National Academies Press: OpenBook
« Previous: Appendix B International Visits
Suggested Citation:"Appendix C References ." National Research Council. 2014. Complex Operational Decision Making in Networked Systems of Humans and Machines: A Multidisciplinary Approach. Washington, DC: The National Academies Press. doi: 10.17226/18844.
×

Appendix C
REFERENCES

Bass, R. F. 1987. Computer-assisted observer training. Journal of Applied Behavior Analysis, 20(1):83–88.

Beck, A. H., Sangoi, A. R. Leung, S. Marinelli, R. J. Nielsen, T.O., va de Vijver, M. J. West, R. B., va de Rijn, M, and D. Koller. 2011. Systematic analysis of breast cancer morphology uncovers stromal features associated with survival. Science Translational Medicine, 3(108):108-113.

Benson, K., and S. Rotkoff. 2011. Goodbye, OODA loop. Armed Forces Journal, 26–41.

Berker A. O., M. Bikson, S. Bestmann. 2013. Predicting the behavioural impact of transcranial direct current stimulation: issues and limitations. Frontiers of Human Neuroscience.

Bradshaw, J. M., R. Hoffman, M. Johnson, and D. Woods. 2013. The seven deadly myths of “autonomous systems.” IEEE Intelligent Systems, 28(3):54–61. doi:10.1109/MIS.2013.70.

Bradshaw, J. M., P. Feltovich, M. Johnson, M. Breedy, L. Bunch, T. Eskridge, H. Jung, J. Lott, A. Uszok, and J. van Diggelen. 2009. From tools to teammates: Joint activity in human-agent-robot teams. Human centered design. In Lecture Notes in Computer Science, vol. 5619, Masaki Kurosu, ed. Berlin, Germany: Springer, 935–944.

Bullard L.M., E. S. Browning, V. P. Clark, B. A. Coffman, C M. Garcia, R. E. Jung, A. J. van der Merwe, K. M. Paulson, A. A. Vakhtin, C. L. Wootton, M. P. Weisend. 2011. Transcranial direct current stimulation's effect on novice versus experienced learning.. Exp Brain Res. 2011 Aug;213(1):9-14. doi: 10.1007/s00221-011-2764-2. Epub 2011 Jun 26.

Casini E., J. Depree, N. Suri, J. M. Bradshaw, and T. Nieten. Enhancing decision-making by leveraging human intervention in large-scale sensor networks. MILCOM 2014, in press.

Christoffersen, K., and D. Woods. 2002. How to make automated systems team players. In Advances in Human Performance and Cognitive Engineering Research, vol. 2, E. Salas, ed. JAI Press/Emerald.

Clark, H., and S. Brennan. 1991. Grounding in communication. In Perspectives on Socially Shared Cognition, L. Resnick, J. Levine, and S. Teasley, eds. Washington, DC: American Psychological Association, 127–149.

Suggested Citation:"Appendix C References ." National Research Council. 2014. Complex Operational Decision Making in Networked Systems of Humans and Machines: A Multidisciplinary Approach. Washington, DC: The National Academies Press. doi: 10.17226/18844.
×

Cooke, N. J., J. C. Gorman, C. W. Myers, and J. L. Duran. 2013. Interactive team cognition. Cognitive Science, 37(2):255–285. doi: 10.1111/cogs.12009.

Cooke, N. J., E. Salas, P. A. Kiekel, and B. Bell. 2004. Advances in measuring team cognition. In Team cognition: Understanding the factors that drive process and performance, E. Salas, S. M. Fiore, and J. A. Cannon-Bowers, eds. Washington, DC: American Psychological Association.

Crandall, J., and M. L. Cummings. 2007. Developing performance metrics for the supervisory control of multiple robots. Proceedings of the ACM/IEEE International Conference on Human-Robot Interaction. Washington, DC.

Cuevas, H. M., S. M. Fiore, B. S. Caldwell, and L. Strater. 2007. Augmenting team cognition in human-automation teams performing in complex operational environments. Aviation, Space, and Environmental Medicine; 78(5, Suppl.):B63–70.

Cummings, M. L. 2013. Man versus nachine. (under review 2014).

