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Towards Personalized Bundle Creative Generation with Contrastive Non-Autoregressive Decoding

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arxiv 2205.14970 v2 pith:LDWN6DVB submitted 2022-05-30 cs.IR

Towards Personalized Bundle Creative Generation with Contrastive Non-Autoregressive Decoding

classification cs.IR
keywords bundlegenerationcreativecontrastivecreativesdecodingitemsmodel
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Current bundle generation studies focus on generating a combination of items to improve user experience. In real-world applications, there is also a great need to produce bundle creatives that consist of mixture types of objects (e.g., items, slogans and templates) for achieving better promotion effect. We study a new problem named bundle creative generation: for given users, the goal is to generate personalized bundle creatives that the users will be interested in. To take both quality and efficiency into account, we propose a contrastive non-autoregressive model that captures user preferences with ingenious decoding objective. Experiments on large-scale real-world datasets verify that our proposed model shows significant advantages in terms of creative quality and generation speed.

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