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VIP5: Towards Multimodal Foundation Models for Recommendation

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arxiv 2305.14302 v2 pith:3NSNGH5N submitted 2023-05-23 cs.IR cs.AIcs.HCcs.LGcs.MM

VIP5: Towards Multimodal Foundation Models for Recommendation

classification cs.IR cs.AIcs.HCcs.LGcs.MM
keywords modalitiesfoundationmodelsrecommendationvip5multimodaldevelopmentimproved
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Computer Vision (CV), Natural Language Processing (NLP), and Recommender Systems (RecSys) are three prominent AI applications that have traditionally developed independently, resulting in disparate modeling and engineering methodologies. This has impeded the ability for these fields to directly benefit from each other's advancements. With the recent development of foundation models, large language models have emerged as a potential general-purpose interface for unifying different modalities and problem formulations. In light of this, we propose the development of a multimodal foundation model (MFM) considering visual, textual, and personalization modalities under the P5 recommendation paradigm, thus named VIP5 (Visual P5), to unify various modalities and recommendation tasks. This will enable the processing of multiple modalities in a shared architecture for improved recommendations. To achieve this, we introduce multimodal personalized prompts to accommodate multiple modalities under a shared format. Additionally, we propose a parameter-efficient training method for foundation models, which involves freezing the P5 backbone and fine-tuning lightweight adapters, resulting in improved recommendation performance and increased efficiency in terms of training time and memory usage. Code and data of VIP5 are available at https://github.com/jeykigung/VIP5.

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Cited by 3 Pith papers

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  2. LoKA: Low-precision Kernel Applications for Recommendation Models At Scale

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    LoKA enables practical FP8 use in numerically sensitive large recommendation models via online profiling of activations, reusable model modifications for stability, and dynamic kernel dispatching.

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