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Multimodal Recommendation

The multimodal recommendation task involves developing systems that leverage and integrate multiple types of data—such as text, images, audio, and user interactions—to predict and suggest items that align with a user's preferences. Unlike traditional recommendation approaches that rely on a single data modality, multimodal recommendation harnesses the diverse information from various sources to create richer and more nuanced representations of both users and items. This integration enables the system to understand and capture complex relationships and attributes across different data types, thereby enhancing the accuracy and relevance of the recommendations. The primary goal is to provide personalized suggestions by effectively merging and processing heterogeneous data to better match users with items they are likely to engage with or find valuable.

Papers

Showing 1120 of 59 papers

TitleStatusHype
AlignRec: Aligning and Training in Multimodal RecommendationsCode1
Causality-Inspired Fair Representation Learning for Multimodal RecommendationCode1
Disentangled Graph Variational Auto-Encoder for Multimodal Recommendation with InterpretabilityCode1
MENTOR: Multi-level Self-supervised Learning for Multimodal RecommendationCode1
Generating with Fairness: A Modality-Diffused Counterfactual Framework for Incomplete Multimodal RecommendationsCode1
GUME: Graphs and User Modalities Enhancement for Long-Tail Multimodal RecommendationCode1
Ducho 2.0: Towards a More Up-to-Date Unified Framework for the Extraction of Multimodal Features in RecommendationCode1
Ducho: A Unified Framework for the Extraction of Multimodal Features in RecommendationCode1
A Tale of Two Graphs: Freezing and Denoising Graph Structures for Multimodal RecommendationCode1
LGMRec: Local and Global Graph Learning for Multimodal RecommendationCode1
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