Efficient Image Gallery Representations at Scale Through Multi-Task Learning

18 May 2020Benjamin GutelmanPavel Levin

Image galleries provide a rich source of diverse information about a product which can be leveraged across many recommendation and retrieval applications. We study the problem of building a universal image gallery encoder through multi-task learning (MTL) approach and demonstrate that it is indeed a practical way to achieve generalizability of learned representations to new downstream tasks... (read more)

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