Deep embedded clustering with matrix factorization based user rating prediction for collaborative recommendation

IF 0.6 Q4 COMPUTER SCIENCE, THEORY & METHODS
Jagannath E. Nalavade, Chandra Sekhar Kolli, Sanjay Nakharu Prasad Kumar
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引用次数: 0

Abstract

Conventional recommendation techniques utilize various methods to compute the similarity among products and customers in order to identify the customer preferences. However, such conventional similarity computation techniques may produce incomplete information influenced by similarity measures in customers’ preferences, which leads to poor accuracy on recommendation. Hence, this paper introduced the novel and effective recommendation technique, namely Deep Embedded Clustering with matrix factorization (DEC with matrix factorization) for the collaborative recommendation. This approach creates the agglomerative matrix for the recommendation using the review data. The customer series matrix, customer series binary matrix, product series matrix, and product series binary matrix make up the agglomerative matrix. The product grouping is carried out to group the similar products using DEC for retrieving the optimal product. Moreover, the bi-level matching generates the best group customer sequence in which the relevant customers are retrieved using tversky index and angular distance. Also, the final product suggestion is made using matrix factorization, with the goal of recommending to clients the product with the highest rating. Also, according to the experimental results, the developed DEC with the matrix factorization approach produced better results with respect to f-measure values of 0.902, precision values of 0.896, and recall values of 0.908, respectively.
基于矩阵分解的深度嵌入聚类协同推荐用户评分预测
传统的推荐技术利用各种方法来计算产品和顾客之间的相似度,以确定顾客的偏好。然而,这种传统的相似度计算技术可能会受到客户偏好中相似度度量的影响而产生不完整的信息,从而导致推荐的准确性较差。为此,本文提出了一种新颖有效的协同推荐技术——基于矩阵分解的深度嵌入聚类(DEC with matrix factorization)。这种方法使用审查数据为推荐创建聚合矩阵。顾客级数矩阵、顾客级数二进制矩阵、产品级数矩阵、产品级数二进制矩阵构成凝聚矩阵。利用DEC对同类产品进行分组,检索最优产品。利用tversky指数和角距离对相关客户进行检索,生成最佳群客户序列。最后,使用矩阵分解法给出产品建议,目的是向客户推荐评分最高的产品。实验结果表明,采用矩阵分解方法开发的DEC的f-measure值为0.902,精密度值为0.896,召回率为0.908。
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来源期刊
Multiagent and Grid Systems
Multiagent and Grid Systems COMPUTER SCIENCE, THEORY & METHODS-
CiteScore
1.50
自引率
0.00%
发文量
13
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