1 results match your criteria: "Tech. Univ. of Vienna.[Affiliation]"
IEEE Trans Neural Netw
October 2012
Inst. fur Allgemeine Elektrotechnik Automobilelektronik, Tech. Univ. of Vienna.
The incorporation of dead zones in the error signal of basis function networks avoids the networks' overtraining and guarantees the convergence of the normalized least mean square (LMS) algorithm and related algorithms. A new so-called error-minimizing dead zone is presented providing the least a posteriori error out of the set of all convergence assuring dead zones. A general convergence proof is developed for LMS algorithms with dead zones, and the error-minimizing dead zone is derived from the resulting convergence condition.
View Article and Find Full Text PDF