Farah Ben Brahim , Robert Courtois , Germano Vera Cruz , Yasser Khazaal
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Research examining the factors that predict or are associated with CCU are still scarce.</p><p>In this study, we aimed to (a) assess compulsive cyberporn consumption in a broad sample of people who had used cyberporn and (b) determine, among a diverse range of predictor variables, which are most important in CCU scores, as assessed with the eight-item Compulsive Internet Use Scale adapted for cyberporn.</p></div><div><h3>Materials and Methods</h3><p>Overall, 1584 adult English speakers (age: 18–75 years, M = 33.18; sex: 63.1 % male, 35.2 % female, 1.7 % nonbinary) who used cyberporn during the last 6 months responded to an online questionnaire that assessed sociodemographic, sexual, psychological, and psychosocial variables. Their responses were subjected to correlation analysis, analysis of variance, and machine learning analysis.</p></div><div><h3>Results</h3><p>Among the participants, 21.96% (in the higher quartile) presented CCU symptoms in accordance with their CCU scores. The five most important predictors of CCU scores were related to the users’ strength of craving for pornography experiences, suppression of negative emotions porn use motive, frequency of cyberporn use over the past year, acceptance of rape myths, and anxious attachment style.</p></div><div><h3>Conclusions</h3><p>From a large and diverse pool of variables, we determined the most important predictors of CCU scores. 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引用次数: 0
摘要
导言:以前曾有过关于网络色情使用者强迫性使用网络色情(CCU)的报道。然而,以前的大多数研究都是以学生或普通成年人为样本。在本研究中,我们的目标是:(a) 评估使用过网络色情的广泛样本中的强迫性网络色情消费情况;(b) 根据针对网络色情改编的八项强迫性互联网使用量表,确定在各种预测变量中,哪些因素对 CCU 评分最为重要。材料与方法总计有 1584 名讲英语的成年人(年龄:18-75 岁,男 = 33.18;性别:63.1% 为男性,35.2% 为女性,1.7% 为非二元)在过去 6 个月中使用过网络色情,他们回答了一份在线问卷,该问卷评估了社会人口、性、心理和社会心理变量。对他们的回答进行了相关性分析、方差分析和机器学习分析。结果在参与者中,21.96%(处于较高的四分位数)根据其 CCU 分数出现了 CCU 症状。CCU得分的五个最重要的预测因素与使用者对色情体验的渴望程度、抑制负面情绪的色情使用动机、过去一年中使用网络色情的频率、对强奸神话的接受程度以及焦虑依恋风格有关。结论从大量不同的变量中,我们确定了CCU得分的最重要预测因素。这些发现有助于更好地理解问题色情制品的使用,并可丰富强迫性网络色情的治疗和预防。
Predictors of compulsive cyberporn use: A machine learning analysis
Introduction
Compulsive cyberporn use (CCU) has previously been reported among people who use cyberporn. However, most of the previous studies included convenience samples of students or samples of the general adult population. Research examining the factors that predict or are associated with CCU are still scarce.
In this study, we aimed to (a) assess compulsive cyberporn consumption in a broad sample of people who had used cyberporn and (b) determine, among a diverse range of predictor variables, which are most important in CCU scores, as assessed with the eight-item Compulsive Internet Use Scale adapted for cyberporn.
Materials and Methods
Overall, 1584 adult English speakers (age: 18–75 years, M = 33.18; sex: 63.1 % male, 35.2 % female, 1.7 % nonbinary) who used cyberporn during the last 6 months responded to an online questionnaire that assessed sociodemographic, sexual, psychological, and psychosocial variables. Their responses were subjected to correlation analysis, analysis of variance, and machine learning analysis.
Results
Among the participants, 21.96% (in the higher quartile) presented CCU symptoms in accordance with their CCU scores. The five most important predictors of CCU scores were related to the users’ strength of craving for pornography experiences, suppression of negative emotions porn use motive, frequency of cyberporn use over the past year, acceptance of rape myths, and anxious attachment style.
Conclusions
From a large and diverse pool of variables, we determined the most important predictors of CCU scores. The findings contribute to a better understanding of problematic pornography use and could enrich compulsive cyberporn treatment and prevention.
期刊介绍:
Addictive Behaviors Reports is an open-access and peer reviewed online-only journal offering an interdisciplinary forum for the publication of research in addictive behaviors. The journal accepts submissions that are scientifically sound on all forms of addictive behavior (alcohol, drugs, gambling, Internet, nicotine and technology) with a primary focus on behavioral and psychosocial research. The emphasis of the journal is primarily empirical. That is, sound experimental design combined with valid, reliable assessment and evaluation procedures are a requisite for acceptance. We are particularly interested in ''non-traditional'', innovative and empirically oriented research such as negative/null data papers, replication studies, case reports on novel treatments, and cross-cultural research. Studies that might encourage new lines of inquiry as well as scholarly commentaries on topical issues, systematic reviews, and mini reviews are also very much encouraged. We also welcome multimedia submissions that incorporate video or audio components to better display methodology or findings.