Cervellera Cristiano
Istituto di Studi sui Sistemi Intelligenti per l'Automazione,Consiglio Nazionale delle Ricerche, Genova, Italy.
IEEE Trans Neural Netw. 2010 Apr;21(4):687-92. doi: 10.1109/TNN.2010.2041360. Epub 2010 Feb 17.
In this brief, the use of lattice point sets (LPSs) is investigated in the context of general learning problems (including function estimation and dynamic optimization), in the case where the classic empirical risk minimization (ERM) principle is considered and there is freedom to choose the sampling points of the input space. Here it is proved that convergence of the ERM principle is guaranteed when LPSs are employed as training sets for the learning procedure, yielding up to a superlinear convergence rate under some regularity hypotheses on the involved functions. Preliminary simulation results are also provided.
在本简报中,研究了在一般学习问题(包括函数估计和动态优化)的背景下,使用格点集(LPSs)的情况,即考虑经典经验风险最小化(ERM)原则且可自由选择输入空间采样点的情况。在此证明,当将格点集用作学习过程的训练集时,ERM原则的收敛性得到保证,在对相关函数的一些正则性假设下,收敛速度可达超线性。还提供了初步的模拟结果。