Document detail
ID

oai:arXiv.org:2409.05546

Topic
Computer Science - Information Ret...
Author
Liu, Enze Zheng, Bowen Ling, Cheng Hu, Lantao Li, Han Zhao, Wayne Xin
Category

Computer Science

Year

2024

listing date

9/11/2024

Keywords
tokenization alignment recommender recommendation item generative
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Abstract

Recently, generative recommendation has emerged as a promising new paradigm that directly generates item identifiers for recommendation.

However, a key challenge lies in how to effectively construct item identifiers that are suitable for recommender systems.

Existing methods typically decouple item tokenization from subsequent generative recommendation training, likely resulting in suboptimal performance.

To address this limitation, we propose ETEGRec, a novel End-To-End Generative Recommender by seamlessly integrating item tokenization and generative recommendation.

Our framework is developed based on the dual encoder-decoder architecture, which consists of an item tokenizer and a generative recommender.

In order to achieve mutual enhancement between the two components, we propose a recommendation-oriented alignment approach by devising two specific optimization objectives: sequence-item alignment and preference-semantic alignment.

These two alignment objectives can effectively couple the learning of item tokenizer and generative recommender, thereby fostering the mutual enhancement between the two components.

Finally, we further devise an alternating optimization method, to facilitate stable and effective end-to-end learning of the entire framework.

Extensive experiments demonstrate the effectiveness of our proposed framework compared to a series of traditional sequential recommendation models and generative recommendation baselines.

Liu, Enze,Zheng, Bowen,Ling, Cheng,Hu, Lantao,Li, Han,Zhao, Wayne Xin, 2024, End-to-End Learnable Item Tokenization for Generative Recommendation

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