Abstract
Processing information in a city is simultaneously a primary task and a pivotal challenge. Urban data are usually expressed in natural language and thus imprecise but can contain relevant information that should be processed to advance the city. Fuzzy cognitive maps (FCMs) can be used to model interconnected and imprecise urban data and are therefore suitable to both address this challenge and to fulfil the primary task. Cognitive cities are based on connectivism, which assumes that knowledge is built through the experiences and perceptions of different people. Hence, the design of a cognitive learning process in a city is crucial. In this article, the current state-of-the-art research in the field of FCMs and FCMs combined with learning algorithms is presented based on an extensive literature review and grounded theory. In total, 59 research papers were gathered and analyzed. The results show that the application of FCMs already facilitates the acquisition and representation of urban data and, thus, helps to make a city smarter. However, using FCMs combined with learning algorithms optimizes this smartness and helps to foster the development of cognitive cities.
Access this chapter
Tax calculation will be finalised at checkout
Purchases are for personal use only
Notes
- 1.
- 2.
- 3.
Cf. http://dl.acm.org/.
- 4.
- 5.
Please note: the left column always states the source and the right the applied field.
- 6.
Please note: the left column always states the source, the middle column the applied field and the right the employed learning algorithm.
References
Acampora G, Loia V (2009) A dynamical cognitive multi-agent system for enhancing ambient intelligence scenarios. In: IEEE International Conference on Fuzzy Systems, 2009. FUZZ-IEEE 2009. IEEE
Acampora G, Loia V, Vitiello A (2011) Distributing emotional services in ambient intelligence through cognitive agents. SOCA 5(1):17–35
Aguilar J (2013) Different dynamic causal relationship approaches for cognitive maps. Appl Soft Comput 13:271–282
Altay A, Kayakutlu G (2011) Fuzzy cognitive mapping in factor elimination: a case study for innovative power and risks. Procedia Comput Sci 3:1111–1119
Andreou AS, Mateou NH, Zombanakis GA (2005) Soft computing for crisis management and political decision making: the use of genetically evolved fuzzy cognitive maps. Soft Comput 9(3):194–210
Banini GA, Bearman RA (1998) Application of fuzzy cognitive maps to factors affecting slurry rheology. Int J Miner Process 52(4):233–244
Baykasoglu A, Durmusoglu ZDU, Kaplanoglu V (2011) Training fuzzy cognitive maps via extended great deluge algorithm with applications. Comput Ind 62(2):187–195
Beena P, Ganguli R (2011) Structural damage detection using fuzzy cognitive maps and Hebbian learning. Appl Soft Comput 11(1):1014–1020
Bertolini M (2007) Assessment of human reliability factors: a fuzzy cognitive maps approach. Int J Ind Ergon 37(5):405–413
Cai Y, Miao C, Tan AH, Shen Z, Li B (2010) Creating an immersive game world with evolutionary fuzzy cognitive maps. IEEE Comput Graph Appl 30(2):58–70
Campbell T (2009) Learning cities: knowledge, capacity and competitiveness. Habitat Int 33(2):195–201
Chen H, Chiang RH, Storey VC (2012) Business intelligence and analytics: from big data to big impact. MIS Q 36(4):1165–1188
Chytas P, Glykas M, Valiris G (2011) A proactive balanced scorecard. Int J Inf Manage 31(5):460–468
Çoban O, Seçme G (2005) Prediction of socio-economical consequences of privatization at the firm level with fuzzy cognitive mapping. Inf Sci 169(1):131–154
Dickerson JA, Kosko B (1994) Virtual worlds as fuzzy cognitive maps. Presence Teleoperators Virtual Environ 3(2):173–189
D’Onofrio S, Portmann E (2015) Von Fuzzy-Sets zu Computing-with-Words. Informatik-Spektrum 38:1–7
D’Onofrio S, Portmann E, Kaltenrieder P, Myrach T (2016) Enhanced knowledge management by synchronizing mind maps and fuzzy cognitive maps. In: International conference on fuzzy management methods. Fribourg, Switzerland
