent Research

Polish National Science Centre

Publisher

Association for Computing Machinery (ACM)

Subject

Computational Theory and Mathematics,Theoretical Computer Science

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1. Peak Demand Minimization via Sliced Strip Packing;Algorithmica;2023-07-27

2. A Tight $$(3/2+\varepsilon )$$-Approximation for Skewed Strip Packing;Algorithmica;2023-05-10

3. The rectangular two-dimensional strip packing problem real-life practical constraints: A bibliometric overview;Computers & Operations Research;2022-01

4. Approximating Geometric Knapsack via L-packings;ACM Transactions on Algorithms;2021-10-31

5. Framework for ER-Completeness of Two-Dimensional Packing Problems;2020 IEEE 61st Annual Symposium on Foundations of Computer Science (FOCS);2020-11

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