Integrating Collaborative Filtering Technique Using Rating Approach to Ascertain Similarity Between the Users

Pub Date : 2022-12-22 DOI:10.12694/scpe.v23i4.2015
C. Pavithra, M. Saradha
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引用次数: 0

Abstract

The recommender system handles the plethora of data by filtering the most crucial information based on the dataset provided by a user and other criterion that are taken into account.(i.e., user's choice and interest). It determines whether a user and an item are compatible and then assumes that they are similar in order to make recommendations. Recommendation system uses Singular value decomposition method as collaborative filtering technique. The objective of this research paper is to propose the recommendation system that has an ability to recommend products to users based on ratings. We collect essential information like ratings given by the users from e-commerce that are required for recommendation, Initially the dataset that are gathered are sparse dataset, cosine similarity is used to find the similarity between the users. Subsequently, we collect non-sparse data and use Euclidian distance and Manhattan distance method to measure the distance between users and the graph is plotted, this ensures the similar liking and preferences between them. This method of making recommendations are more reliable and attainable.
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利用评级法集成协同过滤技术来确定用户之间的相似度
推荐系统根据用户提供的数据集和考虑到的其他标准过滤最重要的信息来处理过多的数据。(用户的选择和兴趣)。它确定用户和项目是否兼容,然后假设它们相似,以便进行推荐。推荐系统采用奇异值分解方法作为协同过滤技术。本研究论文的目的是提出一种能够根据评分向用户推荐产品的推荐系统。我们收集电子商务用户给出的评分等必要信息,这些信息是推荐所必需的,最初收集的数据集是稀疏数据集,使用余弦相似度来寻找用户之间的相似度。随后,我们收集非稀疏数据,使用欧几里得距离和曼哈顿距离方法测量用户之间的距离并绘制图形,保证了用户之间相似的喜好和偏好。这种提出建议的方法更加可靠和可行。
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