Title :
Bump hunting in the dark: Local discrepancy maximization on graphs
Author :
Gionis, Aristides ; Mathioudakis, Michael ; Ukkonen, Antti
Author_Institution :
Helsinki Inst. for Inf. Technol. HIIT, Aalto Univ., Helsinki, Finland
Abstract :
We study the problem of discrepancy maximization on graphs: given a set of nodes Q of an underlying graph G, we aim to identify a connected subgraph of G that contains many more nodes from Q than other nodes. This variant of the discrepancy-maximization problem extends the well-known notion of “bump hunting” in the Euclidean space. We consider the problem under two access models. In the unrestricted-access model, the whole graph G is given as input, while in the local-access model we can only retrieve the neighbors of a given node in G using a possibly slow and costly interface. We prove that the basic problem of discrepancy maximization on graphs is NP-hard, and empirically evaluate the performance of four heuristics for solving it. For the local-access model we consider three different algorithms that aim to recover a part of G large enough to contain an optimal solution, while using only a small number of calls to the neighbor-function interface. We perform a thorough experimental evaluation in order to understand the trade offs between the proposed methods and their dependencies on characteristics of the input graph.
Keywords :
graph theory; optimisation; query processing; set theory; Euclidean space; NP-hard problem; bump hunting approach; connected subgraph identification; empirical analysis; graph nodes; heuristics; input graph characteristics; local discrepancy maximization problem; local-access model; neighbor-function interface; optimal solution; performance evaluation; unrestricted-access model; Approximation algorithms; Color; Complexity theory; Computational modeling; Heuristic algorithms; Twitter;
Conference_Titel :
Data Engineering (ICDE), 2015 IEEE 31st International Conference on
Conference_Location :
Seoul
DOI :
10.1109/ICDE.2015.7113364