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Efficient Sensor Placement Optimization for Early Detection of Contagious Outbreaks in Mobile Social Networks

机译:用于移动社交网络中传染性暴发的早期检测的高效传感器放置优化

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In this paper, we investigate the problem of placing sensors in a mobile social network to get quickly informed about contagious outbreaks, i.e., placing k sensors in a network in order to minimize the time until a contaminant - starting from a random node in the network - is detected. We aim to optimize the Sensor Placement from two complementary directions. One is to improve the original greedy algorithm and its extensions [13] to reduce sensor selection time, and the other is to propose a new Quickest Path heuristic that can shorten the detection time. We test and compare our algorithms with previous algorithms on four real data sets. Experimental results show that 1) the new greedy algorithm is more efficient than existing greedy algorithms in terms of selection time, 2) the quickest path heuristic obtains less detection time than centrality-based heuristics, and is as effective as the greedy algorithms, and 3) the new heuristic has the potential to scale well to large networks, having low detection time and selection time.
机译:在本文中,我们调查了将传感器放置在移动社交网络中以快速了解传染性爆发的问题,即,将k个传感器放置在网络中以最小化直到污染物的时间-从网络中的随机节点开始-被检测到。我们旨在从两个互补的方向优化传感器的位置。一种是改进原始的贪婪算法及其扩展[13],以减少传感器的选择时间,另一种是提出​​一种可以缩短检测时间的新的最快路径启发式算法。我们在四个真实数据集上对我们的算法与以前的算法进行了测试和比较。实验结果表明:1)新的贪婪算法在选择时间上比现有贪婪算法更有效; 2)最快的路径启发式算法比基于中心性的启发式算法获得的检测时间更少,并且与贪婪算法一样有效; 3 )新的启发式方法有可能很好地扩展到大型网络,具有较低的检测时间和选择时间。

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