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Multivariate Grey Prediction Models for Pattern Classification Irrespective of Time Series

机译:模式分类的多变灰色预测模型,无论时间序列如何

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Pattern classification can be regarded as a grey system problem because multiple factors of a pattern influence the class into which it can be categorized, but the relationship between these factors and the categorization is not clear. Multivariate grey prediction models (MGPMs), such as the GM(1, N), have thus drawn interest in pattern classification. However, as traditional MGPMs have been designed for time series forecasting, it is interesting to transfer each permutation in the collected data without involving temporal order to a time series. Any permutation among the patterns can also have a certain influence on classification performance. To solve this challenging problem, this study proposes several multivariate grey classification models by integrating genetic algorithms into multivariate grey prediction models. The results of experiments verified the usefulness of MGPMs for pattern classification.
机译:模式分类可以被视为灰色系统问题,因为模式的多个因素会影响它可以分类的类,但这些因素与分类之间的关系尚不清楚。 因此,多变量灰度预测模型(MGPMS),例如GM(1,N),因此引起了模式分类的兴趣。 然而,随着传统的MGPMS设计用于时间序列预测,有趣的是在收集的数据中传输每个置换而不涉及时间序列。 模式中的任何排列也可以对分类性能产生一定的影响。 为了解决这一具有挑战性的问题,本研究通过将遗传算法集成到多元灰色预测模型中提出了几种多元灰色分类模型。 实验结果验证了MGPM的有用性,以进行模式分类。

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