Title :
A quorum sensing inspired algorithm for dynamic clustering
Author :
Feng Tan ; Slotine, Jean-Jacques
Author_Institution :
Nonlinear Syst. Lab., Massachusetts Inst. of Technol., Cambridge, MA, USA
Abstract :
Quorum sensing is a decentralized biological process, through which a community of cells with no global awareness coordinate their functional behaviors based only on cell-medium interactions and local decisions. This paper draws inspiration from quorum sensing and colony competition to derive a new algorithm for data clustering. The algorithm treats each data as a single cell, and uses knowledge of local connectivity to cluster cells into multiple colonies simultaneously. It simulates auto-inducers secretion in quorum sensing to tune the influence radius for each cell. At the same time, sparsely distributed core cells spread their influences to form colonies, and interactions between colonies eventually determine each cell´s identity. The algorithm has the flexibility to analyze both static and time-varying data, and its stability and convergence properties are established. The algorithm is tested on several applications, including both synthetic and real benchmarks datasets, alleles clustering, dynamic systems grouping and model identification. Although the algorithm is originally motivated by curiosity about biology-inspired computation, the results suggests that in parallel implementation it performs as well as state-of-the art methods on static data, while showing promising performance on time-varying data such as e.g. clustering robotic swarms.
Keywords :
cellular biophysics; convergence; microorganisms; pattern clustering; allele clustering; automatic inducer secretion simulation; cell clustering; cell community; cell identity; cell-medium interactions; colony competition; convergence properties; decentralized biological process; dynamic clustering; dynamic system grouping; functional behaviors; influence radius; local connectivity; local decisions; model identification; quorum sensing inspired algorithm; real benchmarks datasets; robotic swarm clustering; sparsely distributed core cells; stability properties; static data; synthetic benchmarks datasets; time-varying data; Algorithm design and analysis; Biology; Clustering algorithms; Cost function; Heuristic algorithms; Sensors; Tuning;
Conference_Titel :
Decision and Control (CDC), 2013 IEEE 52nd Annual Conference on
Conference_Location :
Firenze
Print_ISBN :
978-1-4673-5714-2
DOI :
10.1109/CDC.2013.6760733