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首页> 外文期刊>Journal of intelligent & fuzzy systems: Applications in Engineering and Technology >Recognizing intentions of E-commerce consumers based on ant colony optimization simulation
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Recognizing intentions of E-commerce consumers based on ant colony optimization simulation

机译:基于蚁群优化模拟认识到电子商务消费者的意图

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Identification of a consumer's intent has a vital impact on commodity recommendation, selection of hot drainage commodity, website layout, and link settings. Most of the present studies on user intent are considered static. Specific intent is accompanied by a specific environment. Thus, intent is static when the environment does not change. However, the uncertainty of user access and purchase in e-commerce activities indicates that user intent can assume multiple forms and has multiple developmental stages. Therefore, this study draws support from the core ideas of an ant colony algorithm. Ants represent users, and pheromones represent user intent. User intents of browsing, collection, cart shopping, and purchasing behavior are obtained from ant responses to pheromones. Pheromone is expressed as the inner product of the objective attribute of commodity and user perception ability, because user intent is the matching result of objective attributes of commodity and subjective feelings of users, and its value is the concentration of user intent pheromone. Thus, the dynamics and uncertainty of user intention development can be presented by the ant colony algorithm. In this study, data were obtained from a NetLogo simulation experiment. We used neural networks to identify and verify user intentions of browsing, collection, cart shopping, and purchasing. The experimental results showed that the accuracy of intention prediction increased from 48% to 67%, and a level of the 11-20% accuracy improvement shows good, realistic predictions.
机译:识别消费者的意图对商品推荐,选择热源推广商品,网站布局和链接设置的重要影响。对用户意图的大多数研究被认为是静态的。具体的意图伴随着特定的环境。因此,当环境不会改变时,意图是静态的。但是,用户访问和在电子商务活动中购买的不确定性表明用户意图可以假设多种形式并具有多个发展阶段。因此,这项研究从蚁群算法的核心思想中汲取支持。蚂蚁代表用户,信息素代表用户意图。浏览,收集,购物车购物和购买行为的用户意图是从蚂蚁反应到信息素的。信息素表示为商品和用户感知能力的目标属性的内在产物,因为用户意图是商品的客观属性的匹配结果和用户的主观感受,其价值是用户意图信息素的浓度。因此,可以通过蚁群算法呈现用户意图发展的动态和不确定性。在这项研究中,从NetLogo仿真实验获得了数据。我们使用神经网络来识别和验证用户意图的浏览,收集,购物车购物和购买。实验结果表明,意图预测的准确性从48%增加到67%,达到11-20%的准确性改善的水平显示出良好,现实的预测。

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