DIISM-Università di Siena, Via Roma 56, I-53100 Siena, Italy.
DIISM-Università di Siena, Via Roma 56, I-53100 Siena, Italy.
Neural Netw. 2018 Jan;97:137-151. doi: 10.1016/j.neunet.2017.10.002. Epub 2017 Oct 18.
A novel, unsupervised nonparametric model of multivariate probability density functions (pdf) is introduced, namely the Parzen neural network (PNN). The PNN is intended to overcome the major limitations of traditional (either statistical or neural) pdf estimation techniques. Besides being profitably simple, the PNN turns out to have nice properties in terms of unbiased modeling capability, asymptotic convergence, and efficiency at test time. Several matters pertaining the practical application of the PNN are faced in the paper, too. Experiments are reported, involving (i) synthetic datasets, and (ii) a challenging sex determination task from 1400 scout-view CT-scan images of human crania. Incidentally, the empirical evidence entails also some conclusions of high anthropological relevance.
介绍了一种新颖的、无监督的多元概率密度函数(pdf)的非参数模型,即 Parzen 神经网络(PNN)。PNN 旨在克服传统(统计或神经)pdf 估计技术的主要局限性。除了简单实用之外,PNN 在无偏建模能力、渐近收敛性和测试时的效率方面具有很好的特性。本文还涉及到 PNN 实际应用的几个问题。实验包括(i)合成数据集,和(ii)来自 1400 个人类颅骨 scout-view CT 扫描图像的具有挑战性的性别判定任务。顺便说一句,经验证据还包含一些具有高度人类学相关性的结论。