Affiliation:
1. MIT Computer Science and Artificial Intelligence Laboratory, Cambridge, MA
2. University of Maryland, College Park, and AT&T Labs--Research, MD
3. Institute for Computer Science and Control, Hungarian Academy of Sciences (MTA SZTAKI) Budapest, Hungary
Abstract
We study an extensive class of movement minimization problems that arise from many practical scenarios but so far have little theoretical study. In general, these problems involve planning the coordinated motion of a collection of agents (representing robots, people, map labels, network messages, etc.) to achieve a global property in the network while minimizing the maximum or average movement (expended energy). The only previous theoretical results about this class of problems are about approximation and are mainly negative: many movement problems of interest have polynomial inapproximability. Given that the number of mobile agents is typically much smaller than the complexity of the environment, we turn to fixed-parameter tractability. We characterize the boundary between tractable and intractable movement problems in a very general setup: it turns out the complexity of the problem fundamentally depends on the treewidth of the minimal configurations. Thus, the complexity of a particular problem can be determined by answering a purely combinatorial question. Using our general tools, we determine the complexity of several concrete problems and fortunately show that many movement problems of interest can be solved efficiently.
Funder
University of Maryland Research and Scholarship Award
Office of Naval Research
European Research Council
Air Force Office of Scientific Research
Országos Tudományos Kutatási Alapprogramok
National Science Foundation
Division of Computing and Communication Foundations
Defense Advanced Research Projects Agency
Publisher
Association for Computing Machinery (ACM)
Subject
Mathematics (miscellaneous)
Cited by
9 articles.
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