S.P. Borgatti, A. Mehra, D.J. Brass & G. Labianca (2009):
Network Analysis in the Social Sciences.
Science 323,
pp. 892–5,
doi:10.1126/science.1165821.
Nicholas M. Gotts (2007):
Resilience, Panarchy, and World-Systems Analysis.
Ecology and Society 12(1).
J. E. Hopcroft & R. M. Karp (1973):
An n^5 / 2 algorithm for maximum matchings in bipartite graphs.
SIAM J. Comput. 2,
pp. 225–231,
doi:10.1137/0202019.
C. Knight (2013):
Extending an FCM Using Control Nodes.
Technical Report.
University of Surrey.
C. Knight, D.J.B. Lloyd & A. Penn (2014):
Linear and Sigmoidal fuzzy cognitive maps: An analysis of fixed points.
Applied Soft Computing 15,
pp. 193–202,
doi:10.1016/j.asoc.2013.10.030.
B. Kosko (1986):
Fuzzy Cognitive Maps.
Int'l Journal of Man-Machine Studies 24,
pp. 65–75,
doi:10.1016/S0020-7373(86)80040-2.
P.J. Krause, A. Razavi, S. Moschoyiannis & A. Marinos (2009):
Stability and Complexity in Digital Ecosystems.
In: IEEE DEST 2009,
pp. 85–90,
doi:10.1109/DEST.2009.5276757.
C-T. Lin (1974):
Structural Controllability.
IEEE Trans. Autom. Contr. 19,
pp. 201–208,
doi:10.1109/TAC.1974.1100557.
C.M Lin (2008):
Using Fuzzy Cognitive Map for System Control.
WSEAS Transactions on Systems 12(7),
pp. 1504–1505.
Y-Y. Liu, J-J. Slotine & A-L Barabasi (2011):
Controllability of Complex Networks.
Nature 473,
pp. 167–173,
doi:10.1038/nature10011.
R. M. May, S. A. Levin & G. Sugihara (2008):
Complex Systems: Ecology for Bankers.
Nature 451,
pp. 893–895,
doi:10.1038/451893a.
E. Mitleton-Kelly (2003):
Complex systems and evolutionary perpsectives on organisations: the application of complexity theory to organisations.
Elsevier Science Ltd,
Oxford, UK.
U. Ozesmi & LS Ozesmi (2004):
Ecological models based on people's knowledge: a multi-step fuzzy cognitive mapping approach.
Ecological Modelling 15,
pp. 43–64,
doi:10.1016/j.ecolmodel.2003.10.027.
A. Penn, C. Knight, D.J. Lloyd, D. Avitabile, K. Kok, F. Schiller, A. Woodward, A. Druckman & L. Basson (2013):
Participatory Development and Analysis of a Fuzzy Cognitive Map of the Establishment of a Bio-Based Economy in the Humber Region.
PLOS ONE,
doi:10.1371/journal.pone.0078319.t001.
A. Penn (2016):
Extending Participatory Fuzzy Cognitive Mapping with a Control Nodes Methodology: A Case Study of the Development of a Bio-based Economy in the Humber Region, UK.
In: S. Gray, M. Paolisso & R. Jordan: Environmental Modeling with Stakeholders.
Springer.
S.R. Proulx, D.E.L. Promislkow & P.C. Philips (2005):
Network Thinking in Ecology and Evolution.
Trends in Ecology and Evolution 20,
pp. 345–353,
doi:10.1016/j.tree.2005.04.004.
A. Razavi, S. Moschoyiannis & P.J. Krause (2009):
An Open Digital Environment to support Business Ecosystems.
Peer-to-Peer Networking and Applications 2(4),
pp. 367–397,
doi:10.1007/s12083-009-0039-5.
M. Schneider, E. Shnaider, A. Kandel & G. Chew (1998):
Automatic construction of FCMs.
Fuzzy Sets and Systems 93,
pp. 161–172,
doi:10.1016/S0165-0114(96)00218-7.
J-J. Slotine & W. Li (1991):
Applied Nonlinar Control.
Prentice Hall.
LS Soler, K. Kok, G Camara & A. Veldkamp (2012):
Using fuzzy cognitive maps to describe current system dunamics and develop land cover scenarios: a case study in the Brazilian Amazon.
Journal of Land Use Science 7,
pp. 149–175,
doi:10.1080/1747423X.2010.542495.
Dylan Young (2015):
Carbon, Communities and Contestation.
University of Leeds.
W. Yu, G. Chen, M. Cao & J. Kurths (2010):
Second-order consensus for multiagent systems with directed topologies and nonlinear dynamics.
IEEE Trans. Syst. Man Cybern. B 40,
pp. 881–891,
doi:10.1109/TSMCB.2009.2031624.