4,487 research outputs found

    On the Complexity of Role Colouring Planar Graphs, Trees and Cographs

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    We prove several results about the complexity of the role colouring problem. A role colouring of a graph GG is an assignment of colours to the vertices of GG such that two vertices of the same colour have identical sets of colours in their neighbourhoods. We show that the problem of finding a role colouring with 1<k<n1< k <n colours is NP-hard for planar graphs. We show that restricting the problem to trees yields a polynomially solvable case, as long as kk is either constant or has a constant difference with nn, the number of vertices in the tree. Finally, we prove that cographs are always kk-role-colourable for 1<kn1<k\leq n and construct such a colouring in polynomial time

    Detection of Core-Periphery Structure in Networks Using Spectral Methods and Geodesic Paths

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    We introduce several novel and computationally efficient methods for detecting "core--periphery structure" in networks. Core--periphery structure is a type of mesoscale structure that includes densely-connected core vertices and sparsely-connected peripheral vertices. Core vertices tend to be well-connected both among themselves and to peripheral vertices, which tend not to be well-connected to other vertices. Our first method, which is based on transportation in networks, aggregates information from many geodesic paths in a network and yields a score for each vertex that reflects the likelihood that a vertex is a core vertex. Our second method is based on a low-rank approximation of a network's adjacency matrix, which can often be expressed as a tensor-product matrix. Our third approach uses the bottom eigenvector of the random-walk Laplacian to infer a coreness score and a classification into core and peripheral vertices. We also design an objective function to (1) help classify vertices into core or peripheral vertices and (2) provide a goodness-of-fit criterion for classifications into core versus peripheral vertices. To examine the performance of our methods, we apply our algorithms to both synthetically-generated networks and a variety of networks constructed from real-world data sets.Comment: This article is part of EJAM's December 2016 special issue on "Network Analysis and Modelling" (available at https://www.cambridge.org/core/journals/european-journal-of-applied-mathematics/issue/journal-ejm-volume-27-issue-6/D245C89CABF55DBF573BB412F7651ADB

    Guessing Numbers of Odd Cycles

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    For a given number of colours, ss, the guessing number of a graph is the base ss logarithm of the size of the largest family of colourings of the vertex set of the graph such that the colour of each vertex can be determined from the colours of the vertices in its neighbourhood. An upper bound for the guessing number of the nn-vertex cycle graph CnC_n is n/2n/2. It is known that the guessing number equals n/2n/2 whenever nn is even or ss is a perfect square \cite{Christofides2011guessing}. We show that, for any given integer s2s\geq 2, if aa is the largest factor of ss less than or equal to s\sqrt{s}, for sufficiently large odd nn, the guessing number of CnC_n with ss colours is (n1)/2+logs(a)(n-1)/2 + \log_s(a). This answers a question posed by Christofides and Markstr\"{o}m in 2011 \cite{Christofides2011guessing}. We also present an explicit protocol which achieves this bound for every nn. Linking this to index coding with side information, we deduce that the information defect of CnC_n with ss colours is (n+1)/2logs(a)(n+1)/2 - \log_s(a) for sufficiently large odd nn. Our results are a generalisation of the s=2s=2 case which was proven in \cite{bar2011index}.Comment: 16 page

    Cost of capital in an international context: Institutional distance, quality, and dynamics

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    Cost of debt is a key cognitive anchor for managerial decisions and an important determinant of firm profitability. We extend international management research by analyzing the effects of institutional distance, institutional quality, and their dynamics on the cost of debt in the context of foreign direct investments (FDI). We test our conceptual model on a sample of companies making 3,764 greenfield foreign direct investments from developed into less developed markets. Using hierarchical linear modelling, we show that the financial consequences of internationalizing into countries with weak institutions depend on both the institutional distance between countries, as well as their institutional quality. Furthermore, we find that recent changes in institutional quality form expectations about future development and ultimately influence post investment financing costs

    In Appreciation of Buffoonery, Egotism, and the Shōmon School: Koikawa Harumachi's Kachō kakurenbō (1776)

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    Early Modern Japan Networ

    To Romp in Heaven: A Translation of the Hōsa kyōshaden (Biographies of Nagoya Madmen)

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    Author Institution: International Research Center for Japanese Studie

    Growth and Containment of a Hierarchical Criminal Network

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    We model the hierarchical evolution of an organized criminal network via antagonistic recruitment and pursuit processes. Within the recruitment phase, a criminal kingpin enlists new members into the network, who in turn seek out other affiliates. New recruits are linked to established criminals according to a probability distribution that depends on the current network structure. At the same time, law enforcement agents attempt to dismantle the growing organization using pursuit strategies that initiate on the lower level nodes and that unfold as self-avoiding random walks. The global details of the organization are unknown to law enforcement, who must explore the hierarchy node by node. We halt the pursuit when certain local criteria of the network are uncovered, encoding if and when an arrest is made; the criminal network is assumed to be eradicated if the kingpin is arrested. We first analyze recruitment and study the large scale properties of the growing network; later we add pursuit and use numerical simulations to study the eradication probability in the case of three pursuit strategies, the time to first eradication and related costs. Within the context of this model, we find that eradication becomes increasingly costly as the network increases in size and that the optimal way of arresting the kingpin is to intervene at the early stages of network formation. We discuss our results in the context of dark network disruption and their implications on possible law enforcement strategies.Comment: 16 pages, 11 Figures; New title; Updated figures with color scheme better suited for colorblind readers and for gray scale printin
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