1969
DOI: 10.1145/363196.363214
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The teachable language comprehender

Abstract: The Teachable Language Comprehender (TLC) is a program designed to be capable of being taught to “comprehend” English text. When text which the program has not seen before is input to it, it comprehends that text by correctly relating each (explicit or implicit) assertion of the new text to a large memory. This memory is a “semantic network” representing factual assertions about the world. The program also creates copies of the parts of its memory which have been found to relate to the new text, adap… Show more

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Cited by 396 publications
(103 citation statements)
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“…Such an approach gave rise to theoretical insights such as spreading activation (Quillian, 1969;Collins and Loftus, 1975). The basic premise is that an item of knowledge will be easier to process if it has a high level of activation.…”
Section: Dsa Methodologymentioning
confidence: 99%
“…Such an approach gave rise to theoretical insights such as spreading activation (Quillian, 1969;Collins and Loftus, 1975). The basic premise is that an item of knowledge will be easier to process if it has a high level of activation.…”
Section: Dsa Methodologymentioning
confidence: 99%
“…Marker passing was first used in AI by Quillian [49,50], who used it to find connections between concepts in a semantic network. Marker passing is, of course, expensive when the net is interestingly large.…”
Section: Marker Passingmentioning
confidence: 99%
“…Pure symbolic models such as semantic networks [2] are not rich enough because they cannot represent the metric properties of the environment. On the other hand, planar metric-only representations lack semantic and topological information, though they are useful for humanrobot interaction and improving planning efficiency.…”
Section: Introductionmentioning
confidence: 99%