An Effective Augmented Lagrangian Method for Fine-Grained Multi-View Optimization

Authors

  • Yuze Tan Sichuan University Engineering Research Center of Machine Learning and Industry Intelligence, Ministry of Education
  • Hecheng Cai Sichuan University Engineering Research Center of Machine Learning and Industry Intelligence, Ministry of Education
  • Shudong Huang Sichuan University Engineering Research Center of Machine Learning and Industry Intelligence, Ministry of Education
  • Shuping Wei Nuclear Power Institute of China
  • Fan Yang Sichuan University Sichuan IotDT Technology Co., Ltd.
  • Jiancheng Lv Sichuan University Engineering Research Center of Machine Learning and Industry Intelligence, Ministry of Education

DOI:

https://doi.org/10.1609/aaai.v38i14.29449

Keywords:

ML: Multi-instance/Multi-view Learning, ML: Clustering, ML: Multimodal Learning

Abstract

The significance of multi-view learning in effectively mitigating the intricate intricacies entrenched within heterogeneous data has garnered substantial attention in recent years. Notwithstanding the favorable achievements showcased by recent strides in this area, a confluence of noteworthy challenges endures. To be specific, a majority of extant methodologies unceremoniously assign weights to data points view-wisely. This ineluctably disregards the intrinsic reality that disparate views confer diverse contributions to each individual sample, consequently neglecting the rich wellspring of sample-level structural insights harbored within the dataset. In this paper, we proposed an effective Augmented Lagrangian MethOd for fiNe-graineD (ALMOND) multi-view optimization. This innovative approach scrutinizes the interplay among multiple views at the granularity of individual samples, thereby fostering the enhanced preservation of local structural coherence. The Augmented Lagrangian Method (ALM) is elaborately incorporated into our framework, which enables us to achieve an optimal solution without involving an inexplicable intermediate variable as previous methods do. Empirical experiments on multi-view clustering tasks across heterogeneous datasets serve to incontrovertibly showcase the effectiveness of our proposed methodology, corroborating its preeminence over incumbent state-of-the-art alternatives.

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Published

2024-03-24

How to Cite

Tan, Y., Cai, H., Huang, S., Wei, S., Yang, F., & Lv, J. (2024). An Effective Augmented Lagrangian Method for Fine-Grained Multi-View Optimization. Proceedings of the AAAI Conference on Artificial Intelligence, 38(14), 15258-15266. https://doi.org/10.1609/aaai.v38i14.29449

Issue

Section

AAAI Technical Track on Machine Learning V