基于专家估计的技术诊断中概率神经网络模式矩阵的优化构造

V. Romanuke
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引用次数: 0

摘要

在技术诊断领域,许多任务都是通过自动分类来解决的。对于这一点,像概率神经网络这样的分类器由于其简单性而最适合。为了获得用于技术诊断的概率神经网络模式矩阵,通常涉及专家估计或测量。模式矩阵可以通过对这些估计求平均值直接推导出来。然而,平均数并不总是处理专家估计的最佳方法。目标是提出一种基于专家估计的技术诊断模式矩阵的最佳推导方法。最优性的主要准则是性能最大化,其中包含了运算速度最大化的子准则。首先,确定图案矩阵的最大宽度。宽度不超过专家人数。然后,针对对象的每个状态,对专家估计进行聚类。聚类可以通过使用k-means方法或类似的方法来完成。这些团簇的质心依次形成图案矩阵。聚类的最优数量决定了概率神经网络性能的最优性。一般情况下,大多数概率神经网络的错误率百分比随着聚类专家估计数量的增加而呈近指数下降。因此,如果最优簇数定义了一个过于“宽”的模式矩阵,其运行速度慢得无法容忍,则性能最大化意味着在概率神经网络运行速度中错误率百分比最小值和最大可容忍慢度之间进行权衡。最佳簇数是在一个渐近最小错误率百分比,或在一个可接受的错误率百分比,对应于最大可容忍的操作速度慢。最优性实际上是指错误率和运行速度同时可接受。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
OPTIMAL CONSTRUCTION OF THE PATTERN MATRIX FOR PROBABILISTIC NEURAL NETWORKS IN TECHNICAL DIAGNOSTICS BASED ON EXPERT ESTIMATIONS
In the field of technical diagnostics, many tasks are solved by using automated classification. For this, such classifiers like probabilistic neural networks fit best owing to their simplicity. To obtain a probabilistic neural network pattern matrix for technical diagnostics, expert estimations or measurements are commonly involved. The pattern matrix can be deduced straightforwardly by just averaging over those estimations. However, averages are not always the best way to process expert estimations. The goal is to suggest a method of optimally deducing the pattern matrix for technical diagnostics based on expert estimations. The main criterion of the optimality is maximization of the performance, in which the subcriterion of maximization of the operation speed is included. First of all, the maximal width of the pattern matrix is determined. The width does not exceed the number of experts. Then, for every state of an object, the expert estimations are clustered. The clustering can be done by using the k-means method or similar. The centroids of these clusters successively form the pattern matrix. The optimal number of clusters determines the probabilistic neural network optimality by its performance maximization. In general, most results of the error rate percentage of probabilistic neural networks appear to be near-exponentially decreasing as the number of clustered expert estimations is increased. Therefore, if the optimal number of clusters defines a too “wide” pattern matrix whose operation speed is intolerably slow, the performance maximization implies a tradeoff between the error rate percentage minimum and maximally tolerable slowness in the probabilistic neural network operation speed. The optimal number of clusters is found at an asymptotically minimal error rate percentage, or at an acceptable error rate percentage which corresponds to maximally tolerable slowness in operation speed. The optimality is practically referred to the simultaneous acceptability of error rate and operation speed.
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