Cummings, M. L., and B. Donmez. 2013. Metrics for supervisory control system evaluation. Oxford Handbook of Cognitive Engineering, J. Lee and A. Kirlik, eds. New York, NY: Oxford University Press, 367–378.

Cummings, M. L., S. Bruni, and P. J. Mitchell. 2010. Human supervisory control challenges in network-centric operations. Reviews of Human Factors and Ergonomics, 6:34–78. doi:10.1518/155723410X12849346788660.

Defense Science Board. 2012. Task Force Report: The Role of Autonomy in DoD Systems. Office of the Under Secretary of Defense for Acquisition, Technology and Logistics: Washington, DC.

Dekker, S. W. A., and D. D. Woods. 2002. MABA_MABA or abracadabra? Progress in human-automation coordination. Cognition, Technology & Work, 4(4):240–244.

de Winter, J., and D. Dodou. 2014. Why the Fitts list has persisted throughout the history of function allocation. Cognition, Technology & Work, 16:1–11.

Donmez, B., P. E. Pina and M. L. Cummings. 2009. Evaluation criteria for human-automation performance metrics. In Performance Evaluation and Benchmarking of Intelligent Systems, R. Madhavan, E. Tunstel, and E. Messina, eds. New York: Springer Science+Business Media. doi:10.1007/978-1-4419-0492-8.

Dourish, P. 2001. Where the Action Is: The Foundations of Embodied Interaction. Cambridge, MA: MIT Press.

Suggested Citation:"Appendix C References ." National Research Council. 2014. Complex Operational Decision Making in Networked Systems of Humans and Machines: A Multidisciplinary Approach. Washington, DC: The National Academies Press. doi: 10.17226/18844.
×

Entin, E. E., and E. B. Entin. 2001. Measures for evaluation of team processes and performance in experiments and exercises. Proceedings of the 6th International Command and Control Research and Technology Symposium, U.S. Naval Academy, Annapolis, MD.

Falk, E.B., M. B. O’Donnell, and M. D. Lieberman. 2012. Getting the word out: Neural correlates of enthusiastic message propagation. Frontiers in Human Neuroscience, 6:313.

Falk, E.B., E. T. Berkman, T. Mann, B. Harrison, and M. D. Lieberman. 2010. Predicting persuasion-induced behavior change from the brain. Journal of Neuroscience, 30: 8421-8424.

Fiore, S., and J. Schooler. 2004. Process mapping and shared cognition: Teamwork and the development of shared problem models. In Team Cognition: Understanding the Factors that Drive Process and Performance, E. Salas and S. Fiore, eds. American Psychological Association.

Fischhoff, B. 1975. Hindsight ≠ foresight: The effect of outcome knowledge on judgment under uncertainty. Journal of Experimental Psychology: Human Perception and Performance, 1:288–299.

Fishelson, M., and D. Geiger. 2002. Exact genetic linkage computations for general pedigrees. Bioinformatics, 18(12):s189-s198.

Fitts, P. M., ed. 1951. Human Engineering for an Effective Air Navigation and Traffic Control System. Washington, DC: National Research Council.

Flemisch, F, C. A. Adams, S. R. Conway, K. H. Goodrich, M. T. Palmer, and P. C. Schutte. 2003. The H-Metaphor as a Guideline for Vehicle Automation and Interaction (Report no. NASA/TM—2003-212672). Hampton, VA: NASA, Langley Research Center.

Forbes-Riley, K., and D. Litman. 2011. When does disengagement correlate with learning in spoken dialog computer tutoring? In Artificial Intelligence in Education, 22(2): 81–89.

Gal, Y., B. Grosz, S. Kraus, A. Pfeffer, and S. Shieber. 2010. Agent decision making in open mixed networks. Artificial Intelligence, 174(18):1460–1480.

Gerson, A. D., L. C. Parra, and P. Sajda. 2006. Cortically coupled computer vision for rapid image search. IEEE Transactions on Neural Systems and Rehabilitation Engineering : A Publication of the IEEE Engineering in Medicine and Biology Society, 14(2):174–179. doi:10.1109/TNSRE.2006.875550.

Gigerenzer, G. 2008. Why heuristics work. Perspectives on Psychological Science, 3(1):20-29.

