Graph-based personality detection constructs graph structures from textual data, particularly social media posts. Current methods often struggle with sparse or noisy data and rely on static graphs, limiting their ability to capture dynamic changes between nodes and relationships. This paper introduces LL4G, a self-supervised framework leveraging large language models (LLMs) to optimize graph neural networks (GNNs). LLMs extract rich semantic features to generate node representations and to infer explicit and implicit relationships. The graph structure adaptively adds nodes and edges based on input data, continuously optimizing itself. The GNN then uses these optimized representations for joint training on node reconstruction, edge prediction, and contrastive learning tasks. This integration of semantic and structural information generates robust personality profiles. Experimental results on Kaggle and Pandora datasets show LL4G outperforms state-of-the-art models.
View on arXiv@article{shen2025_2504.02146, title={ LL4G: Self-Supervised Dynamic Optimization for Graph-Based Personality Detection }, author={ Lingzhi Shen and Yunfei Long and Xiaohao Cai and Guanming Chen and Yuhan Wang and Imran Razzak and Shoaib Jameel }, journal={arXiv preprint arXiv:2504.02146}, year={ 2025 } }