Title
When is social computation better than the sum of its parts?
Abstract
Social computation, whether in the form of searches performed by swarms of agents or collective predictions of markets, often supplies remarkably good solutions to complex problems. In many examples, individuals trying to solve a problem locally can aggregate their information and work together to arrive at a superior global solution. This suggests that there may be general principles of information aggregation and coordination that can transcend particular applications. Here we show that the general structure of this problem can be cast in terms of information theory and derive mathematical conditions that lead to optimal multi-agent searches. Specifically, we illustrate the problem in terms of local search algorithms for autonomous agents looking for the spatial location of a stochastic source. We explore the types of search problems, defined in terms of the statistical properties of the source and the nature of measurements at each agent, for which coordination among multiple searchers yields an advantage beyond that gained by having the same number of independent searchers. We show that effective coordination corresponds to synergy and that ineffective coordination corresponds to independence as defined using information theory. We classify explicit types of sources in terms of their potential for synergy. We show that sources that emit uncorrelated signals provide no opportunity for synergetic coordination while sources that emit signals that are correlated in some way, do allow for strong synergy between searchers. These general considerations are crucial for designing optimal algorithms for particular search problems in real world settings.
Year
DOI
Venue
2011
10.1007/978-1-4419-0056-2_13
SOCIAL COMPUTING AND BEHAVIORAL MODELING
Keywords
Field
DocType
autonomous agent,information theory,artificial intelligent,local search algorithm,design optimization,social computing
Information theory,Mathematical optimization,Autonomous agent,Social computation,Uncorrelated,Theoretical computer science,Information aggregation,Search problem,Local search (optimization),Mathematics,Complex problems
Journal
Volume
Citations 
PageRank 
abs/1103.4
1
0.37
References 
Authors
4
3
Name
Order
Citations
PageRank
Vadas Gintautas193.04
Aric A. Hagberg2635.77
Luís M. A. Bettencourt3949.47