二元动力系统在布尔向量分类问题中的应用

G. Oparin, V. Bogdanova, A. A. Pashinin
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引用次数: 0

摘要

本文提出了一种基于二元动力系统的布尔向量(二元特征向量)分类方法。这个问题在科学和工业的各个领域都有实际应用,例如生物信息学、自然物体遥感、物联网智能设备等。研究了具有未知特征矩阵的二元同步自主非线性动力学模型。选取矩阵元素时,布尔参考向量是二元动态模型的平衡态。平衡态的吸引区域作为类(一个参考向量对应于每个类)。分类向量是模型的初始状态。考虑了简单和聚合分类器。最后通过一个实例对该方法进行了验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of binary dynamical systems in the problem of classification of Boolean vectors
The article proposes a method based on using binary dynamical systems in the classification problem for Boolean vectors (binary feature vectors). This problem has practical application in various fields of science and industry, for example, bioinformatics, remote sensing of natural objects, smart devices of the Internet of things, etc. Binary synchronous autonomous nonlinear dynamic models with an unknown characteristic matrix are considered. Matrix elements are chosen in such a way that the Boolean reference vectors are equilibrium states of the binary dynamic model. The attraction regions of equilibrium states act as classes (one reference vector corresponds to each class). The classified vector is the initial state of the model. Simple and aggregated classifiers are considered. The proposed method is demonstrated using an illustrative example.
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