Collaborative Filtering Recommendation Algorithm Based on Cloud Model Clustering of Multi-indicators Item Evaluation

Li Sa
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引用次数: 7

Abstract

Collaborative filtering recommendation algorithm is a personalized recommendation algorithm that is used widely in e-commerce recommendation system. In this paper, a collaborative filtering recomendation algorithm based on cloud model clustering of multi-indicators item evaluation is proposed. In the algorithm, the item evaluation is the object, time weighted function is introduced to item evaluation, soft culsters item based on cloud model and gets the recommended items. The algorithm solves problems of data updating and history validity of evaluation in the collaborative filtering algorithm. Soft cluster item based on cloud model is achieved to avoid the defects bringed by hard division.
基于云模型聚类的多指标项目评价协同过滤推荐算法
协同过滤推荐算法是电子商务推荐系统中广泛应用的一种个性化推荐算法。本文提出了一种基于多指标项目评价云模型聚类的协同过滤推荐算法。该算法以商品评价为对象,在商品评价中引入时间加权函数,基于云模型对商品进行软聚,得到推荐商品。该算法解决了协同过滤算法中数据更新和评价历史有效性问题。实现了基于云模型的软聚类项,避免了硬划分带来的缺陷。
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