A Multimodal Single-Branch Embedding Network for Recommendation in Cold-Start and Missing Modality Scenarios
September 26, 2024 Β· Declared Dead Β· π ACM Conference on Recommender Systems
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Authors
Christian GanhΓΆr, Marta Moscati, Anna Hausberger, Shah Nawaz, Markus Schedl
arXiv ID
2409.17864
Category
cs.IR: Information Retrieval
Cross-listed
cs.AI,
cs.LG,
cs.MM
Citations
21
Venue
ACM Conference on Recommender Systems
Last Checked
4 months ago
Abstract
Most recommender systems adopt collaborative filtering (CF) and provide recommendations based on past collective interactions. Therefore, the performance of CF algorithms degrades when few or no interactions are available, a scenario referred to as cold-start. To address this issue, previous work relies on models leveraging both collaborative data and side information on the users or items. Similar to multimodal learning, these models aim at combining collaborative and content representations in a shared embedding space. In this work we propose a novel technique for multimodal recommendation, relying on a multimodal Single-Branch embedding network for Recommendation (SiBraR). Leveraging weight-sharing, SiBraR encodes interaction data as well as multimodal side information using the same single-branch embedding network on different modalities. This makes SiBraR effective in scenarios of missing modality, including cold start. Our extensive experiments on large-scale recommendation datasets from three different recommendation domains (music, movie, and e-commerce) and providing multimodal content information (audio, text, image, labels, and interactions) show that SiBraR significantly outperforms CF as well as state-of-the-art content-based RSs in cold-start scenarios, and is competitive in warm scenarios. We show that SiBraR's recommendations are accurate in missing modality scenarios, and that the model is able to map different modalities to the same region of the shared embedding space, hence reducing the modality gap.
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