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Data-Sparsity Tolerant Web Service Recommendation Approach Based on Improved Collaborative Filtering

机译:基于改进协同过滤的数据稀疏性Web服务推荐方法

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With the ever-increasing number of web services registered in service communities, many users are apt to find their interested web services through various recommendation techniques, e.g., Collaborative Filtering (i.e., CF)-based recommendation. Generally, CF-based recommendation approaches can work well, when a target user has similar friends or the target services (i.e., services preferred by the target user) have similar services. However, when the available user-service rating data is very sparse, it is possible that a target user has no similar friends and the target services have no similar services; in this situation, traditional CF-based recommendation approaches fail to generate a satisfying recommendation result. In view of this challenge, we combine Social Balance Theory (abbreviated as SBT; e.g., “enemy's enemy is a friend” rule) and CF to put forward a novel data-sparsity tolerant recommendation approach Ser _Rec _(SBT +CF ). During the recommendation process, a pruning strategy is adopted to decrease the searching space and improve the recommendation efficiency. Finally, through a set of experiments deployed on a real web service quality dataset WS-DREAM , we validate the feasibility of our proposal in terms of recommendation accuracy, recall and efficiency. The experiment results show that our proposed Ser _Rec _(SBT +CF ) approach outperforms other up-to-date approaches.
机译:随着在服务社区中注册的Web服务的数量不断增加,许多用户倾向于通过各种推荐技术(例如,基于协作过滤(即CF)的推荐)找到他们感兴趣的Web服务。通常,当目标用户具有相似的朋友或目标服务(即目标用户偏爱的服务)具有相似的服务时,基于CF的推荐方法可以很好地工作。但是,当可用的用户服务评级数据非常稀疏时,目标用户可能没有相似的朋友,而目标服务也没有相似的服务;在这种情况下,传统的基于CF的推荐方法无法生成令人满意的推荐结果。针对这一挑战,我们结合了社会平衡理论(缩写为SBT;例如,“敌人的敌人是朋友”的规则)和CF一起提出了一种新颖的数据稀疏容忍推荐方法 Ser _ Rec _( SBT + CF)。在推荐过程中,采用修剪策略以减少搜索空间并提高推荐效率。最后,通过在真实的Web服务质量数据集 WS-DREAM上部署的一组实验,我们从建议的准确性,召回率和效率方面验证了我们建议的可行性。实验结果表明,我们提出的 Ser _ Rec _( SBT + CF)方法优于其他最新方法。

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