Title :
Attribute Fusion in a Latent Process Model for Time Series of Graphs
Author :
Minh Tang ; Youngser Park ; Lee, N.H. ; Priebe, Carey E.
Author_Institution :
Dept. of Appl. Math. & Stat., Johns Hopkins Univ., Baltimore, MD, USA
Abstract :
Hypothesis testing on time series of attributed graphs has applications in diverse areas, e.g., social network analysis (wherein vertices represent individual actors or organizations), connectome inference (wherein vertices are neurons or brain regions) and text processing (wherein vertices represent authors or documents). We consider the problem of anomaly/change point detection given the latent process model for time series of graphs with categorical attributes on the edges presented in [N. H. Lee and C. E. Priebe, “A latent process model for time series of attributed random graphs,” Statist. Inference Stoch. Process., vol. 14, pp. 231-253, 2011]. Various attributed graph invariants are considered, and their power for detection as a function of a linear fusion parameter is presented. Our main result is that inferential performance in mathematically tractable first-order and second-order approximation models does provide guidance for methodological choices applicable to the exact (realistic but intractable) model. Furthermore, to the extent that the exact model is realistic, we may tentatively conclude that approximation model investigations have some bearing on real data applications.
Keywords :
approximation theory; graph theory; sensor fusion; signal detection; statistical testing; time series; anomaly-change point detection; attribute fusion; attributed random graph invariant; hypothesis testing; latent process model; linear fusion parameter; mathematically tractable first-order approximation models; second-order approximation models; social network analysis; time series; Approximation methods; Electronic mail; Mathematical model; Stochastic processes; Testing; Time series analysis; Vectors; Anomaly detection; attributed random graphs; random dot product graphs;
Journal_Title :
Signal Processing, IEEE Transactions on
DOI :
10.1109/TSP.2013.2243445