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Parsimonious random vector functional link network for data streams

机译:用于数据流的解析随机矢量功能链接网络

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AbstractThe majority of the existing work on random vector functional link networks (RVFLNs) is not scalable for data stream analytics because they work under a batch learning scenario and lack a self-organizing property. A novel RVLFN, namely the parsimonious random vector functional link network (pRVFLN), is proposed in this paper. pRVFLN adopts a fully flexible and adaptive working principle where its network structure can be configured from scratch and can be automatically generated, pruned and recalled from data streams. pRVFLN is capable of selecting and deselecting input attributes on the fly as well as capable of extracting important training samples for model updates. In addition, pRVFLN introduces a non-parametric type of hidden node which completely reflects the real data distribution and is not constrained by a specific shape of the cluster. All learning procedures of pRVFLN follow a strictly single-pass learning mode, which is applicable for online time-critical applications. The advantage of pRVFLN is verified through numerous simulations with real-world data streams. It was benchmarked against recently published algorithms where it demonstrated comparable and even higher predictive accuracies while imposing the lowest complexities.]]>
机译:<![cdata [ 抽象 随机向量功能链接网络的大部分工作都不可扩展数据流分析,因为它们在批处理方案下工作并缺乏自我组织的财产。本文提出了一种新颖的RVLFN,即解析随机矢量功能链路网络(PRVFLN)。 PRVFLN采用完全灵活和自适应的工作原理,可以从头开始配置网络结构,可以从数据流自动生成,修剪和召回。 PRVFLN能够在飞行中选择和取消选择输入属性,并能够提取用于模型更新的重要培训样本。此外,prvfln引入了非参数类型的隐藏节点,其完全反映了真实数据分布,并且不受群集的特定形状的约束。 PRVFLN的所有学习程序遵循严格的单通过学习模式,适用于在线时间关键的应用程序。通过具有现实数据流的许多模拟来验证prvfln的优势。它是针对最近发表的算法基准测试,其中它表现出可比且甚至更高的预测精度,同时施加最低的复杂性。 ]>

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