References for this website                  HOME


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Pissanetzky, S. (2008a). A new type of Structured Artificial Neural Networks based on the Matrix Model of Computation. Proc. 2008 World Congress in Computer Science, Computer Engineering, and Applied Computing (WORLDCOMP'08) – 2008 International Conference on Artificial Intelligence (ICAI’08), July 14-17, 2008, Las Vegas, NV, USA. Vol. I, pp. 251-257 (2008). Abstract.

Pissanetzky, S. (2008b). If intelligence is the ability to solve unanticipated problems, then artificial intelligence needs universal representations. Workshop on Automation and Robotics, NASA Gilruth Center, Johnson Space Center, Clear Lake, TX.

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Pissanetzky, S. (2009b). The new theory of objects and the automatic generation of intelligent agents. Workshop on Automation and Robotics, NASA Gilruth Center, Johnson Space Center, Clear Lake, TX.

Pissanetzky, S. (2010a). Coupled Dynamics in Host-Guest Complex Systems Duplicates Emergent Behavior in the Brain. World Academy of Science, Engineering, and Technology 44: 1–9 (2010). Full text.

Pissanetzky, S. (2010b). Adaptive systems and analyst-independent technologies. Workshop on Automation and Robotics, NASA Gilruth Center, Johnson Space Center, Clear Lake, TX. Abstract.

Pissanetzky, S. (2011a). Emergence and Self-organization in Partially Ordered Sets. Complexity 17(2): 19–38. Abstract. Full text. Note: the partially ordered sets mentioned in the title are actually causal sets.

Pissanetzky, S. (2011b). Emergent inference and the future of NASA. Workshop on Automation and Robotics, NASA Gilruth Center, Johnson Space Center, Clear Lake, TX. Abstract.

Pissanetzky, S. (2011c). Structural Emergence in Partially Ordered Sets is the Key to Intelligence. In Artificial General Intelligence, 92–101. Full text.

Pissanetzky, S. (2011d). Emergent inference, or how can a program become a self-programming AGI system? Workshop on Self-programming in AGI systems. AGI-11 conference, Google Headquarters, Mountain View, CA. August 3-6, 2011. Full text PDF, slides and slide notes are available.

Pissanetzky, S. (2012). Symmetry, structure, and causets in discrete quantum gravity. Bulletin of the American Physical Society 57(2):H1.0005. Abstract

Pissanetzky, S. (2012b). Reasoning with Computer Code: a new Mathematical Logic, Special issue on Self-Programming, K. R. Thórisson, E. Nivel & R. Sanz (eds.), Journal of Artificial General Intelligence (JAGI), Special Issue on Self-programming, Vol. 3, issue 3, pages 11-42,  December 2012. DOI: 10.2478/v10229-011-0020-6. Abstract. Full text (open access).

Pissanetzky, S. A series of talks presented by the author at the Workshop on Automation and Robotics, organized by American Institute of Aeronautics and Astronautics, Houston Section Technical Committee, and IEEE Galveston bay section, at the NASA Gilruth Center, Johnson Space Center, Houston, Texas. Years 2008, 2009, 2010, 2011.

Pissanetzky, S. Causality, Symmetry, Brain, Evolution, DNA, and a new Theory of Physics. Bulletin of the American Physical Society, Vol. 57, number 10 (October 2012). Abstract.

Pissanetzky, S. The Unification of Symmetry and Conservation. Bulletin of the American Physical Society, Vol. 58, Number  3 (April 2013). Abstract. Slides (pptx). Slide Notes.

Oral presentation at the Texas Section of the American Physical Society. April 4-6 (2013), Stephenville, Texas. N2.00001. Abstract. Slides (pptx). Slide Notes.

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