SOM integrated with CCA for the feature map and classification of complex chemical patterns

Xuefeng Yan, Dezhao Chen, Yaqiu Chen, Shangxu Hu
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引用次数: 18

Abstract

Considering that the two-dimensional (2D) feature map of the high-dimensional chemical patterns can more concisely and efficiently represent the pattern characteristic, a new procedure integrating self-organizing map (SOM) networks with correlative component analysis (CCA) is proposed. Firstly, CCA was used to identify the most important classification characteristics (CCs) from the original high-dimensional chemical pattern information. Then, the SOM maps the first several CCs, which include the most useful information for pattern classification, onto a 2D plane, on which the pattern classification feature is concisely represented. To improve the learning efficiency of SOM networks, two new algorithms for dynamically adjusting the learning rate and the range of neighborhood around the winning unit were further worked out. Besides, a convenient method for detecting the topologic nature of SOM results was proposed. Finally, a typical example of mapping two classes natural spearmint essence was employed to verify the effectiveness of the new approach. The feature-topology-preserving (FTP) map obtained can well represent the classification of original patterns and is much better than what obtained by SOM alone.

SOM与CCA集成,用于复杂化学模式的特征映射和分类
考虑到高维化学模式的二维特征图能更简洁有效地表示模式特征,提出了一种将自组织映射(SOM)网络与相关成分分析(CCA)相结合的新方法。首先,利用CCA从原始的高维化学模式信息中识别出最重要的分类特征(CCs);然后,SOM将包含最有用的模式分类信息的前几个cc映射到二维平面上,在二维平面上简洁地表示模式分类特征。为了提高SOM网络的学习效率,进一步提出了两种动态调整学习率和获胜单元周围邻域范围的新算法。此外,提出了一种简便的SOM结果拓扑性质检测方法。最后,以两类天然薄荷香精的映射为例,验证了新方法的有效性。所获得的特征拓扑保持(FTP)映射可以很好地表示原始模式的分类,并且比单独使用SOM获得的结果要好得多。
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