Poster
Efficient Network Embedding in the Exponentially Large Quantum Hilbert Space: A High-Dimensional Perspective on Embedding
Hao Xiong · Yehui Tang · Yunlin He · Wei Tan · Junchi Yan
Halle B
Abstract:
Network embedding (NE) is a prominent techniques for network analysis that represents nodes as embeddings in a continuous vector space. We observe existing works all fall in the low-dimensional embedding space with two reasons: 1) it is empirically found that the increasing embedding dimension will cause the over-fitting of embedding models and the subsequent descent of model performance; 2) the overhead brought by high-dimensional embedding also makes a computing method seemingly impractical and worthless. In this paper, we explore a new NE paradigm whose embedding dimension goes exponentially high yet being very efficient and effective. Specifically, the node embeddings are represented as product quantum states that lie in a super high-dimensional (e.g. $2^{32}$-dim) quantum Hilbert space, with a carefully designed optimization approach to guarantee the robustness to work in different scenarios. In the experiments, we show diverse virtues of our methods, including but not limited to: the overwhelming performance on downstream tasks against conventional low-dimensional NE baselines with the similar amount of computing resources, the super high efficiency for a fixed low embedding dimension (e.g. 512) with less than 1/200 memory usage, the robustness when equipped with different objectives and sampling strategies as a fundamental tool for future NE research. As an unexplored topic in literature, the high-dimensional NE paradigm is demonstrated to be effective both experimentally and theoretically.
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