Optimal Composition Ordering Problems for Piecewise Linear Functions
Yasushi Kawase, Kazuhisa Makino, Kento Seimi

TL;DR
This paper studies optimal ordering of piecewise linear functions to maximize their composition output, providing efficient algorithms for certain cases and proving computational hardness for others.
Contribution
Introduces maximum composition ordering problems, offers $O(n ext{log} n)$ algorithms for monotone linear functions, and establishes NP-hardness for general piecewise linear functions.
Findings
Efficient algorithms for monotone linear functions
Polynomial-time solution for specific piecewise linear functions
NP-hardness of approximation for general piecewise linear functions
Abstract
In this paper, we introduce maximum composition ordering problems. The input is real functions and a constant . We consider two settings: total and partial compositions. The maximum total composition ordering problem is to compute a permutation which maximizes , where . The maximum partial composition ordering problem is to compute a permutation and a nonnegative integer which maximize . We propose time algorithms for the maximum total and partial composition ordering problems for monotone linear functions , which generalize linear deterioration and shortening models for the time-dependent scheduling…
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