ZeroMat:解决无输入数据的推荐系统冷启动问题

Hao Wang
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引用次数: 15

摘要

推荐系统是大多数电子商务商业产品技术设计中应用的技术。然而,几乎所有的推荐系统都面临着冷启动问题。这个问题是如此臭名昭著,以至于几乎每个行业从业者在构建推荐系统时都需要解决这个问题。大多数冷启动问题解决者需要某种类型的数据输入作为系统的启动器。另一方面,许多现实世界的应用程序将流行项目或随机项目作为推荐结果。在本文中,我们提出了一种新的ZeroMat技术,它完全不需要输入数据,并且与具有丰富数据的经典矩阵分解相比,在平均绝对误差和公平度量方面具有竞争力,并且比随机放置的性能要好得多。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ZeroMat: Solving Cold-start Problem of Recommender System with No Input Data
Recommender system is an applicable technique in most E-commerce commercial product technical designs. However, nearly all recommender system faces a challenge called the cold-start problem. The problem is so notorious that almost every industrial practitioner needs to resolve this issue when building recommender systems. Most cold-start problem solvers need some kind of data input as the starter of the system. On the other hand, many real-world applications place popular items or random items as recommendation results. In this paper, we propose a new technique called ZeroMat that requries no input data at all and predicts the user item rating data that is competitive in Mean Absolute Error and fairness metric compared with the classic matrix factorization with affluent data, and much better performance than random placement.
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