The power of physical representations

AI Magazine 10 (3):49-65 (1989)
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Abstract

Commonsense reasoning about the physical world, as exemplified by "Iron sinks in water" or "If a ball is dropped it gains speed," will be indispensable in future programs. We argue that to make such predictions (namely, envisioning), programs should use abstract entities (such as the gravitational field), principles (such as the principle of superposition), and laws (such as the conservation of energy) of physics for representation and reasoning. These arguments are in accord with a recent study in physics instruction where expert problem solving is related to the construction of physical representations that contain fictitious, imagined entities such as forces and momenta (Larkin 1983). We give several examples showing the power of physical representations.

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Varol Akman
Bilkent University

Citations of this work

Rethinking context as a social construct.Varol Akman - 2000 - Journal of Pragmatics 32 (6):743-759.

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References found in this work

Critique of Pure Reason.I. Kant - 1787/1998 - Philosophy 59 (230):555-557.
Qualitative process theory.Kenneth D. Forbus - 1984 - Artificial Intelligence 24 (1-3):85-168.
A qualitative physics based on confluences.Johan De Kleer & John Seely Brown - 1984 - Artificial Intelligence 24 (1-3):7-83.
Qualitative simulation.Benjamin Kuipers - 1986 - Artificial Intelligence 29 (3):289-338.

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