Suggested Citation:"Appendix C References ." National Research Council. 2014. Complex Operational Decision Making in Networked Systems of Humans and Machines: A Multidisciplinary Approach. Washington, DC: The National Academies Press. doi: 10.17226/18844.
×

Gigerenzer, G., P. M. Todd, and the ABC Research Group. 1999. Simple Heuristics that Make Us Smart. New York: Oxford University Press.

Gigerenzer, G., and D. G. Goldstein. 1996. Reasoning the fast and frugal way: Models of bounded rationality. Psychological Review, 103(4):650–669.

Grant, J., S. Kraus, and D. Perlis. 2005. Formal Approaches to Teamwork. In We Will Show Them: Essays in Honor of Dov Gabbay, vol. 2, S. Artemov, H. Barringer, A. S. d’Avila Garcez, L. Lamb, and J. Woods, eds. London: College Publications.

Grosz, B., and S. Kraus. 1996. Collaborative plans for complex group action. Artificial Intelligence, 86(2):269–357.

Hammond, J.S., R. L. Keeney, and H. Raiffa, 1999. Smart Choices: A Practical Guide to Making Better Decisions. Boston, MA: Harvard Business School Press.

Heckerman, D, Geiger, D, and Chickering, DM, Learning Bayesian Networks: The Combination of Knowledge and Statistical Data, Machine Learning. 1995. 20, p 197-243.

Hey, T., S. Tansley, and K. Tolle. 2009. The Fourth Paradigm: Data-intensive Scientific Discovery. Microsoft Research.

Hoffman, R. R., J. D. Lee, D. D. Woods, N. Shadbolt, J. Miller, and J.M. Bradshaw. 2009. The dynamics of trust in cyberdomains. IEEE Intelligent Systems, Nov/Dec: 5-11.

Hoffman, R. R., M. Johnson, J.M. Bradshaw, and A. Underbrink. 2013. Trust in automation. IEEE Intelligent Systems, 28(1):84-88.

Hollan, J., E. Hutchins, and D. Kirsh. 2000. Distributed cognition: Toward a new foundation for human-computer interaction research. ACM Transactions on Computer-Human Interaction: Special Issue on Human-Computer Interaction in the New Millennium, Part 2, 7(2):174–196.

Hollnagel, E., D. D. Woods, and N. Leveson, eds. 2006. Resilience Engineering: Concepts And Precepts. Aldershot, England, and Burlington, VT: Ashgate Publishing Company.

Hollnagel, E., and D. Woods. 2005. Joint Cognitive Systems: Foundations of Cognitive Systems Engineering. Boca Raton, FL: Taylor & Francis.

Horvitz, E. 1999. Principles of mixed-initiative user interfaces. Proceedings of Special Interest Group on Computer-Human Interaction.

Suggested Citation:"Appendix C References ." National Research Council. 2014. Complex Operational Decision Making in Networked Systems of Humans and Machines: A Multidisciplinary Approach. Washington, DC: The National Academies Press. doi: 10.17226/18844.
×

Horvitz, E., C. Ruokanga, and S. A. Srinivas, and M. Barry. 1992. A Decision-Theoretic Approach to the Display of Information for Time-Critical Decisions: The Vista Project, In Proceedings of SOAR-92.

Howard, R.A., and J.E. Matheson, ed. Readings on the Principles and Applications of Decision Analysis. 1984. Menlo Park, CA: Strategic Decisions Group.

Hughes, G., S. Mathan, and N. Yeung. 2013. EEG indices of reward motivation and target detectability in a rapid visual detection task. NeuroImage, 64(1):590–600.

Hutchins, E. 1995. Cognition in the Wild. Cambridge, MA: MIT Press.

Itti, L., and C. Koch. Computational modelling of visual attention. 2001 Nature Reviews Neuroscience, 2(3):194-203.

Itti, L., G. Rees, and J. K. Tsotsos. 2005. Neurobiology of Attention, Burlington, MA: Academic Press.

Itti, L., and P. F. Baldi, A principled aproach to detecting surprising events in video. 2005. In: Proc. IEEE Conference on Computer Vision and Pattern Recognition (CVPR), Volume 1:631-637.

Jarrasse, N., V. Sanguineti, and E. Burdet. 2014. Slaves no longer: Review on role assignment for human–robot joint motor action. Adaptive Behavior, 22(1):70–82. doi:10.1177/1059712313481044.

