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Where Do Features Come From?

Cognitive Science 38 (6):1078-1101 (2014)

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  1. Theory-based Bayesian models of inductive learning and reasoning.Joshua B. Tenenbaum, Thomas L. Griffiths & Charles Kemp - 2006 - Trends in Cognitive Sciences 10 (7):309-318.
  • Probabilistic Reasoning in Intelligent Systems: Networks of Plausible Inference by Judea Pearl. [REVIEW]Henry E. Kyburg - 1991 - Journal of Philosophy 88 (8):434-437.
  • Connectionist learning of belief networks.Radford M. Neal - 1992 - Artificial Intelligence 56 (1):71-113.
  • An interactive activation model of context effects in letter perception: I. An account of basic findings.James L. McClelland & David E. Rumelhart - 1981 - Psychological Review 88 (5):375-407.
  • Understanding image intensities.Berthold K. P. Horn - 1977 - Artificial Intelligence 8 (2):201-231.
  • Connectionist learning procedures.Geoffrey E. Hinton - 1989 - Artificial Intelligence 40 (1-3):185-234.
  • Finding Structure in Time.Jeffrey L. Elman - 1990 - Cognitive Science 14 (2):179-211.
    Time underlies many interesting human behaviors. Thus, the question of how to represent time in connectionist models is very important. One approach is to represent time implicitly by its effects on processing rather than explicitly (as in a spatial representation). The current report develops a proposal along these lines first described by Jordan (1986) which involves the use of recurrent links in order to provide networks with a dynamic memory. In this approach, hidden unit patterns are fed back to themselves: (...)
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  • Probabilistic Reasoning in Intelligent Systems: Networks of Plausible Inference.J. Pearl, F. Bacchus, P. Spirtes, C. Glymour & R. Scheines - 1988 - Synthese 104 (1):161-176.
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