Direct parallel perceptrons (DPPs): fast analytical calculation of the parallel perceptrons weights with margin control for classification tasks.

IEEE transactions on neural networks Pub Date : 2011-11-01 Epub Date: 2011-10-06 DOI:10.1109/TNN.2011.2169086
Manuel Fernandez-Delgado, Jorge Ribeiro, Eva Cernadas, Senén Barro Ameneiro
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引用次数: 18

Abstract

Parallel perceptrons (PPs) are very simple and efficient committee machines (a single layer of perceptrons with threshold activation functions and binary outputs, and a majority voting decision scheme), which nevertheless behave as universal approximators. The parallel delta (P-Delta) rule is an effective training algorithm, which, following the ideas of statistical learning theory used by the support vector machine (SVM), raises its generalization ability by maximizing the difference between the perceptron activations for the training patterns and the activation threshold (which corresponds to the separating hyperplane). In this paper, we propose an analytical closed-form expression to calculate the PPs' weights for classification tasks. Our method, called Direct Parallel Perceptrons (DPPs), directly calculates (without iterations) the weights using the training patterns and their desired outputs, without any search or numeric function optimization. The calculated weights globally minimize an error function which simultaneously takes into account the training error and the classification margin. Given its analytical and noniterative nature, DPPs are computationally much more efficient than other related approaches (P-Delta and SVM), and its computational complexity is linear in the input dimensionality. Therefore, DPPs are very appealing, in terms of time complexity and memory consumption, and are very easy to use for high-dimensional classification tasks. On real benchmark datasets with two and multiple classes, DPPs are competitive with SVM and other approaches but they also allow online learning and, as opposed to most of them, have no tunable parameters.

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直接并行感知器(DPPs):用于分类任务的具有裕度控制的并行感知器权重的快速分析计算。
并行感知器(PPs)是非常简单和高效的委员会机器(单层感知器,具有阈值激活函数和二进制输出,以及多数投票决策方案),但其表现为通用逼近器。并行delta (P-Delta)规则是一种有效的训练算法,它遵循支持向量机(SVM)使用的统计学习理论的思想,通过最大化训练模式的感知器激活与激活阈值(对应于分离超平面)之间的差异来提高其泛化能力。在本文中,我们提出了一个解析的封闭表达式来计算分类任务的PPs的权重。我们的方法,称为直接并行感知器(DPPs),直接计算(不迭代)使用训练模式及其期望输出的权重,而不需要任何搜索或数值函数优化。计算出的权重全局最小化误差函数,同时考虑训练误差和分类余量。考虑到它的解析性和非迭代性,dpp在计算上比其他相关方法(P-Delta和SVM)要高效得多,而且它的计算复杂度在输入维度上是线性的。因此,就时间复杂度和内存消耗而言,dpp非常吸引人,并且非常易于用于高维分类任务。在具有两个或多个类的真实基准数据集上,dpp与SVM和其他方法竞争,但它们也允许在线学习,并且与大多数方法相反,没有可调参数。
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来源期刊
IEEE transactions on neural networks
IEEE transactions on neural networks 工程技术-工程:电子与电气
自引率
0.00%
发文量
2
审稿时长
8.7 months
期刊最新文献
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