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Collaborative Filtering Service Recommendation Algorithm Based on Trusted User and Recommendation Evaluation

机译:基于可信用户和推荐评估的协同过滤服务推荐算法

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Collaborative Filtering (CF) is a widely used service recommendation technology. However, most service recommendation algorithms based on collaborative filtering do not take into account the influence of some abnormal data and malicious evaluation data in user feedback data on the recommendation accuracy. For the trusted requirements of service recommendation in cloud computing environment, this paper proposes a service recommendation model based on users services network (USN). The model calculates the user's recommendation to the service and the user's trust by establishing a recommendation relationship between user services and the trust relationship between users, and by considering the influence of factors such as malicious users on recommendation and trust, increased authenticity and availability of recommendation and trust. Based on this model, a collaborative filtering service recommendation algorithm based on trusted users and recommendation evaluation is proposed. Experimental results show that the algorithm is superior to other mainstream service recommendation algorithms in improving recommendation accuracy and regulating malicious evaluation behavior.
机译:协同过滤(CF)是一种广泛使用的服务推荐技术。但是,大多数基于协作过滤的服务推荐算法并未考虑用户反馈数据中某些异常数据和恶意评估数据对推荐准确性的影响。针对云计算环境中服务推荐的可信需求,提出了一种基于用户服务网络(USN)的服务推荐模型。该模型通过建立用户服务之间的推荐关系和用户之间的信任关系,并考虑恶意用户等因素对推荐和信任,推荐的真实性和可用性的影响,来计算用户对服务的推荐和用户的信任度和信任。基于该模型,提出了一种基于可信用户和推荐评价的协同过滤服务推荐算法。实验结果表明,该算法在提高推荐准确性和规范恶意评价行为方面优于其他主流服务推荐算法。

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