Jennings, N. R., K. Sycara, and M. Wooldridge. 1998. A roadmap of agent research and development. Autonomous Agents and Multi-Agent Systems, 1(1):7–38.

Johnson, M., J.M. Bradshaw, P. J. Feltovich, C. M. Jonker, M. B. van Riemsdijk, and M. Sierhuis. 2014a. Coactive design: designing support for interdependence in joint activity. Journal of Human-Robot Interaction, 3(1):43-69.

Johnson, M., Bradshaw, J. M., Feltovich, P., Hoffman, R. R., and Woods, D. D. 2014b. The Seven Virtues of Effective Human-Machine Teamwork, IEEE Intelligent Systems, in press.

Kahneman, D. Thinking, Fast And Slow. 2011. New York, NY: Farrar, Straus and Giroux.

Keeney, R.L. 1992. Value-Focused Thinking: A Path to Creative Decisionmaking. Cambridge, MA: Harvard University Press.

Kinny, D., M. Ljungberg, A. S. Rao, E. Sonenberg, G. Tidhar, and E. Werner. 1994. Planned team activity. In Artificial Social Systems - Selected Papers from the Fourth European Workshop on Modelling Autonomous Agents and Multi-Agent Worlds,

Suggested Citation:"Appendix C References ." National Research Council. 2014. Complex Operational Decision Making in Networked Systems of Humans and Machines: A Multidisciplinary Approach. Washington, DC: The National Academies Press. doi: 10.17226/18844.
×

MAAMAW-92 (Lecture Notes in Artificial Intelligence), C. Castelfranchi and E. Werner, eds. Heidelberg, Germany: Springer-Verlag 830, 227–256.

Kirsh, D. 2013. Embodied cognition and the magical future of interaction design. ACM Transactions on Computer-Human Interaction, 20(1). doi:http://dx.doi.org/10.1145/2442106.2442109.

Klein, G. A. 2008. Naturalistic decision making. Human Factors, 50(3):456–460.

Klein, G., B. M. Moon, and R. R. Hoffman. 2006a. Making sense of sensemaking: 1: alternative perspectives. IEEE Intelligent Systems, 21(4):70-73.

Klein, G., Brian M. Moon, and Robert R. Hoffman. 2006b. Making sense of sensemaking: 2: a macrocognitive model. IEEE Intelligent Systems, 21(5):88-91.

Klein, G., D. D. Woods, J. M. Bradshaw, R. R. Hoffman, and P. J. Feltovich. 2004. Ten challenges for making automation a ‘team player’ in joint human-agent activity. IEEE Intelligent Systems, 19(6 ):91-95.

Koller, D, and N. Friedman. 2009. Probabilistic Graphical Models: Principles and Techniques. Cambridge, MA: MIT Press.

Krizhevsky, A., I. Sustskever, and G. E. Hinton. ImageNet classification with deep convolutional neural networks. 2012. Advances in Neural Information Processing 25, Cambridge, MA: MIT Press.

Kruse, A.A. 2007. Operational neuroscience: neurophysiological measures in applied environments. Aviat Space Environ Med. 78(5), 4–191.

Law, E., and L. von Ahn. 2011. Human computation. Synthesis Lectures on Artificial Intelligence and Machine Learning, 5(3): 1-121. doi: 10.2200/S00371ED1V01Y201107AIM013

Lee, J., and N. Moray. 1994. Trust, self-confidence, and operators’ adaptation to automation. International Journal of Human-Computer Studies, 40(1):153–184.

Levesque, H., P. Cohen, and J. Nunes. 1990. On acting together. Proceedings of the Eighth National Conference on Artificial Intelligence, 94–99.

Macdonald, J. S. P., S. Mathan, and N. Yeung. 2011. Trial-by-trial variations in subjective attentional state are reflected in ongoing prestimulus EEG alpha oscillations. Frontiers in Psychology, 2(82).

Manual, A. L., A. W. David, M. Bikson, A. Schnider. 2014. A. Frontal tDCS modulates orbitofrontal reality filtering. Neuroscience 264: 21-27.

