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首页> 外文期刊>Neural Networks and Learning Systems, IEEE Transactions on >Decentralized Dimensionality Reduction for Distributed Tensor Data Across Sensor Networks
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Decentralized Dimensionality Reduction for Distributed Tensor Data Across Sensor Networks

机译:跨传感器网络的分布式张量数据的降维处理

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This paper develops a novel decentralized dimensionality reduction algorithm for the distributed tensor data across sensor networks. The main contributions of this paper are as follows. First, conventional centralized methods, which utilize entire data to simultaneously determine all the vectors of the projection matrix along each tensor mode, are not suitable for the network environment. Here, we relax the simultaneous processing manner into the one-vector-by-one-vector (OVBOV) manner, i.e., determining the projection vectors (PVs) related to each tensor mode one by one. Second, we prove that in the OVBOV manner each PV can be determined without modifying any tensor data, which simplifies corresponding computations. Third, we cast the decentralized PV determination problem as a set of subproblems with consensus constraints, so that it can be solved in the network environment only by local computations and information communications among neighboring nodes. Fourth, we introduce the null space and transform the PV determination problem with complex orthogonality constraints into an equivalent hidden convex one without any orthogonality constraint, which can be solved by the Lagrange multiplier method. Finally, experimental results are given to show that the proposed algorithm is an effective dimensionality reduction scheme for the distributed tensor data across the sensor networks.
机译:本文针对传感器网络中分布的张量数据,开发了一种新的分散降维算法。本文的主要贡献如下。首先,传统的集中式方法不适用于网络环境,该方法使用整个数据来同时确定沿每个张量模式的投影矩阵的所有向量。在这里,我们将同时处理方式放宽为一个向量一个向量(OVBOV)的方式,即一一确定与每个张量模式相关的投影向量(PVs)。其次,我们证明以OVBOV方式可以确定每个PV而无需修改任何张量数据,从而简化了相应的计算。第三,我们将分散式PV确定问题转换为具有共识约束的一组子问题,以便仅通过本地计算和相邻节点之间的信息通信才能在网络环境中解决该问题。第四,我们引入零空间,将具有复杂正交约束的PV确定问题转换为没有任何正交约束的等价的隐性凸凸,可以通过拉格朗日乘数法求解。最后,实验结果表明,该算法是跨传感器网络分布张量数据的有效降维方案。

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