Computer Science > Machine Learning
[Submitted on 12 Apr 2022 (v1), last revised 28 Aug 2023 (this version, v7)]
Title:Continuous-Time User Preference Modelling for Temporal Sets Prediction
View PDFAbstract:Given a sequence of sets, where each set has a timestamp and contains an arbitrary number of elements, temporal sets prediction aims to predict the elements in the subsequent set. Previous studies for temporal sets prediction mainly focus on the modelling of elements and implicitly represent each user's preference based on his/her interacted elements. However, user preferences are often continuously evolving and the evolutionary trend cannot be fully captured with the indirect learning paradigm of user preferences. To this end, we propose a continuous-time user preference modelling framework for temporal sets prediction, which explicitly models the evolving preference of each user by maintaining a memory bank to store the states of all the users and elements. Specifically, we first construct a universal sequence by arranging all the user-set interactions in a non-descending temporal order, and then chronologically learn from each user-set interaction. For each interaction, we continuously update the memories of the related user and elements based on their currently encoded messages and past memories. Moreover, we present a personalized user behavior learning module to discover user-specific characteristics based on each user's historical sequence, which aggregates the previously interacted elements from dual perspectives according to the user and elements. Finally, we develop a set-batch algorithm to improve the model efficiency, which can create time-consistent batches in advance and achieve 3.5x and 3.0x speedups in the training and evaluation process on average. Experiments on four real-world datasets demonstrate the superiority of our approach over state-of-the-arts under both transductive and inductive settings. The good interpretability of our method is also shown.
Submission history
From: Le Yu [view email][v1] Tue, 12 Apr 2022 02:49:27 UTC (2,511 KB)
[v2] Wed, 13 Apr 2022 03:06:27 UTC (2,511 KB)
[v3] Thu, 14 Apr 2022 09:53:13 UTC (2,511 KB)
[v4] Fri, 17 Jun 2022 13:03:46 UTC (5,174 KB)
[v5] Wed, 13 Jul 2022 05:49:40 UTC (5,174 KB)
[v6] Sun, 31 Jul 2022 05:06:34 UTC (2,012 KB)
[v7] Mon, 28 Aug 2023 05:03:48 UTC (6,050 KB)
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