Abstract
Intelligent agent-based systems are applied for many real-life difficult problem-solving tasks in domains like transport and healthcare. In the case of many classes of real-life difficult problems, it is important to make an efficient selection of the computing systems that are able to solve the problems very intelligently. The selection of the appropriate computing systems should be based on an intelligence metric that is able to measure the systems intelligence for real-life problem solving. In this paper, we propose a novel universal metric called MeasApplInt able to measure and compare the real-life problem solving machine intelligence of cooperative multiagent systems (CMASs). Based on their measured intelligence levels, two studied CMASs can be classified to the same or to different classes of intelligence. MeasApplInt is compared with a recent state-of-the-art metric called MetrIntPair. The comparison was based on the same principle of difficult problem-solving intelligence and the same pairwise/matched problem-solving intelligence evaluations. Our analysis shows that the main advantage of MeasApplInt versus the compared metric, is its robustness. For evaluation purposes, we performed an illustrative case study considering two CMASs composed of simple reactive agents providing problem-solving intelligence at the systems’ level. The two CMASs have been designed for solving an NP-hard problem with many applications in the standard, modified and generalized formulation. The conclusion of the case study, using the MeasApplInt metric, is that the studied CMASs have the same real-life problems solving intelligence level. An additional experimental evaluation of the proposed metric is attached as an Appendix.




Similar content being viewed by others
Explore related subjects
Discover the latest articles, news and stories from top researchers in related subjects.References
Anthon A, Jannett TC (2007) Measuring machine intelligence of an agent-based distributed sensor network system. In: Elleithy K (ed) Advances and innovations in systems, computing sciences and software engineering. Springer, pp 531–535
Arif M, Illahi M, Karim A, Shamshirband S, Alam KA, Farid S, Iqbal S, Buang Z, Balas VE (2015) An architecture of agent-based multi-layer interactive e-learning and e-testing platform. Qual Quant 49 (6):2435–2458
Arik S, Iantovics LB, Szilagyi SM (2017) OutIntSys - a novel method for the detection of the most intelligent cooperative multiagent systems. In: Liu D et al (eds) 24th International conference on neural information processing, Guangzhou, China, November 14-18. Neural Information Processing, LNCS, 10637:31–40
Barnett V, Lewis T (1994) Outliers in statistical data, 3rd edn. Wiley, New York
Beni G, Wang J (1993) Swarm intelligence in cellular robotic systems. In: Dario P, Sandini G, Aebischer P (eds) Robots and biological systems: towards a new bionics? NATO ASI Series (Series F: Computer and Systems Sciences), vol 102. Springer, Berlin, pp 703–712
Bejar II, Whalen SJ (2003) Methods and systems for presentation and evaluation of constructed responses assessed by human evaluators, US Patent 6,526,258
Besold T, Hernandez-Orallo J, Schmid U (2015) Can machine intelligence be measured in the same way as human intelligence? Kunstl Intell 29(3):291–297
Boctor FF, Laporte G, Renaud J (2003) Heuristics for the traveling purchaser problem. Comput Oper Res 30:491–504
Bonett DG, Wright TA (2000) Sample size requirements for estimating Pearson, Kendall and Spearman correlations. Psychometrika 65:23–28
Box FJ (1987) Guinness, gosset, fisher, and small samples. Stat Sci 2(1):45–52
Brady SG, Fisher BL, Schultz TR, Ward PS (2014) The rise of army ants and their relatives: diversification of specialized predatory doryline ants. BMC Evol Biol 14:2–14
Bullnheimer B, Hartl RF, Strauss C (1999) A new rank based version of the ant system. A computational study. CEJOR 7(1):25–38
Chakraborty UK, Konar D, Roy S, Choudhury S (2016) Intelligent fuzzy spelling evaluator for e-Learning systems. Educ Inf Technol 21(1):171–184