Suggested Citation:"Appendix C References ." National Research Council. 2014. Complex Operational Decision Making in Networked Systems of Humans and Machines: A Multidisciplinary Approach. Washington, DC: The National Academies Press. doi: 10.17226/18844.
×

Marshall, S. P. 2007. Identifying cognitive state from eye metrics. Aviation, Space, & Environmental Medicine, 78(5):165-175;

Marshall, S. P. 2007. Measures of attention and cognitive effort in tactical decision making. In M. Cook, J. Noyes, & V. Masakowski (Eds.), Decision Making in Complex Environments (321-332). Aldershot, Hampshire UK: Ashgate Publishing

Mathan, S., D. Erdogmus, C. Huang, M. Pavel, P. Ververs, J. Carciofini, M. Dorneich, and S. Whitlow. 2008. Rapid image analysis using neural signals. CHI ‘08 Extended Abstracts on Human Factors in Computing Systems (Florence, Italy, April 05–10, 2008). ACM, New York, NY, 3309-–3314.

McKendrick, R., T. Shaw, E. de Visser, H. Saquer, B. Kidwell, and R. Parasuraman. 2014. Team performance in networked supervisory control of unmanned air vehicles: Effects of automation, working memory and communication. Human Factors, 56(3):463-–475. doi:10.1177/0018720813496269.

Mercier, H., and D. Sperber. 2011. Why do humans reason? Arguments for an argumentative theory. Behavioral and Brain Sciences, 34(2):57–74.

Miller, A.C. 1976. Development of Automated Aids for Decision Analysis. Stanford Research Institute: Menlo Park, CA.

Miller, C. 2012. Frameworks for supervisory control: Characterizing relationships with uninhabited vehicles. Journal of Human-Robot Interaction, 1(2):183–201.

Moore, D.T. and R.R. Hoffman. Sensemaking: a transformative paradigm. 2011. American Intelligence Journal, 29(1):26-36.

Morrow, D. G., and U. M. Fischer. 2013. Communication in socio-technical systems. In The Oxford Handbook of Cognitive Engineering, J. Lee and A. Kirlik, eds. Oxford: Oxford University Press, 178–199.

National Research Council. 2013. Frontiers in Massive Data Analysis. Washington, DC: The National Academies Press.

National Research Council. 2014. Emerging and Readily Available Technologies and National Security—A Framework for Addressing Ethical, Lethal and Societal Issues. Washington, DC: National Academies Press.

National Research Council. 2014. Autonomy Research for Civil Aviation: Toward a New Era of Flight. Washington, DC: National Academies Press.

National Research Council. 2008. Emerging Cognitive Neuroscience and Related Technologies. Washington, DC: National Academies Press.

Suggested Citation:"Appendix C References ." National Research Council. 2014. Complex Operational Decision Making in Networked Systems of Humans and Machines: A Multidisciplinary Approach. Washington, DC: The National Academies Press. doi: 10.17226/18844.
×

Nikolaidis, S., and J. A. Shah. 2013. Human-robot cross-training: Computational formulation, modeling and evaluation of a human team training strategy. Proceedings of the 8th ACM/IEEE International Conference on Human Robot Interaction, 33–40. doi:10.1109/HRI.2013.6483499.

Norman, D. A. 2013. The Design of Everyday Things (revised and expanded edition). New York; London: Basic Books; MIT Press (British Isles only).

Norman, D. A. 2007. The Design of Future Things. New York: Basic Books. Norman, D. A. 1988. The Psychology of Everyday Things. New York: Basic Books.

Olsen, D. R., and M. A. Goodrich. 2003. Metrics for Evaluating Human-Robot Interactions. Presented at the Performance Metrics for Intelligent Systems, Gaithersburg, MD, 2003.

Oudiette, D., J. W. Antony, J. D. Creery, and K. A. Paller. 2013. The role of memory reactivation during wakefulness and sleep in determining which memories endure. The Journal of Neuroscience, 33(15):6672–6678.

Parasuraman, R., T. Sheridan, and C. Wickens. 2000. A model for types and levels of human interaction with automation. IEEE Transactions on Systems, Man, and Cybernetics–Part A: Systems and Humans, 30(2):286–297.

Parasuraman, R., and V. Riley. 1997. Humans and automation: Use, misuse, disuse, abuse. Human Factors, 39(2):230–253.

