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A Deterministic Self-Organizing Map Approach and its Application on Satellite Data based Cloud Type Classification

机译:确定性自组织映射方法及其在基于卫星数据的云类型分类中的应用

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A self-organizing map (SOM) is a type of competitive artificial neural network, which projects the high-dimensional input space of the training samples into a low-dimensional space with the topology relations preserved. This makes SOMs supportive of organizing and visualizing complex data sets and have been pervasively used among numerous disciplines with different applications. Notwithstanding its wide applications, the self-organizing map is perplexed by its inherent randomness, which produces dissimilar SOM patterns even when being trained on identical training samples with the same parameters every time, and thus causes usability concerns for other domain practitioners and precludes more potential users from exploring SOM based applications in a broader spectrum. Motivated by this practical concern, we propose a deterministic approach as a supplement to the standard self-organizing map. In accordance with the theoretical design, the experimental results with satellite cloud data demonstrate the effective and efficient organization as well as simplification capabilities of the proposed approach.
机译:自组织映射(SOM)是一种竞争性人工神经网络,它将训练样本的高维输入空间投影到保留了拓扑关系的低维空间中。这使SOM支持组织和可视化复杂的数据集,并且已在具有不同应用程序的众多学科中广泛使用。尽管自组织图具有广泛的用途,但其固有的随机性使它困惑不已,即使每次都在具有相同参数的相同训练样本上进行训练,也会产生不同的SOM模式,从而引起其他领域从业者的可用性问题,并排除了更多的潜力用户在更广泛的范围内探索基于SOM的应用程序。出于这种实际考虑,我们提出了一种确定性方法,作为对标准自组织图的补充。根据理论设计,卫星云数据的实验结果证明了该方法的有效组织和简化能力。

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