A general formulation ofnon-linear least square regression using multi-layered perceptrons
Badran, Fouad ; St?phan, Y. ; Metoui, N ; Thiria, Sylvie
HAL, Report N°: CEDRIC-01-243 / Harvested from HAL
Non linear regression and non linear approximation are widely used fordata analysis. In many applications, the aim is to build a model linkingobservations and parameters of a physical system. Two cases ofincreasing complexity have been studied: the case of deterministicinputs and noisy output data and the case of noisy input and outputdata. We present in this paper a general formulation of non linearregression using multilayered Perceptrons. Regression algorithms arederived in the three cases. In particular, a generalized learning ruleis proposed to deal with noisy input and output data. The algorithmenables not only to build an accurate model but also to re*ne thelearning data set. The algorithms are tested on two real-world problemin Geophysics. The good results suggests that multilayered Perceptronscan emmerged as an e°cient nonlinear regression model for a wide rangeof applications.
Publié le : 2001-07-04
Classification:  [INFO]Computer Science [cs],  [MATH.MATH-ST]Mathematics [math]/Statistics [math.ST]
@article{Report N°: CEDRIC-01-243,
     author = {Badran, Fouad and St?phan, Y. and Metoui, N and Thiria, Sylvie},
     title = {A general formulation ofnon-linear least square regression using multi-layered perceptrons},
     journal = {HAL},
     volume = {2001},
     number = {0},
     year = {2001},
     language = {en},
     url = {http://dml.mathdoc.fr/item/Report N°: CEDRIC-01-243}
}
Badran, Fouad; St?phan, Y.; Metoui, N; Thiria, Sylvie. A general formulation ofnon-linear least square regression using multi-layered perceptrons. HAL, Tome 2001 (2001) no. 0, . http://gdmltest.u-ga.fr/item/Report%20N%C2%B0:%20CEDRIC-01-243/