D’Onofrio S, Wehrle M, Portmann E (2017) Striving for semantic convergence. In: IEEE International Conference on Fuzzy Systems (FUZZ-IEEE 2017), Naples, Italy (Submitted)
Downs RM, Stea D (1973) Cognitive maps and spatial behavior. Image and environment. Aldine Publishing Company, Chicago
Froelich W, Wakulicz-Deja A (2009) Mining temporal medical data using adaptive fuzzy cognitive maps. In: 2nd conference on human system interactions, 2009. HIS 2009. IEEE
Georgopoulos, Voula C, Georgia A Malandraki, Chrysostomos D Stylios (2003) A fuzzy cogni-tive map approach to differential diagnosis of specific language impairment. Artif intell Med 29(3):261–278
Georgiou DA, Botsios SD (2008) Learning style recognition: a three layers fuzzy cognitive map schema. In: IEEE international conference on fuzzy systems, 2008. FUZZ-IEEE 2008. IEEE (IEEE World Congress on Computational Intelligence)
Gerstner W, Kempter R, van Hemmen JL, Wagner H (1999) Pulsed neural networks, chapter hebbian learning of pulse timing in the barn owl auditory system. Bradford Books, MIT Press, Cambridge
Giles BG, Findlay CS, Haas G, LaFrance B, Laughing W, Pembleton S (2007) Integrating conventional science and aboriginal perspectives on diabetes using fuzzy cognitive maps. Soc Sci Med 64(3):562–576
Goldberg DE, Holland JH (1988) Genetic algorithms and machine learning. Mach Learn 3(2):95–99
Goodchild MF (2007) Citizens as Sensors: Web 2.0 and the volunteering of geographic information. GeoFocus (Editorial) 7:8–10
Hanafizadeh P, Aliehyaei R (2011) The application of fuzzy cognitive map in soft system methodology. Syst Pract Action Res 24(4):325–354
Hobbs JR (1985) Granularity. In: Proceedings of international joint conference on artificial intelligence (IJCAI), Los Angeles, CA, pp 432–435
Hossain S, Brooks L (2008) Fuzzy cognitive map modelling educational software adoption. Comput Educ 51(4):1569–1588
Hurwitz JS, Kaufman M, Bowles A (2015) Cognitive computing and big data analytics. Wiley, Hoboken, New Jersey
Iakovidis DK, Papageorgiou E (2011) Intuitionistic fuzzy cognitive maps for medical decision making. IEEE Trans Inf Technol Biomed 15(1):100–107
Innocent PR, John RI (2004) Computer aided fuzzy medical diagnosis. Inf Sci 162(2):81–104
Irani Z, Sharif A, Love PE, Kahraman C (2002) Applying concepts of fuzzy cognitive mapping to model: the IT/IS investment evaluation process. Int J Prod Econ 75(1):199–211
Jetter A, Schweinfort W (2011) Building scenarios with Fuzzy Cognitive Maps: an exploratory study of solar energy. Futures 43(1):52–66
Kaltenrieder P, D’Onofrio S, Portmann E (2015) Enhancing multidirectional communication for cognitive cities. In: 2nd international conference on eDemocracy & eGovernment (ICEDEG). IEEE, pp 38–43
Kaltenrieder P, Altun T, D’Onofrio S, Portmann E, Myrach T (2016) Personal digital assistant 2.0 –a software prototype for cognitive cities. In: IEEE international conference on fuzzy systems (FUZZ-IEEE 2016), Vancouver, Canada
Kang I, Lee S, Choi J (2004) Using fuzzy cognitive map for the relationship management in airline service. Expert Syst Appl 26(4):545–555
Kannappan A, Tamilarasi A, Papageorgiou EI (2011) Analyzing the performance of fuzzy cognitive maps with non-linear hebbian learning algorithm in predicting autistic disorder. Expert Syst Appl 38(3):1282–1292
Kardaras D, Karakostas B (1999) The use of fuzzy cognitive maps to simulate the information systems strategic planning process. Inf Softw Technol 41(4):197–210
Kelly III JE (2015) Computing, cognition and the future of knowing. How humans and machines are forging a new age of understanding. IBM Research
Kim MC, Kim CO, Hong SR, Kwon IH (2008) Forward-backward analysis of RFID-enabled supply chain using fuzzy cognitive map and genetic algorithm. Expert Syst Appl 35(3):1166–1176
Kok K (2009) The potential of fuzzy cognitive maps for semi-quantitative scenario development, with an example from Brazil. Glob Environ Change 19(1):122–133
