基于优势模式效应(DPE)的数据集智能分类差异

M. Iskandarani
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引用次数: 0

摘要

假设存在支配模式,支配模式会影响基于神经的模式识别系统在正确和准确的分类、修剪和优化方面的性能,并对其进行了验证和证明。采用采用四个主要特征进行相同排序过程的两组数据分别和联合训练神经网络引擎。对数据集进行数据转换和统计预处理,然后采用反向传播加权消除算法(WEA-BP)将其插入专门设计的多层神经网络中。分类和权值消除过程的动态相互关联,并用于证明一个数据集的优势。提出的结果证明,一个数据集对系统具有侵略性,并取代了第一个数据集,使其分类几乎不可能。这种对受影响数据集所选特征之间关系的调制导致模式突变,并随后在其成员的数据集排名中重新排列。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Disparity in Intelligent Classification of Data Sets Due to Dominant Pattern Effect (DPE)
A hypothesis of the existence of dominant pattern that may affect the performance of a neural based pattern recognition system and its operation in terms of correct and accurate classification, pruning and optimization is assumed, presented, tested and proved to be correct. Two sets of data subjected to the same ranking process using four main features are used to train a neural network engine separately and jointly. Data transformation and statistical pre-processing are carried out on the datasets before inserting them into the specifically designed multi-layer neural network employing Weight Elimination Algorithm with Back Propagation (WEA-BP). The dynamics of classification and weight elimination process is correlated and used to prove the dominance of one dataset. The presented results proved that one dataset acted aggressively towards the system and displaced the first dataset making its classification almost impossible. Such modulation to the relationships among the selected features of the affected dataset resulted in a mutated pattern and subsequent re-arrangement in the data set ranking of its members.
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