Sayan Bandyapadhyay, William Lochet, Daniel Lokshtanov, Saket Saurabh, Jie Xue
{"title":"单位盘图的真正收缩分解和近乎 ETH-Tight 的二分法","authors":"Sayan Bandyapadhyay, William Lochet, Daniel Lokshtanov, Saket Saurabh, Jie Xue","doi":"10.1145/3656042","DOIUrl":null,"url":null,"abstract":"<p>We prove a structural theorem for unit-disk graphs, which (roughly) states that given a set \\(\\mathcal{D}\\) of \\(n\\) unit disks inducing a unit-disk graph \\(G_{\\mathcal{D}}\\) and a number \\(p\\in[n]\\), one can partition \\(\\mathcal{D}\\) into \\(p\\) subsets \\(\\mathcal{D}_{1},\\dots,\\mathcal{D}_{p}\\) such that for every \\(i\\in[p]\\) and every \\(\\mathcal{D}^{\\prime}\\subseteq\\mathcal{D}_{i}\\), the graph obtained from \\(G_{\\mathcal{D}}\\) by contracting all edges between the vertices in \\(\\mathcal{D}_{i}\\backslash\\mathcal{D}^{\\prime}\\) admits a tree decomposition in which each bag consists of \\(O(p+|\\mathcal{D}^{\\prime}|)\\) cliques. Our theorem can be viewed as an analog for unit-disk graphs of the structural theorems for planar graphs and almost-embeddable graphs proved recently by Marx et al. [SODA’22] and Bandyapadhyay et al. [SODA’22].</p><p>By applying our structural theorem, we give several new combinatorial and algorithmic results for unit-disk graphs. On the combinatorial side, we obtain the first Contraction Decomposition Theorem (CDT) for unit-disk graphs, resolving an open question in the work by Panolan et al. [SODA’19]. On the algorithmic side, we obtain a new algorithm for bipartization (also known as odd cycle transversal) on unit-disk graphs, which runs in \\(2^{O(\\sqrt{k}\\log k)}\\cdot n^{O(1)}\\) time, where \\(k\\) denotes the solution size. Our algorithm significantly improves the previous slightly subexponential-time algorithm given by Lokshtanov et al. [SODA’22] which runs in \\(2^{O(k^{27/28})}\\cdot n^{O(1)}\\) time. We also show that the problem cannot be solved in \\(2^{o(\\sqrt{k})}\\cdot n^{O(1)}\\) time assuming the ETH, which implies that our algorithm is almost optimal.</p>","PeriodicalId":50922,"journal":{"name":"ACM Transactions on Algorithms","volume":"48 1","pages":""},"PeriodicalIF":0.9000,"publicationDate":"2024-04-08","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"True Contraction Decomposition and Almost ETH-Tight Bipartization for Unit-Disk Graphs\",\"authors\":\"Sayan Bandyapadhyay, William Lochet, Daniel Lokshtanov, Saket Saurabh, Jie Xue\",\"doi\":\"10.1145/3656042\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<p>We prove a structural theorem for unit-disk graphs, which (roughly) states that given a set \\\\(\\\\mathcal{D}\\\\) of \\\\(n\\\\) unit disks inducing a unit-disk graph \\\\(G_{\\\\mathcal{D}}\\\\) and a number \\\\(p\\\\in[n]\\\\), one can partition \\\\(\\\\mathcal{D}\\\\) into \\\\(p\\\\) subsets \\\\(\\\\mathcal{D}_{1},\\\\dots,\\\\mathcal{D}_{p}\\\\) such that for every \\\\(i\\\\in[p]\\\\) and every \\\\(\\\\mathcal{D}^{\\\\prime}\\\\subseteq\\\\mathcal{D}_{i}\\\\), the graph obtained from \\\\(G_{\\\\mathcal{D}}\\\\) by contracting all edges between the vertices in \\\\(\\\\mathcal{D}_{i}\\\\backslash\\\\mathcal{D}^{\\\\prime}\\\\) admits a tree decomposition in which each bag consists of \\\\(O(p+|\\\\mathcal{D}^{\\\\prime}|)\\\\) cliques. Our theorem can be viewed as an analog for unit-disk graphs of the structural theorems for planar graphs and almost-embeddable graphs proved recently by Marx et al. [SODA’22] and Bandyapadhyay et al. [SODA’22].