Jaiyen Saichon, Lursinsap Chidchanok, Phimoltares Suphakant
Department of Mathematics, Chulalongkorn University, Bangkok, Patumwan 10330, Thailand.
IEEE Trans Neural Netw. 2010 Mar;21(3):381-92. doi: 10.1109/TNN.2009.2037148. Epub 2010 Jan 15.
This paper proposes a very fast 1-pass-throw-away learning algorithm based on a hyperellipsoidal function that can be translated and rotated to cover the data set during learning process. The translation and rotation of hyperellipsoidal function depends upon the distribution of the data set. In addition, we present versatile elliptic basis function (VEBF) neural network with one hidden layer. The hidden layer is adaptively divided into subhidden layers according to the number of classes of the training data set. Each subhidden layer can be scaled by incrementing a new node to learn new samples during training process. The learning time is O(n), where n is the number of data. The network can independently learn any new incoming datum without involving the previously learned data. There is no need to store all the data in order to mix with the new incoming data during the learning process.
本文提出了一种基于超椭球函数的非常快速的一次性丢弃学习算法,该超椭球函数在学习过程中可以平移和旋转以覆盖数据集。超椭球函数的平移和旋转取决于数据集的分布。此外,我们还提出了具有一个隐藏层的通用椭圆基函数(VEBF)神经网络。隐藏层根据训练数据集的类别数量自适应地划分为子隐藏层。在训练过程中,每个子隐藏层可以通过增加一个新节点来进行缩放,以学习新样本。学习时间为O(n),其中n是数据的数量。该网络可以独立学习任何新输入的数据,而无需涉及先前学习的数据。在学习过程中,无需存储所有数据以便与新输入的数据混合。