LGIRJun 11, 2024

Non-autoregressive Personalized Bundle Generation

arXiv:2406.06925v1
Originality Incremental advance
AI Analysis

This addresses the need for efficient and accurate bundle recommendations in e-commerce, though it is incremental as it builds on existing non-autoregressive techniques.

The paper tackles the personalized bundle generation problem by proposing a non-autoregressive method to avoid inductive bias and reduce latency, achieving up to 35.92% absolute improvement in Precision over state-of-the-art methods.

The personalized bundle generation problem, which aims to create a preferred bundle for user from numerous candidate items, receives increasing attention in recommendation. However, existing works ignore the order-invariant nature of the bundle and adopt sequential modeling methods as the solution, which might introduce inductive bias and cause a large latency in prediction. To address this problem, we propose to perform the bundle generation via non-autoregressive mechanism and design a novel encoder-decoder framework named BundleNAT, which can effectively output the targeted bundle in one-shot without relying on any inherent order. In detail, instead of learning sequential dependency, we propose to adopt pre-training techniques and graph neural network to fully embed user-based preference and item-based compatibility information, and use a self-attention based encoder to further extract global dependency pattern. We then design a permutation-equivariant decoding architecture that is able to directly output the desired bundle in a one-shot manner. Experiments on three real-world datasets from Youshu and Netease show the proposed BundleNAT significantly outperforms the current state-of-the-art methods in average by up to 35.92%, 10.97% and 23.67% absolute improvements in Precision, Precision+, and Recall, respectively.

Foundations

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