Title :
Learning in Hierarchical Social Networks
Author :
Zhenliang Zhang ; Chong, Edwin K. P. ; Pezeshki, Ali ; Moran, William ; Howard, Stephen D.
Author_Institution :
Dept. of Electr. & Comput. Eng., Colorado State Univ., Fort Collins, CO, USA
Abstract :
We study a social network consisting of agents organized as a hierarchical M-ary rooted tree, common in enterprise and military organizational structures. The goal is to aggregate information to solve a binary hypothesis testing problem. Each agent at a leaf of the tree, and only such an agent, makes a direct measurement of the underlying true hypothesis. The leaf agent then generates a message and sends it to its supervising agent, at the next level of the tree. Each supervising agent aggregates the messages from the M members of its group, produces a summary message, and sends it to its supervisor at the next level, and so on. Ultimately, the agent at the root of the tree makes an overall decision. We derive upper and lower bounds for the Type I and Type II error probabilities associated with this decision with respect to the number of leaf agents, which in turn characterize the converge rates of the Type I, Type II, and total error probabilities. We also provide a message-passing scheme involving non-binary message alphabets and characterize the exponent of the error probability with respect to the message alphabet size.
Keywords :
belief networks; error statistics; learning (artificial intelligence); message passing; multi-agent systems; social networking (online); M members; Type I error probabilities; Type II error probabilities; aggregate information; binary hypothesis testing problem; enterprise organizational structures; hierarchical M-ary rooted tree; hierarchical social network learning; leaf agent; message-passing scheme; military organizational structures; nonbinary message alphabets; summary message; supervising agent aggregates; total error probabilities; Bayesian methods; Convergence; Error probability; Relays; Social network services; Upper bound; Vegetation; Bayesian learning; convergence rate; decentralized detection; hypothesis testing; social learning; tree structure;
Journal_Title :
Selected Topics in Signal Processing, IEEE Journal of
DOI :
10.1109/JSTSP.2013.2245859