Contrastive Learning (CL)-based recommender systems have gained prominence in the context of Heterogeneous Graph (HG) due to their capacity to enhance the consistency of representations across different views. Nonetheless, existing frameworks often neglect the fact that user-item interactions within HG are governed by diverse latent intents (for instance, preferences towards specific brands or the demographic characteristics of item audiences), which are pivotal in capturing fine-grained relations. The exploration of these underlying intents, particularly through the lens of meta-paths in HGs, presents us with two principal challenges: i) How to integrate CL mechanisms with latent intents; ii) How to mitigate the noise associated with these complicated intents.To address these challenges, we propose an innovative framework termed Intent-Guided Heterogeneous Graph Contrastive Learning (IHGCL), which designed to enhance CL-based recommendation by capturing the intents contained within meta-paths. Specifically, the IHGCL framework includes: i) it employs a meta-path-based dual contrastive learning approach to effectively integrate intents into the recommendation, constructing meta-path contrast and view contrast; ii) it uses an bottlenecked autoencoder that combines mask propagation with the information bottleneck principle to significantly reduce noise perturbations introduced by meta-paths. Empirical evaluations conducted across six distinct datasets demonstrate the superior performance of our IHGCL framework relative to conventional baseline methods. Our model implementation is available at https://github.com/wangyu0627/IHGCL.
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