社交媒体的使用可从应用程序序列中预测:利用 LSTM 和变压器神经网络为习惯行为建模

IF 9 1区 心理学 Q1 PSYCHOLOGY, EXPERIMENTAL Computers in Human Behavior Pub Date : 2024-07-24 DOI:10.1016/j.chb.2024.108381
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引用次数: 0

摘要

本文通过对智能手机用户连续行为的预测建模,介绍了一种研究社交媒体习惯的新方法。有关媒体和技术习惯的大部分文献都依赖于自我报告问卷和简单的行为频率测量,而我们则研究了媒体和技术习惯的一个重要但未被充分研究的方面:它们在重复行为序列中的嵌入性。利用长短时记忆(LSTM)和变压器神经网络,我们证明了:(i) 社交媒体的使用在人内和人际层面上是可预测的;(ii) 社交媒体使用的可预测性存在强大的个体差异。我们检验了几种建模方法的性能,其中包括:(i) 根据所有参与者的集合数据训练的全局模型;(ii) 针对特定个人的特异性模型;以及 (iii) 根据特定个人数据微调的全局模型。无论是特定人模型还是根据特定人数据进行微调的全局模型的表现都没有明显优于全局模型,这表明全局模型能够代表各种特异的行为模式。此外,我们的分析表明,社交媒体使用可预测性的个体差异与智能手机使用频率的总体差异或社交媒体使用频率的差异没有实质性的关系,这表明我们的方法捕捉到了习惯的一个方面,而这个方面与行为频率不同。本文讨论了习惯建模和理论发展的意义。
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Social media use is predictable from app sequences: Using LSTM and transformer neural networks to model habitual behavior

The present paper introduces a novel approach to studying social media habits through predictive modeling of sequential smartphone user behaviors. While much of the literature on media and technology habits has relied on self-report questionnaires and simple behavioral frequency measures, we examine an important yet understudied aspect of media and technology habits: their embeddedness in repetitive behavioral sequences. Leveraging Long Short-Term Memory (LSTM) and transformer neural networks, we show that (i) social media use is predictable at the within and between-person level and that (ii) there are robust individual differences in the predictability of social media use. We examine the performance of several modeling approaches, including (i) global models trained on the pooled data from all participants, (ii) idiographic person-specific models, and (iii) global models fine-tuned on person-specific data. Neither person-specific modeling nor fine-tuning on person-specific data substantially outperformed the global models, indicating that the global models were able to represent a variety of idiosyncratic behavioral patterns. Additionally, our analyses reveal that individual differences in the predictability of social media use were not substantially related to differences in the frequency of smartphone use in general or the frequency of social media use, indicating that our approach captures an aspect of habits that is distinct from behavioral frequency. Implications for habit modeling and theoretical development are discussed.

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来源期刊
CiteScore
19.10
自引率
4.00%
发文量
381
审稿时长
40 days
期刊介绍: Computers in Human Behavior is a scholarly journal that explores the psychological aspects of computer use. It covers original theoretical works, research reports, literature reviews, and software and book reviews. The journal examines both the use of computers in psychology, psychiatry, and related fields, and the psychological impact of computer use on individuals, groups, and society. Articles discuss topics such as professional practice, training, research, human development, learning, cognition, personality, and social interactions. It focuses on human interactions with computers, considering the computer as a medium through which human behaviors are shaped and expressed. Professionals interested in the psychological aspects of computer use will find this journal valuable, even with limited knowledge of computers.
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