JOURNAL ARTICLE

Convolutional Sequential Recommendation with Temporal Feature and User Preference

HU Ha-lei CHEN Jin-peng

Year: 2022 Journal:   DOAJ (DOAJ: Directory of Open Access Journals)

Abstract

At present,recommendation system has been widely used in our life,which greatly facilitates people's life.The traditional recommendation method mainly analyzes the interaction between users and items and considers the history of users and items,and only obtains the user's preference for items in the past.The sequential recommendation system,by analyzing the interaction sequence of items in the recent period of time and considering the relevance between the user's previous and subsequent behaviors,can obtain user's preference for items in short term.It emphasizes the short-term connection between user and item,while ignoring the relationship between the attributes of the item.Aiming at the above problems,this paper presents a convolutional embedding recommendation with time and user preference (CERTU) model.This model can analyze the relations between items.It can obtain dynamic changes in user preferences.The model also considers the influence of individual item and multiple items to the next item.Experiments show that the performance of CERTU model is better than that of the current baseline method.

Keywords:
Feature (linguistics) Computer science Preference Artificial intelligence Convolutional neural network Information retrieval Pattern recognition (psychology) Mathematics Statistics Linguistics

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