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首页> 外文期刊>Applied Intelligence: The International Journal of Artificial Intelligence, Neural Networks, and Complex Problem-Solving Technologies >Structural enhanced information and its application to improved visualization of self-organizing maps
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Structural enhanced information and its application to improved visualization of self-organizing maps

机译:结构增强信息及其在改进自组织地图可视化方面的应用

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摘要

In this paper, we propose structural enhanced information for detecting and visualizing main features in input patterns. We have so far proposed information enhancement for feature detection, where, if we want to focus upon components such as units and connection weights and interpret the functions of the components, we have only to enhance competitive units with the components. Though this information enhancement has given favorable results in feature detection, we further refine the information enhancement and propose structural enhanced information. In structural enhanced information, three types of enhanced information can be differentiated, that is, first-, second- and third-order enhanced information. The first-order information is related to the enhancement of competitive units themselves in a competitive network, and the second-order information is dependent upon the enhancement of competitive units with input patterns. Then, the third-order information is obtained by subtracting the effect of the first-order information from the second-order information. Thus, the third-order information more explicitly represents information on input patterns. With this structural enhanced information, we can estimate more detailed features in input patterns. For demonstrating explicitly and intuitively the improved performance of our method, the conventional SOM was used, and we transformed competitive unit outputs so as to improve visualization. The method was applied to the well-known Iris problem, an OECD countries classification problem and the Johns Hopkins University Ionosphere database. In all these problems, we succeeded in visualizing the detailed and important features of input patterns by using the third-order information.
机译:在本文中,我们提出了用于检测和可视化输入模式主要特征的结构增强信息。到目前为止,我们已经提出了用于特征检测的信息增强功能,其中,如果我们要关注诸如单元和连接权重之类的组件并解释组件的功能,我们只需要增强具有组件的竞争性单元即可。尽管这种信息增强在特征检测中取得了令人满意的结果,但我们进一步完善了信息增强并提出了结构增强信息。在结构增强信息中,可以区分三种类型的增强信息,即一阶,二阶和三阶增强信息。一阶信息与竞争网络中竞争单元自身的增强有关,二阶信息取决于具有输入模式的竞争单元的增强。然后,通过从第二阶信息中减去第一阶信息的影响来获得第三阶信息。因此,三阶信息更明确地表示关于输入模式的信息。借助这种增强的结构信息,我们可以估计输入模式中更详细的功能。为了清楚直观地展示我们方法的改进性能,使用了常规的SOM,并且我们转换了竞争性单位的输出以改善可视化。该方法应用于著名的鸢尾花问题,经合组织国家分类问题和约翰霍普金斯大学电离层数据库。在所有这些问题中,我们通过使用三阶信息成功地可视化了输入模式的详细和重要功能。

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