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Predicting the antecedents of trust in social commerce - A hybrid structural equation modeling with neural network approach

机译:预测社会商业信任的前提 - 一种用神经网络方法的混合结构方程模型

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Trust is an essential concern in s-commerce. Though existing research has studied the association between trust and purchasing intention; the determinants of the formation of trust in s-commerce remain largely unexplored. This study examines the determinants of trust in s-commerce based on social presence and social support. Unlike most business research, we applied a hybrid SEM-ANN approach that can detect non-linear and non-compensatory relationships. Linear and compensatory models assume that a shortfall in one factor may be compensated by other factors. However, consumer decision-making processes are complicated and non-compensatory and linear models tend to oversimplify these processes. Criterion sampling was used to gather 462 datasets of social commerce users using a mall intercept technique. Information support has the strongest effect followed by the social presence of interaction with the sellers, income and social presence of others. The integrated model predicts 76.9% trust in s-commerce. Theoretical and managerial contributions are discussed.
机译:信任是商业商业的重要担忧。尽管现有的研究已经研究了信任与购买意愿之间的关联;在商业中形成信任的决定因素仍然很大程度上是未开发的。本研究探讨了基于社会存在和社会支持的商业信任的决定因素。与大多数业务研究不同,我们应用了一种可以检测非线性和非补偿关系的混合SEM-ANN方法。线性和补偿模型假设一个因素的短缺可以通过其他因素来补偿。然而,消费者决策过程是复杂的,并且不补偿和线性模型倾向于过度简化这些过程。标准采样用于使用商场拦截技术收集462个社会商业用户数据集。信息支持具有最强的效果,随后与卖方,收入和社会存在互动的社会存在。综合模型预测了对商业的信任76.9%。讨论了理论和管理贡献。

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