Chakravarti IM, Laha RG, Roy J (1967) Handbook of methods of applied statistics, vol I. Wiley, New York, pp 392–394
Chliaoutakis A, Chalkiadakis G (2016) Agent-based modeling of ancient societies and their organization structure. Auton Agent Multi-Agent Syst 30(6):1072–1116
Coelho CGC, Abreu CG, Ramos RM, Mendes AHD, Teodoro G, Ralha CG (2016) MASE-BDI: Agent-based simulator for environmental land change with efficient and parallel auto-tuning. Appl Intell 45(3):904–922
Chmait N, Dowe DL, Green DG, Li YF, Insa-Cabrera J (2015) Measuring universal intelligence in agent-based systems using the anytime intelligence test. Technical Report, Monash University, Report Num, 2015/279
Chouhan SS, Niyogi R (2017) MAPJA: multi-agent planning with joint actions. Appl Intell 47(4):1044–1058
Colom R, Karama S, Jung RE, Haier RJ (2010) Human intelligence and brain networks. Dialogues Clin Neurosci 12(4):489–501
Colorni A, Dorigo M, Maniezzo V (1991) Distributed optimization by ant colonies. In: Actes de la première conférence européenne sur la vie artificielle. Paris, France, Elsevier Publishing, 134–142
Conley W (1988) Travelling salesman problem solved with simulation techniques. Int J Syst Sci 19(10):2115–2122
Conley W (1989) Two truck travelling salesman simulation. Int J Syst Sci 20(12):2495–2514
Conley W (1990) Multi-stage Monte Carlo optimization applied to a large travelling salesman problem. Int J Syst Sci 21(3):547–566
Conover WJ (1973) On methods of handling ties in the wilcoxon signed-rank test. J Am Stat Assoc 68 (344):985–988
Cordon O, Herrera F, de Viana IF, Moreno L (2000) A new ACO model integrating evolutionary computation concepts: The Best-Worst ant system. In: Proceedings of ANTS’2000. From ant colonies to artificial ants: second international workshop on ant algorithms, Brussels, Belgium, September 7–9, 22–29
Cordon O, de Viana IF, Herrera F (2002) Analysis of the best-worst ant system and its variants on the QAP. In: Dorigo M, Di Caro G, Sampels M (eds) Ant algorithms, vol 2463. Springer, LNCS, Berlin, Heidelberg, pp 228–234
Crisan GC, Pintea CM, Palade V (2017) Emergency management using geographic information systems: application to the first Romanian traveling salesman problem instance. Knowl Inf Syst 50(1):265–285
Dantzig GB, Ramser JH (1959) The truck dispatching problem. Manag Sci 6:80–91
Dantzig G, Fulkerson D, Johnson S (1954) Solution of a large scale traveling salesman problem. Oper Res 2:393–410
David HA, Gunnink JL (1997) The paired t test under artificial pairing. Am Stat 51(1):9–12
Dorigo M (1992) Optimization, learning and natural algorithms. PhD thesis, Politecnico di Milano, Italy
Dorigo M, Gambardella LM (1997) Ant colony system: a cooperative learning approach to the traveling salesman problem. IEEE Trans Evol Comput 1(1):53–66
Dowe DL, Hernández-Orallo J (2014) How universal can an intelligence test be? Adapt Behavior Animals Animats Softw Agents Robots Adapt Syst Arch 22(1):51–69
Everitt B (1998) The cambridge dictionary of statistics Cambridge. Cambridge University Press, New York
Fay MP, Proschan MA (2010) Wilcoxon–mann–whitney or t-test? On assumptions for hypothesis tests and multiple interpretations of decision rules. Stat Surveys 4:1–39
Ferrucci D, Levas A, Bagchi S, Gondek D, Mueller ET (2013) Watson: beyond jeopardy! Artif Intell 199–200:93–105
Franklin D, Abrao A (2000) Measuring software agent’s intelligence. In: Proceedings of international conference: advances in infrastructure for electronical business science and education on the internet. L’Aquila, Italy
Galton F (1886) Regression towards mediocrity in hereditary stature. J Anthropol Inst G B Irel 15:246–263
Grotschel M, Padberg MW (1978) On the symmetric travelling salesman problem: theory and computation. In: Henn R, Korte B, Oettli W (eds) Optimization and operations research. Lecture notes in economics and mathematical systems. vol 157, Springer, Berlin, pp 105–115
Hernandez-Orallo J, Dowe DL (2010) Measuring universal intelligence: towards an anytime intelligence test. Artif Intell 174(8):1508–1539
Hernández-Orallo J, Dowe DL, Hernández-Lloreda MV (2014) Universal psychometrics: measuring cognitive abilities in the machine kingdom. Cogn Syst Res 27:50–74
