TY - GEN
T1 - Learning on Adaptive Manifolds for Graph Collaborative Filtering
AU - Qi, Guangzhi
AU - Liu, Guojun
AU - Zhou, Qi
N1 - Publisher Copyright:
© 2026 Owner/Author.
PY - 2026/4/12
Y1 - 2026/4/12
N2 - Graph-based collaborative filtering has advanced by modeling higher-order interactions, yet performance remains constrained by underlying geometric assumptions and propagation schemes. User-item interaction graphs typically exhibit pronounced topological heterogeneity, whereas existing methods rely on a fixed, homogeneous geometry and employ tangent space aggregation. To address these fundamental limitations, this paper introduces Adaptive Geometric Collaborative Filtering (AGCF), a novel method rooted in Hamiltonian dynamics, which reframes representation learning as a physical process evolving on a time-varying manifold. AGCF is distinguished by an integrated design comprising: (1) a learnable, node-dependent Riemannian metric that construct a continuous heterogeneous manifold aligned with local topology; (2) unified dynamic trajectories that achieve intrinsic propagation without tangent space approximations; (3) a channel-wise metric that captures semantic anisotropy in the feature space. We rigorously prove global existence and uniqueness of the induced dynamics and explain the mechanism enabling long-range information propagation. Extensive experiments on five benchmark datasets show consistent gains over representative baselines.
AB - Graph-based collaborative filtering has advanced by modeling higher-order interactions, yet performance remains constrained by underlying geometric assumptions and propagation schemes. User-item interaction graphs typically exhibit pronounced topological heterogeneity, whereas existing methods rely on a fixed, homogeneous geometry and employ tangent space aggregation. To address these fundamental limitations, this paper introduces Adaptive Geometric Collaborative Filtering (AGCF), a novel method rooted in Hamiltonian dynamics, which reframes representation learning as a physical process evolving on a time-varying manifold. AGCF is distinguished by an integrated design comprising: (1) a learnable, node-dependent Riemannian metric that construct a continuous heterogeneous manifold aligned with local topology; (2) unified dynamic trajectories that achieve intrinsic propagation without tangent space approximations; (3) a channel-wise metric that captures semantic anisotropy in the feature space. We rigorously prove global existence and uniqueness of the induced dynamics and explain the mechanism enabling long-range information propagation. Extensive experiments on five benchmark datasets show consistent gains over representative baselines.
KW - graph collaborative filtering
KW - recommender system
KW - riemannian manifold
UR - https://www.scopus.com/pages/publications/105038565527
U2 - 10.1145/3774904.3792239
DO - 10.1145/3774904.3792239
M3 - 会议稿件
AN - SCOPUS:105038565527
T3 - WWW 2026 - Proceedings of the ACM Web Conference 2026
SP - 6033
EP - 6044
BT - WWW 2026 - Proceedings of the ACM Web Conference 2026
PB - Association for Computing Machinery, Inc
T2 - 35th ACM Web Conference, WWW 2026
Y2 - 29 June 2026 through 3 July 2026
ER -