Graph Neural Networks (GNNs) has been extensively employed in the field of
recommender systems, offering users personalized recommendations and yielding
remarkable outcomes. Recently, GNNs incorporating contrastive learning have
demonstrated promising performance in handling sparse data problem of
recommendation system. However, existing contrastive learning methods still
have limitations in addressing the cold-start problem and resisting noise
interference especially for multi-behavior recommendation. To mitigate the
aforementioned issues, the present research posits a GNNs based multi-behavior
recommendation model MB-SVD that utilizes Singular Value Decomposition (SVD)
graphs to enhance model performance. In particular, MB-SVD considers user
preferences under different behaviors, improving recommendation effectiveness
while better addressing the cold-start problem. Our model introduces an
innovative methodology, which subsume multi-behavior contrastive learning
paradigm to proficiently discern the intricate interconnections among
heterogeneous manifestations of user behavior and generates SVD graphs to
automate the distillation of crucial multi-behavior self-supervised information
for robust graph augmentation. Furthermore, the SVD based framework reduces the
embedding dimensions and computational load. Thorough experimentation showcases
the remarkable performance of our proposed MB-SVD approach in multi-behavior
recommendation endeavors across diverse real-world datasets