Hibbard B (2011) Measuring agent intelligence via hierarchies of environments. Artificial General Intelligence, Lecture Notes in Computer Science 6830:303–308
Hsieh FS (2017) A hybrid and scalable multi-agent approach for patient scheduling based on Petri net models. Appl Intell 7(4):1068–1086
Iantovics LB, Emmert-Streib F, Arik S (2017) Metrintmeas a novel metric for measuring the intelligence of a swarm of cooperating agents. Cogn Syst Res 45:17–29
Iantovics LB, Rotar C, Niazi AN (2018) Metrintpair-a novel accurate metric for the comparison of two cooperative multiagent systems intelligence based on paired intelligence measurements. Int J Intell Syst 33(3):463–486
Iantovics LB, Zamfirescu CB (2013) ERMS: an evolutionary reorganizing multiagent system, innovative computing. Inf Control 9(3):1171–1188
Iqbal S, Altaf W, Aslam M, Mahmood W, Khan MUG (2016) Application of intelligent agents in health-care: review. Artif Intell Rev 46(1):83–112
Johnson BR, Borowiec ML, Chiu JC, Lee EK, Atallah J, Ward PS (2013) Phylogenomics resolves evolutionary relationships among ants, bees, and wasps. Curr Biol 23(20):1–5
Jussila J, Vuori V, Okkonen J, Helander N (2017) Reliability and perceived value of sentiment analysis for twitter data. In: Kavoura A, Sakas D, Tomaras P (eds) Strategic innovative marketing. Springer proceedings in business and economics. Springer, Cham, pp 43–48
Kafali O, Yolum P (2016) PISAGOR: a proactive software agent for monitoring interactions. Knowl Inf Syst 47(1):215–239
Kwon H, Pack DJ (2012) A robust mobile target localization method for cooperative unmanned aerial vehicles using sensor fusion quality. J Intell Robot Syst 65(1):479–493
Leeuwen JV (ed) (1998) Handbook of theoretical computer science, vol A. Algorithms and complexity. Elsevier, Amsterdam
Lowry R Concepts & applications of inferential statistics. http://vassarstats.net/textbook
Mann PS (1995) Introductory statistics, 2nd edn. Wiley, New York
Mann HB, Whitney DR (1947) On a test of whether one of two random variables is stochastically larger than the other. Ann Math Stat 18(1):50–60
Marusteri M, Bacarea V (2010) Comparing groups for statistical differences: how to choose the right statistical test? Biochemia Medica 20(1):15–32
Merkle D, Middendorf M (2005) On solving permutation scheduling problems with ant colony optimization. Int J Syst Sci 36(5):255–266
Munteanu C, Rosa A (2004) Gray-scale image enhancement as an automatic process driven by evolution. IEEE Trans Syst Man Cybern B Cybern 34(2):1292–1298
Myers JL, Well AD (2003) Research design and statistical analysis, 2nd edn. Lawrence Erlbaum, Mahwah, p 508
Neisser U, Boodoo G, Bouchard TJ, Boykin AW, Brody N, Ceci SJ, Halpern DF, Loehlin JC, Perloff R, Sternberg RJ, Urbina S (1996) Intelligence: knowns and unknowns. Am Psychol 51(2):77–101
Newborn M (1997) Kasparov vs deep blue: computer chess comes of age. Springer, New York
Niazi M, Hussain A (2011) Agent-based computing from multi-agent systems to agent-based models: a visual survey. Scientometrics 89(2):479–499
Nick TG (2007) Descriptive statistics. Topics in biostatistics. Methods Mol Biol 404:33–52
Ouaarab A, Ahiod B, Yang XS (2014) Discrete cuckoo search algorithm for the travelling salesman problem. Neural Comput Appl 24:1659
Pearson K (1895) Notes on regression and inheritance in the case of two parents. Proc R Soc Lond 58:240–242
Pholdee N, Bureerat S (2016) Hybrid real-code ant colony optimisation for constrained mechanical design. Int J Syst Sci 47(2):474–491
Prakasam A, Savarimuthu N (2016) Metaheuristic algorithms and probabilistic behaviour: a comprehensive analysis of ant colony optimization and its variants. Artif Intell Rev 45(1):97–130
Pratt JW (1959) Remarks on zeros and ties in the Wilcoxon signed rank procedures. J Am Stat Assoc 54 (287):655–667
Pratt JW, Gibbons JD (1981) Concepts of nonparametric theory. Springer, New York
Rosing MT (1999) 13C-depleted carbon microparticles in >3700-Ma sea-floor sedimentary rocks from West Greenland. Science 283(5402):674–676
