Tracing the origins of manipulation: modeling the enablers behind dark patterns usage in e-commerce through TISM and MICMAC analysis

Vibhav Singh, N. Vishvakarma, Vinod Kumar
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Abstract

Purpose E-commerce companies often manipulate customer decisions through dark patterns to meet their interests. Therefore, this study aims to identify, model and rank the enablers behind dark patterns usage in e-commerce companies. Design/methodology/approach Dark pattern enablers were identified from existing literature and validated by industry experts. Total interpretive structural modeling (TISM) was used to model the enablers. In addition, “matriced impacts croisés multiplication appliquée á un classement” (MICMAC) analysis categorized and ranked the enablers into four groups. Findings Partial human command over cognitive biases, fighting market competition and partial human command over emotional triggers were ranked as the most influential enablers of dark patterns in e-commerce companies. At the same time, meeting long-term economic goals was identified as the most challenging enabler of dark patterns, which has the lowest dependency and impact over the other enablers. Research limitations/implications TISM results are reliant on the opinion of industry experts. Therefore, alternative statistical approaches could be used for validation. Practical implications The insights of this study could be used by business managers to eliminate dark patterns from their platforms and meet the motivations of the enablers of dark patterns with alternate strategies. Furthermore, this research would aid legal agencies and online communities in developing methods to combat dark patterns. Originality/value Although a few studies have developed taxonomies and classified dark patterns, to the best of the authors’ knowledge, no study has identified the enablers behind the use of dark patterns by e-commerce organizations. The study further models the enablers and explains the mutual relationships.
追溯操纵行为的源头:通过 TISM 和 MICMAC 分析建立电子商务中使用黑暗模式背后的推动因素模型
目的电子商务公司经常通过暗模式操纵客户决策,以满足他们的利益。因此,本研究旨在对电子商务公司使用暗箱操作背后的推动因素进行识别、建模和排序。设计/方法/途径从现有文献中识别出暗箱操作的推动因素,并由行业专家进行验证。采用整体解释结构建模法(TISM)对这些促进因素进行建模。研究结果部分人控制认知偏差、对抗市场竞争和部分人控制情感触发因素被评为对电子商务公司的黑暗模式最具影响力的促进因素。同时,满足长期经济目标被认为是最具挑战性的黑暗模式促成因素,对其他促成因素的依赖性和影响最小。实践意义企业管理者可利用本研究的见解消除其平台上的黑暗模式,并通过替代战略满足黑暗模式助推者的动机。此外,这项研究还有助于法律机构和网络社区制定打击黑暗模式的方法。原创性/价值虽然有一些研究已经制定了分类标准并对黑暗模式进行了分类,但据作者所知,还没有研究确定了电子商务组织使用黑暗模式背后的助推因素。本研究对这些助推因素进行了进一步建模,并解释了它们之间的相互关系。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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