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单词 Kohonen
释义

Kohonen

中文百科

自组织映射 Self-organizing map

(重定向自Kohonen)
自组织映射的训练实例。蓝色斑点是训练数据的分布,而小白斑点是从该分布走出的目前的训练数据。起初(左图)SOM节点处在数据空间的任意位置。选择离训练数据最近的(用黄色高亮的)节点。它会向着训练数据移动,网格上它的邻居节点也会(在较小程度上)如此移动。经过多次迭代后的网格会趋于近似的数据分布(右图)。

自组织映射(SOM)或自组织特征映射(SOFM)是一种使用非监督式学习来产生训练样本的输入空间的一个低维(通常是二维)离散化的表示的人工神经网络(ANN)。自组织映射与其他人工神经网络的不同之处在于它使用一个邻近函数来保持输入控件的拓扑性质。

英语百科

Self-organizing map 自组织映射

(重定向自Kohonen)
A self-organizing map showing U.S. Congress voting patterns visualized in Synapse. The first two boxes show clustering and distances while the remaining ones show the component planes. Red means a yes vote while blue means a no vote in the component planes (except the party component where red is Republican and blue is Democratic).
An illustration of the training of a self-organizing map. The blue blob is the distribution of the training data, and the small white disc is the current training datum drawn from that distribution. At first (left) the SOM nodes are arbitrarily positioned in the data space. The node (highlighted in yellow) which is nearest to the training datum is selected. It is moved towards the training datum, as (to a lesser extent) are its neighbors on the grid. After many iterations the grid tends to approximate the data distribution (right).
Self organizing maps (SOM) of three and eight colors with U-Matrix.

A self-organizing map (SOM) or self-organising feature map (SOFM) is a type of artificial neural network (ANN) that is trained using unsupervised learning to produce a low-dimensional (typically two-dimensional), discretized representation of the input space of the training samples, called a map. Self-organizing maps are different from other artificial neural networks as they apply competitive learning as opposed to error-correction learning (such as backpropagation with gradient descent), and in the sense that they use a neighborhood function to preserve the topological properties of the input space.

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更新时间:2025/6/23 5:25:42