Kok JL, Titus M, Wind HG (2000) Application of fuzzy sets and cognitive maps to incorporate social science scenarios in integrated assessment models. A case study of urbanization in Ujung Pandang, Indonesia. Integr Assess 1(3):177–188
Kosko B (1986) Fuzzy cognitive maps. Int J Man Mach Stud 24(1):65–75
Kottas T, Boutalis Y, Diamantis V, Kosmidou O, Aivasidis A (2006) A fuzzy cognitive network based control scheme for an anaerobic digestion process. In: 14th Mediterranean conference on control and automation, 2006. MED 2006. IEEE
Kurgan LA, Stach W, Ruan J (2007) Novel scales based on hydrophobicity indices for secondary protein structure. J Theor Biol 248(2):354–366
Laird L (1919) The law of parsimony. Monist 29(3):321–344
Lazzerini B, Mkrtchyan L (2010) Risk analysis using extended fuzzy cognitive maps. In: 2010 international conference on intelligent computing and cognitive informatics (ICICCI). IEEE
Lee KC, Kim JS, Chung NH, Kwon SJ (2002) Fuzzy cognitive map approach to web-mining inference amplification. Expert Syst Appl 22:197–211
Lee S, Kim BG, Lee K (2004) Fuzzy cognitive map-based approach to evaluate EDI performance: a test of causal model. Expert Syst Appl 27(2):287–299
Lo Storto C (2010) Assessing ambiguity tolerance in staffing software development teams by analyzing cognitive maps of engineers and technical managers. In: 2nd international conference on engineering systems management and its applications (ICESMA), 2010. IEEE
Lu W, Yang J, Li Y (2010) Control method based on fuzzy cognitive map and its application on district heating network. In: International conference on intelligent control and information processing (ICICIP), 2010. IEEE
Luo X, Wei X, Zhang J (2009) Game-based learning model using fuzzy cognitive map. In: Proceedings of the first ACM international workshop on multimedia technologies for distance learning. New York, ACM
Luo X, Wei X, Zhang J (2010) Guided game-based learning using fuzzy cognitive maps. IEEE Trans Learn Technol 3(4):344–357
Malone TW, Bernstein MS (2015) Handbook of collective intelligence. MIT Press, Cambridge
Miao C, Yang Q, Fang H, Goh A (2007) A cognitive approach for agent-based personalized recommendation. Knowl-Based Syst 20(4):397–405
Mostashari A, Arnold F, Mansouri M, Finger M (2011) Cognitive cities and intelligent urban governance. Netw Ind Q 13(3):4–7
Papageorgiou EI (2011) A new methodology for decisions in medical informatics using fuzzy cognitive maps based on fuzzy rule-extraction techniques. Appl Soft Comput 11(1):500–513
Papageorgiou EI (2012) Learning algorithms for fuzzy cognitive maps—a review study. IEEE Trans Syst Man Cybern Part C Appl Rev 42(2)
Papageorgiou EI, Salmeron JL (2013) A review of fuzzy cognitive maps research during the last decade. IEEE Trans Fuzzy Syst 21(1):66–79
Papageorgiou EI, Stylios CD, Groumpos PP (2004) Active Hebbian learning algorithm to train fuzzy cognitive maps. Int J Approx Reason 37(3):219–249
Papageorgiou EI, Stylios CD, Groumpos PP (2006) Unsupervised learning techniques for fine-tuning fuzzy cognitive map causal links. Int J Hum Comput Stud 64(8):727–743
Papageorgiou EI, Stylios CD, Groumpos PP (2009) A fuzzy cognitive map based tool for prediction of infectious diseases. In: IEEE international conference on fuzzy systems, 2009. FUZZ-IEEE 2009. IEEE
Parenthoen M, Reignier P, Tisseau J (2001) Put fuzzy cognitive maps to work in virtual worlds. In: The 10th IEEE international conference on fuzzy systems, 2001, vol 1. IEEE
Peláez CE, Bowles JB (1996) Using fuzzy cognitive maps as a system model for failure modes and effects analysis. Inf Sci 88(1–4):177–199
Portmann E, Finger M (2015) Smart Cities–Ein Überblick! HMD Praxis der Wirtschaftsinformatik 1–12
Rodin V, Querrec G, Ballet P, Bataille FR, Desmeulles G, Abgrall JF, Tisseau J (2009) Multi-agents system to model cell signalling by using fuzzy cognitive maps. Application to computer simulation of multiple myeloma. In: 9th IEEE international conference on bioinformatics and bioengineering, 2009. BIBE 2009. IEEE
