13 found
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  1.  13
    A theory and methodology of inductive learning.Ryszard S. Michalski - 1983 - Artificial Intelligence 20 (2):111-161.
  2.  7
    Inductive learning of structural descriptions.Thomas G. Dietterich & Ryszard S. Michalski - 1981 - Artificial Intelligence 16 (3):257-294.
  3.  20
    Constraints and Preferences in Inductive Learning: An Experimental Study of Human and Machine Performance.Douglas L. Medin, William D. Wattenmaker & Ryszard S. Michalski - 1987 - Cognitive Science 11 (3):299-339.
    The paper examines constraints and preferences employed by people in learning decision rules from preclassified examples. Results from four experiments with human subjects were analyzed and compared with artificial intelligence (AI) inductive learning programs. The results showed the people's rule inductions tended to emphasize category validity (probability of some property, given a category) more than cue validity (probability that an entity is a member of a category given that it has some property) to a greater extent than did the AI (...)
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  4.  18
    Categories and Concepts: Theoretical Views and Inductive Data Analysis.Iven van Mechelen, James Hampton, Ryszard S. Michalski & Peter Theuns (eds.) - 1993 - Academic Press.
    A book aimed at advanced undergraduates and graduates in cognitive science and artificial intelligence, linguistics, applied mathematics and data analysis.
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  5.  6
    Variable precision logic.Ryszard S. Michalski & Patrick H. Winston - 1986 - Artificial Intelligence 29 (2):121-146.
  6.  9
    Incremental learning with partial instance memory.Marcus A. Maloof & Ryszard S. Michalski - 2004 - Artificial Intelligence 154 (1-2):95-126.
  7. Beyond prototypes and frames: The two-tiered concept representation.Ryszard S. Michalski - 1993 - In I. Van Mechelen, J. Hampton, R. Michalski & P. Theuns (eds.), Categories and Concepts: Theoretical Views and Inductive Data Analysis. Academic Press. pp. 145--172.
     
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  8.  11
    Discovering patterns in sequences of events.Thomas G. Dietterich & Ryszard S. Michalski - 1985 - Artificial Intelligence 25 (2):187-232.
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  9. A planar geometrical model for representing multidimensional discrete spaces and multiple-valued logic functions.Ryszard Stanislaw Michalski - 1978 - Urbana: Dept. of Computer Science, University of Illinois at Urbana-Champaign.
     
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  10.  14
    Future directions of artificial intelligence in a resource-limited environment.Ryszard S. Michalski & David C. Littman - 1991 - In P. A. Flach (ed.), Future Directions in Artificial Intelligence. New York: Elsevier Science.
  11. Selection of most representative training examples and incremental generation of VL₁ hypotheses: the underlying methodology and the description of programs, ESEL and AQ11.Ryszard Stanisław Michalski - 1978 - Urbana: Dept. of Computer Science, University of Illinois at Urbana-Champaign. Edited by James Larson.
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  12. Toward computer-aided induction: a brief review of currently implemented AQVAL programs.Ryszard Stanisław Michalski - 1977 - Urbana: Dept. of Computer Science, University of Illinois at Urbana-Champaign.
  13.  6
    Conceptual clustering of structured objects: A goal-oriented approach.Robert E. Stepp & Ryszard S. Michalski - 1986 - Artificial Intelligence 28 (1):43-69.
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