Awareness is a broad concept, just like “intelligence”, and has many connotations. This paper presents the vision of researchers from Center for Applied Intelligent Systems Research (CAISR) at Halmstad University.
[1] Hintikka, J., “Impossible PossibleWorlds Vindicated”, Journal of Philosophical Logic, 4, pp. 475-484 (1975).
[2] Fagin, R. and Halpern, J.Y., “Belief, Awareness, and Limited Reasoning”, Articial Intelligence, 34, pp. 39-76 (1988).
[3] Modica, S. and Rustichini, A., “Awareness and Partitional Information Structures”, Theory and Decision, 37, pp. 107-124 (1994).
[4] Devanur, N., and Fortnow, L, “A computational theory of awareness and decision making”.
In Proceedings of the 12th Conference on Theoretical Aspects of Rationality and Knowledge, pp
99-107 (2009)
[5] Endsley, M.R., “Toward a Theory of Situation Awareness in Dynamic Systems”, Human Factors, 37, pp. 32-64 (1995).
[6] Gutwin, C., and Greenberg, S., “A Descriptive Framework of Workspace Awareness for Real-Time Groupware”, Computer Supported Cooperative Work, 11, pp. 411-446 (2002).
[7] Zhao, Q, Hsieh, C-H, Naruse, K, and She, Z.,
“Awareness Science and Engineering” (editorial),
Applied Computational Intelligence and Soft Computing, 2012 (2012).
[8] Zhao, Q., “Computational Awareness: Another Way towards Intelligence”, Computational Intelligence (Eds. Madani et al.), Book Series Studies in Computational Intelligence, 465, pp. 3-14 (2013).
[9] Acko, R.L., “From data to wisdom”, Journal of Applied Systems Analysis, 16, pp. 3-9 (1989).
[10] Degani, A., Jorgensen, C, Iverson, D., Shafto, M. and Olson, L., “On Organization of Information: Approach and EarlyWork”, Technical Report NASA/TM2009215368, NASA AMES (2009)
[11] Rowley, J., “The wisdom hierarchy: representations of the DIKW hierarchy”, 33, pp. 163-180
(2007).
[12] Curtis, G., and Cobham, D., Business Information Systems: Analysis, Design and Practice, FT
Prentice Hall, Harlow (2005).
[13] Horeis, T., and Sick, B., “Collaborative Knowledge Discovery & Data Mining: From Knowledge
to Experience”, IEEE Symposium on Computational Intelligence and Data Mining 2007 (CIDM
2007), pp. 421-428 (2007)
[14] Zhou, L., “Ontology learning: state of the art and open issues”, Information Technology Management, 8, pp. 241-252 (2007).
[15] Barforush, A.A., and Rahnama, A., “Ontology learning: revisited”, Journal of Web Engineering, 11, pp. 269-289 (2012).
[16] Kanter, M. J., and Veeramachaneni, K., “Deep Feature Synthesis: Towards Automating Data Science Endeavors”, International Conference on Data Science and Advanced Analytics (DSAA), pp, 1-10
(2015)
[17] Fogelman-Souli, F., and Marcad, E., “Industrial Mining of Massive Data Sets”, Mining Massive Data Sets for Security, (NATO ASIWorkshop),
IOS Press, pp. 44-61 (2008).
[18] Khosla, V., “20-percent doctor included: Speculations and musings of a technology optimist” (2014)
[19] Reddering, K., and Scholten, L., “Understanding Human Cultures”, Chapter 1.2 in The New Everyday: Views on Ambient Intelligence (Eds. Aarts, E., and Marzano, S.), 010 Publishers, Rotterdam (2003)
[20] Cheng, W., Kasneci, G., Graepel, T., Stern, D., and Herbrich, R., “Automated feature generation from structured knowledge”, Proceedings of the 20th ACM Conference on Information and Knowledge Management, ACM, pp. 1395-1404 (2011).
[21] Paulheim, H., and Frnkranz, J., “Unsupervised generation of data mining features from linked open data”, Proceedings of the 2nd International Conference on Web Intelligence, Mining and Semantics
(WIMS12), ACM, pp. 31:131:12 (2012).
[22] Bengio, Y., Courville, A., and Vincent, P., “Representation Learning: A Review and New Perspectives”, IEEE Transactions on Pattern Analysis and Machine Intelligence (special issue Learning
Deep Architectures), 35, pp. 1798-1828 (2013).
[23] Bigun, J., Vision with direction, Springer Berlin (2006).
[24] Zhang, Y., Zhang, L., Nie, G. and Shi, Y., “A Survey of Interestingness Measures for Association Rules”, 2009 International Conference on Business Intelligence and Financial Engineering, IEEE (2009).
[25] von Luxburg, U., Williamson, R. C. and Guyon, I., “Clustering: Science or Art?”, Journal of Machine Learning Research (JMLR): Workshop and Conference Proceedings, 27, pp. 65-79 (2012)
[26] Iverson, D. L., “Inductive monitoring system constructed from nominal system data and
its use in realtime system monitoring”, Patent US 7,383,238 B1 (2008).
[27] Angelov, P., Autonomous Learning Systems, John Wiley & Sons (2013).