Pearl, J. 2009. Causality: Models, Reasoning, and Inference. 2nd Edition, Cambridge: Cambridge University Press.

Pearl, J. 1988. Probabilistic Reasoning in Intelligent Systems: Networks of Plausible Inference. San Mateo, CA: Morgan Kaufmann Publishers.

Pina, P. E., B. Donmez, and M. L. Cummings. 2008. Selecting Metrics to Evaluate Human Supervisory Control Applications. Cambridge, MA: MIT Humans and Automation Laboratory.

Pohlmeyer, E. A., J. Wang, D. C. Jangraw, B. Lou, S.-F. Chang, and P. Sajda. 2011. Closing the loop in cortically-coupled computer vision: A brain-computer interface for searching image databases. Journal of Neural Engineering, 8(3). doi:10.1088/17412560/8/3/036025.

Pritchett, A. R., S. Y. Kim, and K. M. Feigh, 2014. Modeling human–automation function allocation. Journal of Cognitive Engineering and Decision Making, 8(1)52-77. doi:10.1177/1555343413490944.

Suggested Citation:"Appendix C References ." National Research Council. 2014. Complex Operational Decision Making in Networked Systems of Humans and Machines: A Multidisciplinary Approach. Washington, DC: The National Academies Press. doi: 10.17226/18844.
×

Qian, M., Mario Aguilar, Karen N Zachery, Claudio Privitera, Stanley Klein, Thom Carney, Loren W Nolte; Teledyne Scientific and Imaging LLC, Research Triangle Laboratory, Durham, NC 27713, USA. IEEE transactions on bio-medical engineering (Impact Factor: 2.15). 04/2009; 56(7):1929-37. DOI:10.1109/TBME.2009.2016670.

Quinn, A. J., and B. B. Bederson. 2011. Human Computation: A Survey and Taxonomy of a Growing Field. CHI, ACM 978-1-4503-0267-8/11/05.

Rasmussen, J. 1983. Skills, rules, and knowledge: Signals, signs, and symbols, and other distinctions in human performance models. IEEE Transactions on Systems, Man, and Cybernetics, 13(3):257–266.

Reason, J. T. 1990. Human Error. Cambridge, England; New York: Cambridge University Press.

Raiffa, H. 1968. Decision Analysis: Introductory Readings on Choices Under Uncertainty. Reading, MA: Addison-Wesley.

Raux, A., B. Langner, D. Bohus, A. W. Black, and M. Eskenazi. 2005. Let’s go public! Taking a spoken dialog system to the real world. In Proc. of Interspeech.

Rickel, J., and W. Lewis Johnson. 2003. Extending virtual humans to support team training in virtual reality. In Exploring Artificial Intelligence in the New Millennium, G. Lakemeyer and B. Nebel, eds. San Francisco: Morgan Kaufmann Publishers.

Sajda, P., E. Pohlmeyer, J. Wang, L. C. Parra, C. Christoforou, J. Dmochowski, B. Hanna, C. Bahlmann, M. K. Singh, and Shih-Fu Chang. 2010. In a blink of an eye and a switch of a transistor: Cortically coupled computer vision. Proceedings of the IEEE, 98(3):462–478. doi:10.1109/JPROC.2009.2038406.

Salas, E., N. J. Cooke, and M. A. Rosen. 2008. On teams, teamwork, and team performance: discoveries and developments. Human Factors, 50(3):540–547.

Shachter, R.D. 1986. Evaluating influence diagrams. Operations Research, 34(6)(November-December):871-882.

Schmorrow, D. D., C. A. Bolstad, K. A. May, and H. M. Cuevas. 2012. Editors’ introduction to the special issue on exploring cognitive readiness in complex operational environments: Advances in theory and practice, part I. Journal of Cognitive Engineering and Decision Making, 6(3):271–275.

Smith, P. J., E. McCoy, and C. Layton. 1997. Brittleness in the design of cooperative problem-solving systems: The effects on user performance. IEEE Transactions on Systems, Man and Cybernetics, 27(3):360–371.

