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引用次数: 9

摘要

我们提出了一种新的使用自组织映射(SOMs)作为增量学习算法的基本构建块。som非常适合这一目的,因为它们本质上是在线学习算法,因为它们的权重更新是围绕最佳匹配单元进行的,这在本质上保护它们免受灾难性遗忘,最后但并非最不重要的是,它们具有固定的模型复杂性,限制了处理流数据的执行时间和内存需求。然而,为了执行通常是监督性质的增量学习,som需要一个读出层和一个原型更新的自我参考控制机制来补充,以防止概念漂移的负面后果。我们提出了实现这些功能的PROPRE体系结构,从而在非常高维的数据域中实现了som的增量学习,并展示了它在几个已知和新的分类问题上的增量学习能力。特别地,我们详细讨论了对SOM参数的控制要求,并通过实验结果验证了我们的选择。
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Incremental learning with self-organizing maps
We present a novel use for self-organizing maps (SOMs) as an essential building block for incremental learning algorithms. SOMs are very well suited for this purpose because they are inherently online learning algorithms, because their weight updates are localized around the best-matching unit, which inherently protects them against catastrophic forgetting, and last but not least because they have fixed model complexity limiting execution time and memory requirements for processing streaming data. However, in order to perform incremental learning which is usually supervised in nature, SOMs need to be complemented by a readout layer as well as a self-referential control mechanism for prototype updates in order to be protected against negative consequences of concept drift. We present the PROPRE architecture which implements these functions, thus realizing incremental learning with SOMs in very high-dimensional data domains, and show its capacity for incremental learning on several known and new classification problems. In particular, we discuss the required control of SOM parameters in detail and validate our choices by experimental results.
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