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Approximate Tensor Decomposition within a Tensor-Relational Algebraic Framework

机译:张量-关系代数框架内的近似张量分解

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In this paper, we first introduce a tensor-based relational data model and define algebraic operations on this model. We note that, while in traditional relational algebraic systems the join operation tends to be the costliest operation of all, in the tensor-relational framework presented here, tensor decomposition becomes the computationally costliest operation. Therefore, we consider optimization of tensor decomposition operations within a relational algebraic framework. This leads to a highly efficient, effective, and easy-to-parallelize join-by-decomposition approach and a corresponding KL-divergence based optimization strategy. Experimental results provide evidence that minimizing KL-divergence within the proposed join-by-decomposition helps approximate the conventional join-then-decompose scheme well, without the associated time and space costs.
机译:在本文中,我们首先介绍了基于张量的关系数据模型,并在该模型上定义了代数运算。我们注意到,尽管在传统的关系代数系统中,联接运算往往是所有运算中最昂贵的运算,但在此处介绍的张量-关系框架中,张量分解却成为计算上最昂贵的运算。因此,我们考虑在关系代数框架内优化张量分解操作。这导致了一种高效,有效且易于并行化的分解连接方法以及相应的基于KL散度的优化策略。实验结果提供了证据,即在建议的逐个分解连接中将KL散度减到最小有助于很好地近似常规的先分解然后分解方案,而没有相关的时间和空间成本。

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