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Autoencoders Covering Space as a Life-Long Classifier

机译:AutoEncoders将空间覆盖为终身分级器

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A life-long classifier that learns incrementally has many challenges such as concept drift, when the class changes in time, and catastrophic forgetting when the earlier learned knowledge is lost. Many successful connectionist solutions are based on an idea that new data are learned only in a part of a network that is relevant to the new data. We leverage this idea and propose a novel method for learning an ensemble of specialized autoencoders. We interpret autoencoders as manifolds that can be trained to contain or exclude given points from the input space. This manifold manipulation allows us to implement a classifier that can suppress catastrophic forgetting and adapt to concept drift. The proposed algorithm is evaluated on an incremental version of the XOR problem and on an incremental version of the MNIST classification where we achieved 0.9 accuracy which is a significant improvement over the previously published results.
机译:一个寿命长的分类器,逐步学习,概念漂移等许多挑战,当阶级在时间变化时,以及灾难性的遗忘,当前历史的知识丢失时。许多成功的连接主义解决方案基于一个想法,即仅在与新数据相关的网络的一部分中学习新数据。我们利用了这个想法,并提出了一种学习专业自动化器的集合的新方法。我们将AutoEndoders解释为歧管,可以训练以包含或排除来自输入空间的给定点。这种歧所操作允许我们实现一个可以抑制灾难性遗忘并适应概念漂移的分类器。所提出的算法在XOR问题的增量版本上进行评估,并且在MNIST分类的增量版本上,我们实现了0.9精度,这是对先前发布的结果的显着改进。

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