Alternating Local Enumeration (TnALE): Solving Tensor Network Structure Search with Fewer Evaluations

April 25, 2023 ยท Declared Dead ยท ๐Ÿ› International Conference on Machine Learning

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Authors Chao Li, Junhua Zeng, Chunmei Li, Cesar Caiafa, Qibin Zhao arXiv ID 2304.12875 Category cs.LG: Machine Learning Cross-listed cs.DS Citations 22 Venue International Conference on Machine Learning Last Checked 4 months ago
Abstract
Tensor network (TN) is a powerful framework in machine learning, but selecting a good TN model, known as TN structure search (TN-SS), is a challenging and computationally intensive task. The recent approach TNLS~\cite{li2022permutation} showed promising results for this task, however, its computational efficiency is still unaffordable, requiring too many evaluations of the objective function. We propose TnALE, a new algorithm that updates each structure-related variable alternately by local enumeration, \emph{greatly} reducing the number of evaluations compared to TNLS. We theoretically investigate the descent steps for TNLS and TnALE, proving that both algorithms can achieve linear convergence up to a constant if a sufficient reduction of the objective is \emph{reached} in each neighborhood. We also compare the evaluation efficiency of TNLS and TnALE, revealing that $ฮฉ(2^N)$ evaluations are typically required in TNLS for \emph{reaching} the objective reduction in the neighborhood, while ideally $O(N^2R)$ evaluations are sufficient in TnALE, where $N$ denotes the tensor order and $R$ reflects the \emph{``low-rankness''} of the neighborhood. Experimental results verify that TnALE can find practically good TN-ranks and permutations with vastly fewer evaluations than the state-of-the-art algorithms.
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