PLANC: Parallel Low-rank Approximation with Nonnegativity Constraints

被引:7
作者
Eswar, Srinivas [1 ]
Hayashi, Koby [1 ]
Ballard, Grey [2 ]
Kannan, Ramakrishnan [3 ]
Matheson, Michael A. [3 ]
Park, Haesun [1 ]
机构
[1] Georgia Inst Technol, Dept CSE, Atlanta, GA 30308 USA
[2] Wake Forest Univ, Dept CS, Winston Salem, NC 27109 USA
[3] Oak Ridge Natl Lab, Oak Ridge, TN 37831 USA
来源
ACM TRANSACTIONS ON MATHEMATICAL SOFTWARE | 2021年 / 47卷 / 03期
基金
美国国家科学基金会;
关键词
Tensor factorization; nonnegative least squares; communication-avoiding algorithms; TENSOR DECOMPOSITIONS; COLLECTIVE COMMUNICATION; MATRIX; ALGORITHMS; FACTORIZATION; OPTIMIZATION; FRAMEWORK; SPARSE;
D O I
10.1145/3432185
中图分类号
TP31 [计算机软件];
学科分类号
081202 ; 0835 ;
摘要
We consider the problem of low-rank approximation of massive dense nonnegative tensor data, for example, to discover latent patterns in video and imaging applications. As the size of data sets grows, single workstations are hitting bottlenecks in both computation time and available memory. We propose a distributed-memory parallel computing solution to handle massive data sets, loading the input data across the memories of multiple nodes, and performing efficient and scalable parallel algorithms to compute the low-rank approximation. We present a software package called Parallel Low-rank Approximation with Non-negativity Constraints, which implements our solution and allows for extension in terms of data (dense or sparse, matrices or tensors of any order), algorithm (e.g., from multiplicative updating techniques to alternating direction method of multipliers), and architecture (we exploit GPUs to accelerate the computation in this work). We describe our parallel distributions and algorithms, which are careful to avoid unnecessary communication and computation, show how to extend the software to include new algorithms and/or constraints, and report efficiency and scalability results for both synthetic and real-world data sets.
引用
收藏
页数:37
相关论文
共 69 条
[1]  
Anandkumar A, 2014, J MACH LEARN RES, V15, P2773
[2]   PARAFAC algorithms for large-scale problems [J].
Anh Huy Phan ;
Cichocki, Andrzej .
NEUROCOMPUTING, 2011, 74 (11) :1970-1984
[3]  
[Anonymous], 2012, P IEEE C HIGH PERF E
[4]  
[Anonymous], 2010, Technical Report
[5]   Efficient MATLAB computations with sparse and factored tensors [J].
Bader, Brett W. ;
Kolda, Tamara G. .
SIAM JOURNAL ON SCIENTIFIC COMPUTING, 2007, 30 (01) :205-231
[6]  
Ballard G, 2020, Par Pr for Sci Comp, P1
[7]   Parallel Nonnegative CP Decomposition of Dense Tensors [J].
Ballard, Grey ;
Hayashi, Koby ;
Kannan, Ramakrishnan .
2018 IEEE 25TH INTERNATIONAL CONFERENCE ON HIGH PERFORMANCE COMPUTING (HIPC), 2018, :22-31
[8]   Communication Lower Bounds for Matricized Tensor Times Khatri-Rao Product [J].
Ballard, Grey ;
Rouse, Kathryn ;
Knight, Nicholas .
2018 32ND IEEE INTERNATIONAL PARALLEL AND DISTRIBUTED PROCESSING SYMPOSIUM (IPDPS), 2018, :557-567
[9]   A PRACTICAL RANDOMIZED CP TENSOR DECOMPOSITION [J].
Battaglino, Casey ;
Ballard, Grey ;
Kolda, Tamara G. .
SIAM JOURNAL ON MATRIX ANALYSIS AND APPLICATIONS, 2018, 39 (02) :876-901
[10]   Distributed optimization and statistical learning via the alternating direction method of multipliers [J].
Boyd S. ;
Parikh N. ;
Chu E. ;
Peleato B. ;
Eckstein J. .
Foundations and Trends in Machine Learning, 2010, 3 (01) :1-122