LION: A Clifford Neural Paradigm for Multimodal-Attributed Graph Learning
Xunkai Li, Zhengyu Wu, Zekai Chen, Henan Sun, Daohan Su, Guang Zeng, Hongchao Qin, Rong-Hua Li, Guoren Wang

TL;DR
LION introduces a novel Clifford algebra-based neural paradigm for multimodal-attributed graph learning, effectively addressing modality alignment and fusion challenges, leading to superior performance across multiple datasets and tasks.
Contribution
The paper proposes a new Clifford algebra-based neural framework that enhances modality interaction and fusion in multimodal graph learning, overcoming limitations of existing methods.
Findings
LION outperforms state-of-the-art methods on 9 datasets.
Effective modality alignment and fusion demonstrated.
Significant improvements in downstream task performance.
Abstract
Recently, the rapid advancement of multimodal domains has driven a data-centric paradigm shift in graph ML, transitioning from text-attributed to multimodal-attributed graphs. This advancement significantly enhances data representation and expands the scope of graph downstream tasks, such as modality-oriented tasks, thereby improving the practical utility of graph ML. Despite its promise, limitations exist in the current neural paradigms: (1) Neglect Context in Modality Alignment: Most existing methods adopt topology-constrained or modality-specific operators as tokenizers. These aligners inevitably neglect graph context and inhibit modality interaction, resulting in suboptimal alignment. (2) Lack of Adaptation in Modality Fusion: Most existing methods are simple adaptations for 2-modality graphs and fail to adequately exploit aligned tokens equipped with topology priors during fusion,…
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Taxonomy
TopicsAdvanced Graph Neural Networks · Graph Theory and Algorithms · Topological and Geometric Data Analysis
