4 research outputs found
Adaptive Graph Contrastive Learning for Recommendation
Graph neural networks (GNNs) have recently emerged as an effective
collaborative filtering (CF) approaches for recommender systems. The key idea
of GNN-based recommender systems is to recursively perform message passing
along user-item interaction edges to refine encoded embeddings, relying on
sufficient and high-quality training data. However, user behavior data in
practical recommendation scenarios is often noisy and exhibits skewed
distribution. To address these issues, some recommendation approaches, such as
SGL, leverage self-supervised learning to improve user representations. These
approaches conduct self-supervised learning through creating contrastive views,
but they depend on the tedious trial-and-error selection of augmentation
methods. In this paper, we propose a novel Adaptive Graph Contrastive Learning
(AdaGCL) framework that conducts data augmentation with two adaptive
contrastive view generators to better empower the CF paradigm. Specifically, we
use two trainable view generators - a graph generative model and a graph
denoising model - to create adaptive contrastive views. With two adaptive
contrastive views, AdaGCL introduces additional high-quality training signals
into the CF paradigm, helping to alleviate data sparsity and noise issues.
Extensive experiments on three real-world datasets demonstrate the superiority
of our model over various state-of-the-art recommendation methods. Our model
implementation codes are available at the link https://github.com/HKUDS/AdaGCL
PromptMM: Multi-Modal Knowledge Distillation for Recommendation with Prompt-Tuning
Multimedia online platforms (e.g., Amazon, TikTok) have greatly benefited
from the incorporation of multimedia (e.g., visual, textual, and acoustic)
content into their personal recommender systems. These modalities provide
intuitive semantics that facilitate modality-aware user preference modeling.
However, two key challenges in multi-modal recommenders remain unresolved: i)
The introduction of multi-modal encoders with a large number of additional
parameters causes overfitting, given high-dimensional multi-modal features
provided by extractors (e.g., ViT, BERT). ii) Side information inevitably
introduces inaccuracies and redundancies, which skew the modality-interaction
dependency from reflecting true user preference. To tackle these problems, we
propose to simplify and empower recommenders through Multi-modal Knowledge
Distillation (PromptMM) with the prompt-tuning that enables adaptive quality
distillation. Specifically, PromptMM conducts model compression through
distilling u-i edge relationship and multi-modal node content from cumbersome
teachers to relieve students from the additional feature reduction parameters.
To bridge the semantic gap between multi-modal context and collaborative
signals for empowering the overfitting teacher, soft prompt-tuning is
introduced to perform student task-adaptive. Additionally, to adjust the impact
of inaccuracies in multimedia data, a disentangled multi-modal list-wise
distillation is developed with modality-aware re-weighting mechanism.
Experiments on real-world data demonstrate PromptMM's superiority over existing
techniques. Ablation tests confirm the effectiveness of key components.
Additional tests show the efficiency and effectiveness.Comment: WWW 202
Nonmonotonic loadâdependence of friction during nanoparticle manipulation
Abstract The tribological behaviors of nanoparticles (NPs) have attracted widespread attention in the fields of nanoâlubrication and ultraâprecision manufacturing. The frictional and dynamic behaviors of SiO2 NPs acting with the single asperity were studied on silicon surface utilizing atomic force microscope. The friction forces of NPs, both static and kinetic, exhibit an initial decrease followed by an increase as the normal load increases (0â300 nN). The nonmonotonic loadâdependence of friction behavior corresponds to the dynamic transformation of âslidingârollingâslidingâ motion state of the manipulated NPs, which can be predicted by a DoubleâHertz model and further confirmed by nanoindentationâmarked NPs. This research has a significant implication for regulating dynamic behaviors of NPs in contemporary threeâbody abrasive tribology