Suggested Citation:"Appendix C References ." National Research Council. 2014. Complex Operational Decision Making in Networked Systems of Humans and Machines: A Multidisciplinary Approach. Washington, DC: The National Academies Press. doi: 10.17226/18844.
×

Steinfeld, A., T. Fong, D. Kaber, M. Lewis, J. Scholtz, A. Schultz, and M. Goodrich. 2006. Common metrics for human-robot interaction. HRI ‘06 Proceedings of the 1st ACM SIGCHI/SIGART Conference on Human-Robot Interaction. ACM New York, NY, 33–40. doi:10.1145/1121241.1121249.

Stolcke, A., K. Ries, N. Coccaro, E. Shriberg, R. Bates, D. Jurafsky, P. Taylor, R. Martin, C. Van Ess-Dykema, and M. Meteer. Dialogue act modeling for automatic tagging and recognition of conversational speech. Computational linguistics, 26(3):339–373.

Sycara, K., and M. Lewis. 2004. Integrating agents into human teams. In Team Cognition: Understanding the Factors that Drive Process and Performance, E. Salas and S. Fiore, eds. American Psychological Association.

Tausczik, Y.R., and J.W. Pennebaker. 2013. Improving teamwork using real-time language feedback. CHI, ACM 978-1-4503-1899-0/13/04.

Todd, P. M., and G. Gigerenzer. 2007. Environments that make us smart: Ecological rationality. Current Directions in Psychological Science, 16(3):167–171. doi:10.1111/j.1467-8721.2007.00497.x.

Traum, D., J. Rickel, J. Gratch, and S. Marsella. 2003. Negotiation over tasks in hybrid human-agent teams for simulation-based training. Proceedings of International Conference on Autonomous Agents and Multiagent Systems (AAMAS).

Tversky, A, and D. Kahneman. 1974. Judgment under uncertainty: heuristics and biases. Science, 185(4157):1124-1131.

van Wissen, A., Y. Gal, B. A. Kamphorst, M. V. Dignum. 2012. Human-agent teamwork in dynamic environments. Computers in Human Behavior, 28(1): 23-33. doi: 10.1016/j.chb.2011.08.006.

Wildman, J. L., E. Salas, and P. R. Scott. 2013. Measuring cognition in teams: A cross-domain review. Human Factors, 20(10):1-31. doi:10.1177/0018720813515907

Woods, D. D., and M. Branlat. 2010. Hollnagel’s test: Being “in control” of highly interdependent multi-layered networked systems. Cognition, Technology & Work 12(2):95-101. doi:10.1007/s10111-010-0144-5.

Woolley A. W., C. F. Cabris, A. Pentland., N. Hashmi, T. W. Malone. 2010. Evidence for a collective intelligence factor in the performance of human groups. Science, 330(6004):686-688; doi:10.1126/science.1193147.

Suggested Citation:"Appendix C References ." National Research Council. 2014. Complex Operational Decision Making in Networked Systems of Humans and Machines: A Multidisciplinary Approach. Washington, DC: The National Academies Press. doi: 10.17226/18844.
×
Page 79
Suggested Citation:"Appendix C References ." National Research Council. 2014. Complex Operational Decision Making in Networked Systems of Humans and Machines: A Multidisciplinary Approach. Washington, DC: The National Academies Press. doi: 10.17226/18844.
×
Page 80
Suggested Citation:"Appendix C References ." National Research Council. 2014. Complex Operational Decision Making in Networked Systems of Humans and Machines: A Multidisciplinary Approach. Washington, DC: The National Academies Press. doi: 10.17226/18844.
×
Page 81
Suggested Citation:"Appendix C References ." National Research Council. 2014. Complex Operational Decision Making in Networked Systems of Humans and Machines: A Multidisciplinary Approach. Washington, DC: The National Academies Press. doi: 10.17226/18844.
×
Page 82
Suggested Citation:"Appendix C References ." National Research Council. 2014. Complex Operational Decision Making in Networked Systems of Humans and Machines: A Multidisciplinary Approach. Washington, DC: The National Academies Press. doi: 10.17226/18844.
×
Page 83
Suggested Citation:"Appendix C References ." National Research Council. 2014. Complex Operational Decision Making in Networked Systems of Humans and Machines: A Multidisciplinary Approach. Washington, DC: The National Academies Press. doi: 10.17226/18844.
×
Page 84
Suggested Citation:"Appendix C References ." National Research Council. 2014. Complex Operational Decision Making in Networked Systems of Humans and Machines: A Multidisciplinary Approach. Washington, DC: The National Academies Press. doi: 10.17226/18844.
×
Page 85
Suggested Citation:"Appendix C References ." National Research Council. 2014. Complex Operational Decision Making in Networked Systems of Humans and Machines: A Multidisciplinary Approach. Washington, DC: The National Academies Press. doi: 10.17226/18844.
×
Page 86
Suggested Citation:"Appendix C References ." National Research Council. 2014. Complex Operational Decision Making in Networked Systems of Humans and Machines: A Multidisciplinary Approach. Washington, DC: The National Academies Press. doi: 10.17226/18844.
×
Page 87
Suggested Citation:"Appendix C References ." National Research Council. 2014. Complex Operational Decision Making in Networked Systems of Humans and Machines: A Multidisciplinary Approach. Washington, DC: The National Academies Press. doi: 10.17226/18844.
×
Page 88
Complex Operational Decision Making in Networked Systems of Humans and Machines: A Multidisciplinary Approach Get This Book
×
Buy Paperback | $44.00 Buy Ebook | $35.99
MyNAP members save 10% online.
Login or Register to save!
Download Free PDF

