Computing longest duration flocks in trajectory data 论文

2006引用 279
Data Management and AlgorithmsData Mining Algorithms and ApplicationsAdvanced Database Systems and Queries

摘要

Moving point object data can be analyzed through the discovery of patterns. We consider the computational efficiency of computing two of the most basic spatio-temporal patterns in trajectories, namely flocks and meetings. The patterns are large enough subgroups of the moving point objects that exhibit similar movement and proximity for a certain amount of time. We consider the problem of computing a longest duration flock or meeting. We give several exact and approximation algorithms, and also show that some variants are as hard as MaxClique to compute and approximate.