Rodriguez-Repiso L, Setchi R, Salmeron JL (2007) Modelling IT projects success with fuzzy cognitive maps. Expert Syst Appl 32:543–559
Saaty TL (1996) Decision making with dependence and feedback: the analytic network process. RWS Publications, Pittsburgh
Salmeron JL (2009) Supporting decision makers with fuzzy cognitive maps. Res Technol Manag 52(3):53–59
Salmeron JL, Lopez C (2012) Forecasting risk impact on ERP maintenance with augmented fuzzy cognitive maps. IEEE Trans Softw Eng 38(2):439–452
Sharif AM, Irani Z (2006) Exploring fuzzy cognitive mapping for IS evaluation. Eur J Oper Res 173(3):1175–1187
Siemens G (2005) Connectivism: a learning theory for the digital age. Int J Instr Technol Distance Learn 2(1):3–10
Skov F, Svenning JC (2003) Predicting plant species richness in a managed forest. For Ecol Manage 180:583–593
Strauss A, Corbin J (1994) Grounded theory methodology. Handb Qual Res 17:73–85
Stylios CD, Groumpos PP (1999) A soft computing approach for modelling the supervisor of manufacturing systems. J Intell Rob Syst 26(3):389–403
Stylios CD, Georgopoulos VC (2008) Fuzzy cognitive maps structure for medical decision support systems. Forging new frontiers. Fuzzy pioneers II. Springer, Berlin
Tan CO, Özesmi U (2006) A generic shallow lake ecosystem model based on collective expert knowledge. Hydrobiologica 563(1):125–142
Tolman EC (1948) Cognitive maps in rats and men. Psychol Rev 55(4):15–64
Trappey AJC, Trappey CV, Wu CR (2010) Genetic algorithm dynamic performance evaluation for RFID reverse logistic management. Expert Syst Appl 37(11):7329–7335
van Vliet M, Kok K, Veldkamp T (2010) Linking stakeholders and modellers in scenario studies: the use of fuzzy cognitive maps as a communication and learning tool. Futures 42(1):1–14
Webster J, Watson RT (2002) Analyzing the past to prepare for the future: writing a literature review. MIS quarterly
Whitley D (1994) A genetic algorithm tutorial. Stat Comput 4(2):65–85
Xirogiannis G, Glykas M (2007) Intelligent modeling of e-business maturity. Expert Syst Appl 32(2):687–702
Xirogiannis G, Stefanou J, Glykas M (2004) A fuzzy cognitive map approach to support urban design. Expert Syst Appl 26(2):257–268
Yaman D, Polat S (2009) A fuzzy cognitive map approach for effect-based operations: an illustrative case. Inf Sci 179(4):382–403
Yu R, Tzeng GH (2006) A soft computing method for multi-criteria decision making with dependence and feedback. Appl Math Comput 180(1):63–75
Zadeh LA (1965) Fuzzy sets. Inf Control 8(3):338–353
Zadeh LA (1988) Fuzzy logic. Computer 21(4):83–93
Zadeh LA (1996) Fuzzy logic = computing with words. IEEE Trans Fuzzy Syst 4(2):103–111
Zadeh LA (1998) Some reflections on soft computing, granular computing and their roles in the conception, design and utilization of information/intelligent systems. Soft Comput 2:23–25
Zadeh LA (2006) From search engines to question answering systems—the problems of world knowledge, relevance, deduction and precisiation. In: E. Sanchez (ed) Fuzzy logic and the semantic web, pp 163–210
Zadeh LA (2008) Is there a need for fuzzy logic? Inf Sci 178:2751–2779
Zadeh LA (2011) Computing with words—principal concepts and ideas. Studies in fuzziness and soft computing. Springer, Heidelberg
Author information
Authors and Affiliations
Corresponding author
Editor information
Editors and Affiliations
Rights and permissions
Copyright information
© 2019 Springer Nature Switzerland AG
About this chapter
Cite this chapter
D’Onofrio, S., Papageorgiou, E., Portmann, E. (2019). Using Fuzzy Cognitive Maps to Arouse Learning Processes in Cities. In: Portmann, E., Tabacchi, M., Seising, R., Habenstein, A. (eds) Designing Cognitive Cities. Studies in Systems, Decision and Control, vol 176. Springer, Cham. https://doi.org/10.1007/978-3-030-00317-3_5
Download citation
DOI: https://doi.org/10.1007/978-3-030-00317-3_5
Published:
Publisher Name: Springer, Cham
Print ISBN: 978-3-030-00316-6
Online ISBN: 978-3-030-00317-3
eBook Packages: Intelligent Technologies and RoboticsIntelligent Technologies and Robotics (R0)