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Calculating the dimension of attractors from small data sets

โœ Scribed by N.B. Abraham; A.M. Albano; B. Das; G. De Guzman; S. Yong; R.S. Gioggia; G.P. Puccioni; J.R. Tredicce


Publisher
Elsevier Science
Year
1986
Tongue
English
Weight
331 KB
Volume
114
Category
Article
ISSN
0375-9601

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