Over the last two decades, computers have become omnipresent in daily life. Their increased power and accessibility have enabled the accumulation, organization, and analysis of massive amounts of data. These data, in turn, have been transformed into practical knowledge that can be applied to simple and complex decision making alike. In many of today's activities, decision making is no longer an exclusively human endeavor. In both virtual and real ways, technology has vastly extended people's range of movement, speed and access to massive amounts of data. Consequently, the scope of complex decisions that human beings are capable of making has greatly expanded. At the same time, some of these technologies have also complicated the decision making process. The potential for changes to complex decision making is particularly significant now, as advances in software, memory storage and access to large amounts of multimodal data have dramatically increased. Increasingly, our decision making process integrates input from human judgment, computing results and assistance, and networks. Human beings do not have the ability to analyze the vast quantities of computer-generated or -mediated data that are now available. How might humans and computers team up to turn data into reliable (and when necessary, speedy) decisions?

Complex Operational Decision Making in Networked Systems of Humans and Machines explores the possibilities for better decision making through collaboration between humans and computers. This study is situated around the essence of decision making; the vast amounts of data that have become available as the basis for complex decision making; and the nature of collaboration that is possible between humans and machines in the process of making complex decisions. This report discusses the research goals and relevant milestones in several enabling subfields as they relate to enhanced human-machine collaboration for complex decision making; the relevant impediments and systems-integration challenges that are preventing technological breakthroughs in these subfields; and a sense of the research that is occurring in university, government and industrial labs outside of the United States, and the implications of this research for U.S. policy. The development of human-machine collaboration for complex decision making is still in its infancy relative to where cross-disciplinary research could take it over the next generation. Complex Operational Decision Making explores challenges to progress, impediments to achieving technological breakthroughs, opportunities, and key research goals.

  1. ×

    Welcome to OpenBook!

    You're looking at OpenBook, NAP.edu's online reading room since 1999. Based on feedback from you, our users, we've made some improvements that make it easier than ever to read thousands of publications on our website.

    Do you want to take a quick tour of the OpenBook's features?

    No Thanks Take a Tour »
  2. ×

    Show this book's table of contents, where you can jump to any chapter by name.

    « Back Next »
  3. ×

    ...or use these buttons to go back to the previous chapter or skip to the next one.

    « Back Next »
  4. ×

    Jump up to the previous page or down to the next one. Also, you can type in a page number and press Enter to go directly to that page in the book.

    « Back Next »
  5. ×

    Switch between the Original Pages, where you can read the report as it appeared in print, and Text Pages for the web version, where you can highlight and search the text.

    « Back Next »
  6. ×

    To search the entire text of this book, type in your search term here and press Enter.

    « Back Next »
  7. ×

    Share a link to this book page on your preferred social network or via email.

    « Back Next »
  8. ×

    View our suggested citation for this chapter.

    « Back Next »
  9. ×

    Ready to take your reading offline? Click here to buy this book in print or download it as a free PDF, if available.

    « Back Next »
Stay Connected!