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Web Information Recommendation Evaluation Model Based on Multifactor Decision Making

机译:基于多因素决策的网络信息推荐评价模型

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摘要

There is a certain gap between the information recommendation of web platform and the real demand of users, because recommendation systems lack historical transaction data and excellent recommendation algorithm. In order to improve users' satisfaction for information recommendation on web platform, a web information recommendation evaluation model is proposed, in which users' experience as the evaluation basis of information recommendation service quality. Firstly, a web information recommendation evaluation model is constructed, which consists of three factors: all customers' feedback on the commodity, direct relevance analysis between customer and commodity, and the customer's all transaction feedback. Secondly, the particle swarm optimization algorithm is applied to solve the optimal weight of each factor in the information recommendation evaluation model, then the evaluation result of information recommendation is calculated, which can provide decision-making basis for reasonably dealing with the information recommendation. Finally, simulation results show that the web information recommendation evaluation model based on multifactor decision making is effective, and it can improve users' satisfaction for web information recommendation significantly.
机译:Web平台的信息推荐与用户的实际需求之间存在一定的差距,因为推荐系统缺少历史交易数据和优秀的推荐算法。为了提高用户对网络平台上信息推荐的满意度,提出了一种以用户体验作为信息推荐服务质量评价基础的网络信息推荐评价模型。首先,构建了一个网络信息推荐评估模型,该模型包括三个因素:所有顾客对商品的反馈,顾客与商品之间的直接相关性分析以及顾客的所有交易反馈。其次,应用粒子群算法对信息推荐评价模型中各个因素的最优权重进行求解,计算出信息推荐的评价结果​​,为合理处理信息推荐提供决策依据。最后,仿真结果表明,基于多因素决策的网络信息推荐评价模型是有效的,可以显着提高用户对网络信息推荐的满意度。

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