首页> 外文会议>Engineering in Medicine and Biology Society, 2001. Proceedings of the 23rd Annual International Conference of the IEEE >Ischemia detection using supervised learning for hierarchical neural networks based on kohonen-maps
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Ischemia detection using supervised learning for hierarchical neural networks based on kohonen-maps

机译:基于kohonen映射的基于监督学习的分层神经网络缺血检测

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The detection of ischemic episodes Is a difficult pattern classification problem. The motivation for developing the Supervising Network - Self Organizing Map (sNet-SOM) model is to design computationally effective solutions for the particular problem of ischemia detection and other similar applications. The sNet-SOM uses unsupervised learning for the regions where the classification is not ambiguous and supervised for the "difficult" ones-in a two-stage learning process. The unsupervised learning approach extends and adapts the Self-Organizing Map (SOM) algorithm of Kohonen. The basic SOM is modified with a dynamic expansion process controlled with an entropy based criterion that allows the adaptive formation of the proper SOM structure. This extension proceeds until the total number of training patterns that are mapped to neurons with high entropy (therefore with ambiguous classification) reduces to a size manageable numerically with a proper supervised model. The second learning phase (supervised training) has the objective of constructing better decision boundaries of the ambiguous regions. In this phase, a special supervised network is trained for the task of reduced computationally complexity- to perform the classification only of the ambiguous regions. After we tried with different classes of supervised networks, we obtained the best results with the Support Vector Machines (SVM) as local experts.
机译:缺血性发作的检测是一个困难的模式分类问题。开发监督网络-自组织映射(sNet-SOM)模型的动机是针对局部缺血检测和其他类似应用的特定问题设计计算有效的解决方案。 sNet-SOM在两个阶段的学习过程中对分类不明确的区域使用无监督学习,对“困难”的分类使用监督。无监督学习方法扩展并改编了Kohonen的自组织映射(SOM)算法。基本SOM通过动态扩展过程进行了修改,该过程由基于熵的准则控制,该准则允许自适应形成适当的SOM结构。继续进行这种扩展,直到映射到具有高熵的神经元的训练模式的总数(因此具有歧义的分类)减少到可以通过适当的监督模型在数值上管理的大小。第二个学习阶段(监督训练)的目的是为歧义区域构建更好的决策边界。在此阶段,将训练一个特殊的监督网络来完成降低计算复杂性的任务-仅对模糊区域进行分类。在尝试了不同类别的监督网络之后,我们使用支持向量机(SVM)作为本地专家获得了最佳结果。

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