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A fast online learning algorithm of radial basis function network with locality sensitive hashing

机译:基于局部敏感哈希的径向基函数网络快速在线学习算法。

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In this paper, we propose a new incremental learning algorithm of radial basis function (RBF) Network to accelerate the learning for large-scale data sequence. Along with the development of the internet and sensor technologies, a time series of large data chunk are continuously generated in our daily life. Thus it is usually difficult to learn all the data within a short period. A remedy for this is to select only essential data from a given data chunk and provide them to a classifier model to learn. In the proposed method, only data in untrained regions, which correspond to a region with a low output margin, are selected. The regions are formed by grouping the data based on their near neighbor using locality sensitive hashing (LSH), in which LSH has been developed to search neighbors quickly in an approximated way. As the proposed method does not use all training data to calculate the output margins, the time of the data selection is expected to be shortened. In the incremental learning phase, in order to suppress catastrophic forgetting, we also exploit LSH to select neighbor RBF units quickly. In addition, we propose a method to update the hash table in LSH so that the data selection can be adaptive during the learning. From the performance of nine datasets, we confirm that the proposed method can learn large-scale data sequences fast without sacrificing the classification accuracies. This fact implies that the data selection and the incremental learning work effectively in the proposed method.
机译:在本文中,我们提出了一种新的径向基函数(RBF)网络增量学习算法,以加速大规模数据序列的学习。随着互联网和传感器技术的发展,在我们的日常生活中不断产生大量的大数据块。因此,通常很难在短时间内学习所有数据。对此的一种补救方法是从给定的数据块中仅选择基本数据,并将其提供给分类器模型以供学习。在提出的方法中,仅选择未训练区域中的数据,该区域对应于具有低输出裕度的区域。这些区域是通过使用区域敏感哈希(LSH)根据近邻对数据进行分组而形成的,其中LSH已被开发为以近似方式快速搜索近邻。由于所提出的方法并未使用所有训练数据来计算输出余量,因此可以缩短数据选择的时间。在增量学习阶段,为了抑制灾难性遗忘,我们还利用LSH快速选择相邻的RBF单位。另外,我们提出了一种在LSH中更新哈希表的方法,以便在学习期间可以自适应地选择数据。从9个数据集的性能来看,我们确认该方法可以在不牺牲分类精度的情况下快速学习大规模数据序列。这一事实表明,该方法有效地进行了数据选择和增量学习。

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