Latent Network Embedding via Adversarial Auto-encoders
Minglong Lei,
Yong Shi,
Lingfeng Niu
Abstract:Graph auto-encoders have proved to be useful in network embedding task. However, current models only consider explicit structures and fail to explore the informative latent structures cohered in networks. To address this issue, we propose a latent network embedding model based on adversarial graph auto-encoders. Under this framework, the problem of discovering latent structures is formulated as inferring the latent ties from partial observations. A latent transmission matrix that describes the strengths of exi… Show more
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