Unascertained model forecast on poor data with conditions functions in R n
Abstract
Based on the definitions of poor data, an unascertained model and four axioms, condition functions and range etc. were analyzed then induced second‐order condition function, complemental condition function, connection function and the rule set of some signs concludes with the forecast method, which consists of four theorems and ten inferences, in the condition of data number m (m≥2) in Rn.
Keywords
Citation
Long, Y. and Boren, D. (2004), "Unascertained model forecast on poor data with conditions functions in
Publisher
:Emerald Group Publishing Limited
Copyright © 2004, Emerald Group Publishing Limited