GIMIRec: Global Interaction Information Aware Multi-Interest Framework
for Sequential Recommendation
- URL: http://arxiv.org/abs/2112.08717v1
- Date: Thu, 16 Dec 2021 09:12:33 GMT
- Title: GIMIRec: Global Interaction Information Aware Multi-Interest Framework
for Sequential Recommendation
- Authors: Jie Zhang, Ke-Jia Chen, Jingqiang Chen
- Abstract summary: This paper proposes a novel sequential recommendation model called "Global Interaction Aware Multi-Interest Framework for Sequential Recommendation (GIMIRec)"
The performance of GIMIRec on the Recall, NDCG and Hit Rate indicators is significantly superior to that of the state-of-the-art methods.
- Score: 5.416421678129053
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Sequential recommendation based on multi-interest framework models the user's
recent interaction sequence into multiple different interest vectors, since a
single low-dimensional vector cannot fully represent the diversity of user
interests. However, most existing models only intercept users' recent
interaction behaviors as training data, discarding a large amount of historical
interaction sequences. This may raise two issues. On the one hand, data
reflecting multiple interests of users is missing; on the other hand, the
co-occurrence between items in historical user-item interactions is not fully
explored. To tackle the two issues, this paper proposes a novel sequential
recommendation model called "Global Interaction Aware Multi-Interest Framework
for Sequential Recommendation (GIMIRec)". Specifically, a global context
extraction module is firstly proposed without introducing any external
information, which calculates a weighted co-occurrence matrix based on the
constrained co-occurrence number of each item pair and their time interval from
the historical interaction sequences of all users and then obtains the global
context embedding of each item by using a simplified graph convolution.
Secondly, the time interval of each item pair in the recent interaction
sequence of each user is captured and combined with the global context item
embedding to get the personalized item embedding. Finally, a self-attention
based multi-interest framework is applied to learn the diverse interests of
users for sequential recommendation. Extensive experiments on the three
real-world datasets of Amazon-Books, Taobao-Buy and Amazon-Hybrid show that the
performance of GIMIRec on the Recall, NDCG and Hit Rate indicators is
significantly superior to that of the state-of-the-art methods. Moreover, the
proposed global context extraction module can be easily transplanted to most
sequential recommendation models.
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