Haese K
German Aerospace Research Establishment, Institute of Flight Guidance, Braunschweig, Germany.
IEEE Trans Neural Netw. 1998;9(6):1270-8. doi: 10.1109/72.728376.
This paper presents an extension of the self-organizing learning algorithm of feature maps in order to improve its convergence to neighborhood preserving maps. The Kohonen learning algorithm is controlled by two learning parameters, which have to be chosen empirically because there exists neither rules nor a method for their calculation. Consequently, often time consuming parameter studies have to precede before a neighborhood preserving feature map is obtained. To circumvent those lengthy numerical studies, here, a method is presented and incorporated into the learning algorithm which determines the learning parameters automatically. Therefore, system models of the learning and organizing process are developed in order to be followed and predicted by linear and extended Kalman filters. The learning parameters are optimal within the system models, so that the self-organizing process converges automatically to a neighborhood preserving feature map of the learning data.
本文提出了特征图自组织学习算法的一种扩展,以提高其向邻域保持映射的收敛性。Kohonen学习算法由两个学习参数控制,由于既没有计算这些参数的规则也没有方法,所以必须凭经验选择。因此,在获得邻域保持特征图之前,通常需要进行耗时的参数研究。为了避免这些冗长的数值研究,本文提出了一种方法并将其纳入学习算法中,该方法可自动确定学习参数。因此,开发了学习和组织过程的系统模型,以便由线性和扩展卡尔曼滤波器进行跟踪和预测。学习参数在系统模型内是最优的,从而使自组织过程自动收敛到学习数据的邻域保持特征图。