DocumentCode :
3724158
Title :
Hierarchies in Directed Networks
Author :
Nikolaj Tatti
Author_Institution :
HIIT, Aalto Univ., Espoo, Finland
fYear :
2015
Firstpage :
991
Lastpage :
996
Abstract :
Interactions in many real-world phenomena can be explained by a stronghierarchical structure. Typically, this structure or ranking is not known, instead we only have observed outcomes of the interactions, and the goal is toinfer the hierarchy from these observations. Discovering a hierarchy in the context of directed networks can be formulated asfollows: given a graph, partition vertices into levels such that, ideally, there are only edges from upper levels to lower levels. The ideal case can onlyhappen if the graph is acyclic. Consequently, in practice we have to introducea penalty function that penalizes edges violating the hierarchy. A practicalvariant for such penalty is agony, where each violating edge is penalized basedon the severity of the violation. Hierarchy minimizing agony can be discoveredin O(m^2) time, and much faster in practice. In this paper we introduce severalextensions to agony. We extend the definition for weighted graphs and allow acardinality constraint that limits the number of levels. While, these areconceptually trivial extensions, current algorithms cannot handle them, northey can be easily extended. We provide an exact algorithm of O(m^2 log n) time by showing the connection of agony to the capacitated circulation problem. Wealso show that this bound is in fact pessimistic and we can compute agony forlarge datasets. In addition, we show that we can compute agony in polynomialtime for any convex penalty, and, to complete the picture, we show that minimizinghierarchy with any concave penalty is an NP-hard problem.
Keywords :
"NP-hard problem","Transforms","Context","Partitioning algorithms","Optimization","Conferences","Data mining"
Publisher :
ieee
Conference_Titel :
Data Mining (ICDM), 2015 IEEE International Conference on
ISSN :
1550-4786
Type :
conf
DOI :
10.1109/ICDM.2015.12
Filename :
7373424
Link To Document :
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