Evaluating User Engagement in Online News: A Deep Learning Approach Based on Attractiveness and Multiple Features

IF 2.3 4区 社会学 Q1 SOCIAL SCIENCES, INTERDISCIPLINARY Systems Pub Date : 2024-07-30 DOI:10.3390/systems12080274
Guohui Song, Yongbin Wang, Xiaosen Chen, Hongbin Hu, Fan Liu
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Abstract

Online news platforms have become users’ primary information sources. However, they focus on attracting users to click on the news and ignore whether the news triggers a sense of engagement, which could potentially reduce users’ participation in public events. Therefore, this study constructs four indicators by assessing user engagement to build an intelligent system to help platforms optimize their publishing strategies. First, this study defines user engagement evaluation as a classification task that divides user engagement into four indicators and proposes an extended LDA model based on user click–comment behavior (UCCB), using which the attractiveness of words in news headlines and content can be effectively represented. Second, this study proposes a deep user engagement evaluation (DUEE) model that integrates news attractiveness and multiple features in an attention-based deep neural network for user engagement evaluation. The DUEE model considers various elements that collectively determine the ability of the news to attract clicks and engagement. Third, the proposed model is compared with the baseline and state-of-the-art techniques, showing that it outperforms all existing methods. This study provides new research contributions and ideas for improving user engagement in online news evaluation.
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评估用户在网络新闻中的参与度:基于吸引力和多重特征的深度学习方法
网络新闻平台已成为用户的主要信息来源。然而,它们只注重吸引用户点击新闻,而忽视了新闻是否引发了用户的参与感,这有可能降低用户对公共事件的参与度。因此,本研究通过评估用户参与度构建了四个指标,以构建一个智能系统,帮助平台优化其发布策略。首先,本研究将用户参与度评估定义为一项分类任务,将用户参与度分为四个指标,并提出了基于用户点击-评论行为(UCCB)的扩展 LDA 模型,利用该模型可以有效地表示新闻标题和内容中词语的吸引力。其次,本研究提出了一种深度用户参与度评价(DUEE)模型,将新闻吸引力和多种特征整合到基于注意力的深度神经网络中,用于用户参与度评价。DUEE 模型考虑了各种因素,这些因素共同决定了新闻吸引点击和参与的能力。第三,将所提出的模型与基线和最先进的技术进行了比较,结果表明该模型优于所有现有方法。这项研究为提高网络新闻评估中的用户参与度提供了新的研究成果和思路。
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来源期刊
Systems
Systems Decision Sciences-Information Systems and Management
CiteScore
2.80
自引率
15.80%
发文量
204
审稿时长
11 weeks
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