Abstract

Nowadays, people have an increasing interest in fresh products such as new shoes and cosmetics. To this end, an E-commerce platform Taobao launched a fresh-item hub page on the recommender system, with which customers can freely and exclusively explore and purchase fresh items, namely, the New Tendency page. In this work, we make a first attempt to tackle the fresh-item recommendation task with two major challenges. First, a fresh-item recommendation scenario usually faces the challenge that the training data are highly deficient due to low page views. In this paper, we propose a deep interest-shifting network (DisNet), which transfers knowledge from a huge number of auxiliary data and then shifts user interests with contextual information. Furthermore, three interpretable interest-shifting operators are introduced. Second, since the items are fresh, many of them have never been exposed to users, leading to a severe cold-start problem. Though this problem can be alleviated by knowledge transfer, we further babysit these fully cold-start items by a relational meta-Id-embedding generator (RM-IdEG). Specifically, it trains the item id embeddings in a learning-to-learn manner and integrates relational information for better embedding performance. We conducted comprehensive experiments on both synthetic datasets as well as a real-world dataset. Both DisNet and RM-IdEG significantly outperform state-of-the-art approaches, respectively. Empirical results clearly verify the effectiveness of the proposed techniques, which are arguably promising and scalable in real-world applications.

Highlights

  • E-commerce has been prevalent in our daily life

  • To address the cold-start problem, we propose a relational meta-Id-embedding generator (RM-Id embedding generator (IdEG)) that involves the relational data into meta-id embedding initialization, which enables community structural information to be inherently contained

  • Before introducing the second operator, we review a popular technique in the context-aware recommendation, namely, the contextual operation tensor (COT) [37]

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Summary

Introduction

In traditional online shopping scenarios, all items are mixed up, and a recommender system predicts users’ preferences on items based on their past interactions, e.g., click, purchase, and rating [1,2,3] This strategy overlooks the influence of the items’ life periods and causes two problems. Popular items have more opportunities to be exposed, whereas those new products are overwhelmed, even though with high quality [4,5,6]. To tackle these problems, one E-commerce platform Taobao launched a new application, namely, New Tendency page, aiming to recommend fresh items for users who prefer new products. Users who prefer newly released products can freely explore this

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