</p><p>By applying our structural theorem, we give several new combinatorial and algorithmic results for unit-disk graphs. On the combinatorial side, we obtain the first Contraction Decomposition Theorem (CDT) for unit-disk graphs, resolving an open question in the work by Panolan et al. [SODA’19]. On the algorithmic side, we obtain a new algorithm for bipartization (also known as odd cycle transversal) on unit-disk graphs, which runs in \\\\(2^{O(\\\\sqrt{k}\\\\log k)}\\\\cdot n^{O(1)}\\\\) time, where \\\\(k\\\\) denotes the solution size. Our algorithm significantly improves the previous slightly subexponential-time algorithm given by Lokshtanov et al. [SODA’22] which runs in \\\\(2^{O(k^{27/28})}\\\\cdot n^{O(1)}\\\\) time. 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True Contraction Decomposition and Almost ETH-Tight Bipartization for Unit-Disk Graphs
We prove a structural theorem for unit-disk graphs, which (roughly) states that given a set \(\mathcal{D}\) of \(n\) unit disks inducing a unit-disk graph \(G_{\mathcal{D}}\) and a number \(p\in[n]\), one can partition \(\mathcal{D}\) into \(p\) subsets \(\mathcal{D}_{1},\dots,\mathcal{D}_{p}\) such that for every \(i\in[p]\) and every \(\mathcal{D}^{\prime}\subseteq\mathcal{D}_{i}\), the graph obtained from \(G_{\mathcal{D}}\) by contracting all edges between the vertices in \(\mathcal{D}_{i}\backslash\mathcal{D}^{\prime}\) admits a tree decomposition in which each bag consists of \(O(p+|\mathcal{D}^{\prime}|)\) cliques. Our theorem can be viewed as an analog for unit-disk graphs of the structural theorems for planar graphs and almost-embeddable graphs proved recently by Marx et al. [SODA’22] and Bandyapadhyay et al. [SODA’22].
By applying our structural theorem, we give several new combinatorial and algorithmic results for unit-disk graphs. On the combinatorial side, we obtain the first Contraction Decomposition Theorem (CDT) for unit-disk graphs, resolving an open question in the work by Panolan et al. [SODA’19]. On the algorithmic side, we obtain a new algorithm for bipartization (also known as odd cycle transversal) on unit-disk graphs, which runs in \(2^{O(\sqrt{k}\log k)}\cdot n^{O(1)}\) time, where \(k\) denotes the solution size. Our algorithm significantly improves the previous slightly subexponential-time algorithm given by Lokshtanov et al. [SODA’22] which runs in \(2^{O(k^{27/28})}\cdot n^{O(1)}\) time. We also show that the problem cannot be solved in \(2^{o(\sqrt{k})}\cdot n^{O(1)}\) time assuming the ETH, which implies that our algorithm is almost optimal.
期刊介绍:
ACM Transactions on Algorithms welcomes submissions of original research of the highest quality dealing with algorithms that are inherently discrete and finite, and having mathematical content in a natural way, either in the objective or in the analysis. Most welcome are new algorithms and data structures, new and improved analyses, and complexity results. Specific areas of computation covered by the journal include
combinatorial searches and objects;
counting;
discrete optimization and approximation;
randomization and quantum computation;
parallel and distributed computation;
algorithms for
graphs,
geometry,
arithmetic,
number theory,
strings;
on-line analysis;
cryptography;
coding;
data compression;
learning algorithms;
methods of algorithmic analysis;
discrete algorithms for application areas such as
biology,
economics,
game theory,
communication,
computer systems and architecture,
hardware design,
scientific computing