基于乘法器的大规模无向加权网络对称非负潜在因子分析的交替方向方法

Yurong Zhong, Xin Luo
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引用次数: 1

摘要

大规模无向加权网络在实际应用中经常遇到。它们可以用对称、高维和稀疏(SHiDS)矩阵来描述,其中的稀疏和对称数据应该小心处理。然而,现有的模型要么不能有效地处理其稀疏性,要么不能正确地描述其对称性。为了解决这些问题,本研究提出了一个基于乘数交替方向方法的对称非负性潜在因素分析(ASNL)模型。其主要思想有三个方面:1)在面向数据密度的学习目标中引入等式约束,以实现灵活有效的学习过程;2)将增广项限定为面向数据密度的,以增强模型的泛化能力;3)利用乘数交替方向法原理,将复杂的优化任务分解为多个简单的子任务,每个子任务在前一个子任务解出结果的基础上求解。对两种SHiDS矩阵的实证研究表明,ASNL对其缺失数据的预测精度高于具有竞争计算效率的最先进模型。
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Alternating-direction-method of Multipliers-Based Symmetric Nonnegative Latent Factor Analysis for Large-scale Undirected Weighted Networks
Large-scale undirected weighted networks are frequently encountered in real applications. They can be described by a Symmetric, High-Dimensional and Sparse (SHiDS) matrix, whose sparse and symmetric data should be addressed with care. However, existing models either fail to handle its sparsity effectively, or fail to correctly describe its symmetry. For addressing these issues, this study proposes an Alternating-direction-method-of-multipliers-based Symmetric Nonnegative Latent Factor Analysis (ASNL) model. Its main idea is three-fold: 1) introducing an equality constraint into a data density-oriented learning objective for a flexible and effective learning process; 2) confining an augmented term to be data density-oriented to enhance generalization the model's ability; and 3) utilizing the principle of alternating-direction-method of multipliers to divide a complex optimization task into multiple simple subtasks, each of which is solved based on the results of previously solved ones. Empirical studies on two SHiDS matrices demonstrate that ASNL obtains higher prediction accuracy for their missing data than state-of-the-art models with competitive computational efficiency.
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