人工知能
Online ISSN : 2435-8614
Print ISSN : 2188-2266
人工知能学会誌(1986~2013, Print ISSN:0912-8085)
確率モデルの学習方式と診断への応用
中莖 洋一郎古関 義幸田中 みどり
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解説誌・一般情報誌 フリー

1992 年 7 巻 5 号 p. 862-869

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This paper describes an inductive learning method in probabilistic domain. It acquires an appropriate probabilistic model from a small amount of observation data. In order to derive an appropriate probabilistic model, a presumption tree with least description length is constructed. The description length of a presumption tree is defined as sum of the code length and the log-likelihood. Using the derived presumption tree, the probabilistic distribution of future events can be presumed appropriately. This capability enables improving the efficiency of certain kinds of performance systems, such as diagnostic systems, that deal with probabilistic problems.

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© 1992 人工知能学会
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