传统社会学习能否预测网络偏差?探索社会学习理论中的犯罪多面性理论。

IF 1 3区 社会学 Q2 LAW
You Zhou, Weidi Liu, Claire Lee, Boyang Xu, Ivan Sun
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引用次数: 0

摘要

社会学习理论已被广泛用于理解网络违规行为。然而,前因学术研究同质化地嵌套在违法行为规范的视角中,使得违法行为多变性的论题无法实现。此类研究的缺乏可能会削弱全面理解网络犯罪社会学习模式的能力。本研究以 3741 名中国大学生为样本,估计了一系列二元逻辑回归,比较了传统社会学习和网络社会学习对四类网络犯罪(网络性骚扰、网络欺凌、黑客攻击和数字盗版)的影响。结果表明,在网络违规行为的社会学习过程中,违规行为的多变性和违规行为的规范性是并存的,而违规行为的规范性所解释的方差略大。此外,在线学习变量是传统学习与网络偏差之间关系的潜在中介。此外,与依赖网络的犯罪相比,传统社会学习对网络犯罪的预测力更强。我们的研究提供了新的经验证据,证明在网络偏差的社会学习过程中,犯罪多变性与犯罪规格之间存在非排他性关联。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Traditional social learning predicts cyber deviance? Exploring the offending versatility thesis in social learning theory

Social learning theory has been widely implemented to understand cyber deviance. Nevertheless, the antecedent scholarship homogenously nested in the perspective of offending specification, leaving the offending versatility thesis unattained. The lack of such studies may undermine the capability of comprehensively understanding the social learning patterns of online offending. Using a sample of 3741 Chinese college students, this study estimated an array of binary logistic regressions to compare the effects of traditional and online social learning in four types of online offending (online sexual harassment, cyberbullying, hacking, and digital piracy). The results suggest that offending versatility and offending specification co-exist in the social learning process of cyber deviance, while offending specification explains a marginally greater variance. Besides, online learning variables act as potential mediators in the relationships between traditional learning and cyber deviance. Furthermore, traditional social learning shows greater predictive power in cyber-enabled crimes than in cyber-dependent crimes. Our study provides fresh empirical evidence for the non-exclusive association between offending versatility and offending specification in the social learning process of cyber deviance.

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来源期刊
CiteScore
2.50
自引率
7.10%
发文量
50
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