Rouse WB, Sandra H (1983) Rouse analysis and classification of human error. IEEE Trans Syst Man Cybern SMC-13(4):539—549
Runkler TA (2005) Ant colony optimization of clustering models. Int J Int Syst 20:1233–1251
Schreiner K (2000) Measuring IS: toward a US standard. IEEE Intell Syst Their Appl 15(5):19–21
Sanghi P, Dowe DL (2003) A computer program capable of passing I.Q. tests. In: Slezak PP (ed) Proceedings of the joint international conference on cognitive science, 4th ICCS international conference on cognitive science and 7th ASCS Australasian society for cognitive science (ICCS/ASCS 2003). Sydney, NSW, Australia, pp 570–575
Sharkey AJC (2006) Robots, insects and swarm intelligence. Artif Intell Rev 26(4):255–268
Saska M, Vonasek V, Krajnik T, Preucil L (2014) Coordination and navigation of heterogeneous MAV–UGV formations localized by a ‘hawk-eye’-like approach under a model predictive control scheme. Int J Robot Res 33(10):1393–1412
Shapiro SS, Wilk MB (1965) An analysis of variance test for normality. Biometrika 52(3-4):591–611
Sharpanskykh A, Haest R (2016) An agent-based model to study compliance with safety regulations at an airline ground service organization. Appl Intell 45(3):881–903
Siegel S (1956) Non-parametric statistics for the behavioral sciences. McGraw-Hill, New York, pp 75–83
Siorpaes K, Simperl E (2010) Human intelligence in the process of semantic content creation. World Wide Web 13(1-2):33–59
Song ZC, Ge YZ, Duan H, Qiu XG (2016) Agent-based simulation systems for emergency management. Int J Autom Comput 13(2):89–98
Stigler SM (1989) Francis galton’s account of the invention of correlation. Stat Sci 4(2):73–79
Stutzle T, Hoos HH (1997) The MAX-MIN ant system and local search for the traveling salesman problem. In: Proceedings ICEC97. IEEE Press, Piscataway, pp 309–314
Stützle T, Hoos HH (2000) MAX MIN ant system. Futur Gener Comput Syst 16:889–914
Tokody D, Mezei IJ, Schuster G (2017) An overview of autonomous intelligent vehicle systems. In: Jármai K, Bolló B (eds) Vehicle and automotive engineering. Lecture notes in mechanical engineering, vol PartF12. Springer, pp 287–307
Turing AM (1950) Computing machinery and intelligence. Mind 59:433–460
Wilcoxon F (1945) Individual comparisons by ranking methods. Biom Bull 1(6):80–83
Winklerova Z (2013) Maturity of the particle swarm as a metric for measuring the collective intelligence of the swarm. Advances in Swarm Intelligence, LNCS 7928:40–54
Won ZB, Do CB, Jeong YK, Han S (2002) Machine intelligence quotient: its measurements and applications. Fuzzy Sets Syst 127(1):3–16
Zarandi MHF, Hadavandi E, Turksen IB (2012) A hybrid fuzzy intelligent agent-based system for stock price prediction. Int J Intell Syst 27(11):947–969
Zhang Y, Wang H, Zhang Y, Chen Y (2011) Best-worst ant system. In: Proceedings of the 3rd international conference on advanced computer control (ICACC), pp 392–395
Yager RR (1997) Intelligent agents for World Wide Web advertising decisions. Int J Intell Syst 12(5):379–390
Yang K, Galis A, Guo X, Liu D (2003) rule-driven mobile intelligent agents for real-time configuration of IP networks, knowledge-based intelligent information and engineering systems. Lect Notes Comput Sci 2773:921–928
Acknowledgments
This work has been funded by the CHIST-ERA programme supported by the Future and Emerging Technologies (FET) programme of the European Union through the ERA-NET funding scheme under the grant agreements, title SOON - Social Network of Machines.
Author information
Authors and Affiliations
Corresponding author
Additional information
Publisher’s note
Springer Nature remains neutral with regard to jurisdictional claims in published maps and institutional affiliations.
Electronic supplementary material
Below is the link to the electronic supplementary material.
Rights and permissions
About this article
Cite this article
Iantovics, L.B., Kovács, L. & Rotar, C. MeasApplInt - a novel intelligence metric for choosing the computing systems able to solve real-life problems with a high intelligence. Appl Intell 49, 3491–3511 (2019). https://doi.org/10.1007/s10489-019-01440-5
Published:
Issue Date:
DOI: https://doi.org/10.1007/s10489-019-01440-5