Title :
Optimal Function Computation in Directed and Undirected Graphs
Author :
Kowshik, Hemant ; Kumar, P.R.
Author_Institution :
Next Generation Syst. group, IBM India Res. Lab., Bangalore, India
fDate :
6/1/2012 12:00:00 AM
Abstract :
We consider the problem of information aggregation in sensor networks, where one is interested in computing a function of the sensor measurements. We allow for block processing and study in-network function computation in directed graphs and undirected graphs. We study how the structure of the function affects the encoding strategies and the effect of interactive information exchange. Depending on the application, there could be a designated collector node, or every node might want to compute the function. We begin by considering a directed graph C = (γ. ε) on the sensor nodes, where the goal is to determine the optimal encoders on each edge which achieve function computation at the collector node. Our goal is to characterize the rate region in R|ε|, i.e., the set of points for which there exist feasible encoders with given rates which achieve zero-error computation for asymptotically large block length. We determine the solution for directed trees, specifying the optimal encoder and decoder for each edge. For general directed acyclic graphs, we provide an outer bound on the rate region by finding the disambiguation requirements for each cut, and describe examples where this outer bound is tight. Next, we address the scenario where nodes are connected in an undirected tree network, and every node wishes to compute a given symmetric Boolean function of the sensor data. Undirected edges permit interactive computation, and we therefore study the effect of interaction on the aggregation and communication strategies. We focus on sum-threshold functions and determine the minimum worst case total number of bits to be exchanged on each edge. The optimal strategy involves recursive in-network aggregation which is reminiscent of message passing. In the case of general graphs, we present a cut-set lower bound and an achievable scheme based on aggregation along trees. For complete graphs, we prove that the complexity of this scheme is no more- than twice that of the optimal scheme.
Keywords :
Boolean functions; directed graphs; encoding; message passing; trees (mathematics); asymptotically large block length; block processing; coding strategies; collector node; communication complexity; cut-set lower bound; directed acyclic graphs; directed trees; in-network aggregation; in-network function computation; information aggregation; interactive computation; interactive information exchange; message passing; optimal decoder; optimal encoders; optimal function computation; sensor data; sensor measurements; sensor networks; sum-threshold functions; symmetric Boolean function; undirected graph; undirected tree network; zero-error computation; Boolean functions; Complexity theory; Decoding; Entropy; Monitoring; Optimized production technology; Vectors; Communication complexity; function computation; in-network computation;
Journal_Title :
Information Theory, IEEE Transactions on
DOI :
10.1109/TIT.2012.2188883