Headache to Overstock? Promoting Long-tail Items through Debiased Product Bundling
Shuo Xu, Haokai Ma, Yunshan Ma, Xiaohao Liu, Lei Meng, Xiangxu Meng,, Tat-Seng Chua

TL;DR
This paper introduces DieT, a framework that mitigates popularity bias in long-tail product bundling by leveraging popularity-free features, leading to improved promotion of less popular items.
Contribution
The paper proposes a novel knowledge transfer framework, DieT, which effectively incorporates popularity-free features to enhance long-tail product bundling performance.
Findings
DieT outperforms state-of-the-art methods on real-world datasets.
Effectively mitigates popularity bias in long-tail scenarios.
Enhances exposure of less popular or overstocked products.
Abstract
Product bundling aims to organize a set of thematically related items into a combined bundle for shipment facilitation and item promotion. To increase the exposure of fresh or overstocked products, sellers typically bundle these items with popular products for inventory clearance. This specific task can be formulated as a long-tail product bundling scenario, which leverages the user-item interactions to define the popularity of each item. The inherent popularity bias in the pre-extracted user feedback features and the insufficient utilization of other popularity-independent knowledge may force the conventional bundling methods to find more popular items, thereby struggling with this long-tail bundling scenario. Through intuitive and empirical analysis, we navigate the core solution for this challenge, which is maximally mining the popularity-free features and effectively incorporating…
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Taxonomy
TopicsOpen Source Software Innovations
MethodsSparse Evolutionary Training · Knowledge Distillation
