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Prediction of online perceived service quality using spider monkey optimisation

机译:使用蜘蛛猴优化预测在线感知服务质量

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With the evolution of technology, the attention of customers for the shopping has triggered to online platforms in a way that can never be thought of thus, giving a huge competition to the traditional methods but with this there arises a case of doubt in the perceived service quality of the products/services. For attracting the customers towards it, a website should always have some characteristics through which a customer can evaluate its quality easily. This study is one of a kind endeavour aiming to predict online perceived service quality by focusing on the characteristics of user interface, security and customer service of an e-commerce website. A swarm-based intelligent optimisation algorithm, SMO which is known for having good capacities for providing the best solution in the sufficient time has been used for the purpose of feature selection in the study. Along with SMO, many classification models like rpart, decision trees (C5.0), support vector machine and general linear model are used for prediction.
机译:随着技术的发展,顾客对购物的关注以前所未有的方式触发了在线平台的竞争,这给传统方法带来了巨大的竞争,但由此引起人们对可感知服务的怀疑产品/服务的质量。为了吸引顾客,网站应该始终具有一些特征,顾客可以通过这些特征轻松地评估其质量。这项研究是旨在通过关注电子商务网站的用户界面,安全性和客户服务的特征来预测在线感知服务质量的一种努力。为了研究中的特征选择,已经使用了基于群体的智能优化算法SMO,该算法以在足够的时间内提供最佳解决方案的良好能力而闻名。与SMO一起,许多分类模型(如rpart,决策树(C5.0),支持向量机和通用线性模型)都用于预测。

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