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Cross-Domain Recommendation System Based on Tensor Decomposition for Cybersecurity Data Analytics

机译:基于Cyber​​ity Data Analytics的张量分解的跨域推荐系统

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In the context of personalization e-commerce cyberspace based on massive data, the traditional single-domain recommendation algorithm is difficult to adapt to cross-domain information recommendation service. Collaborative filtering is a simple and common recommendation algorithm, but when the target domain is very sparse, the performance of collaborative filtering algorithm will seriously degrade. Cross domain recommendation is an effective way to solve this problem because it is made by means of the auxiliary data domain associated with the target data domain. Most of the existing cross-domain recommendation models are based on two-dimensional rating matrix, and much other dimension information is lost, which leads to a decrease in recommended accuracy. In this paper, we propose a cross-domain recommendation method based on tensor decomposition, which can reduce the sparseness of data and improve the diversity and accuracy. It extracts the scoring patterns in different fields to fill the vacancy value in the target domain by transfer learning method. Many experiments on three public real data sets show that the proposed model's recommendation accuracy is superior to some of the most advanced recommendation models. It can be applied to large-scale cross-domain information recommendation service and cybersecurity data analytics.
机译:在基于大规模数据的个性化电子商务网络空间的背景下,传统的单域推荐算法难以适应跨域信息推荐服务。协作过滤是一种简单且共同的推荐算法,但是当目标域非常稀疏时,协同过滤算法的性能会严重降低。跨域推荐是一种解决这个问题的有效方法,因为它是通过与目标数据域相关联的辅助数据域来进行的。大多数现有的跨域推荐模型基于二维评级矩阵,并且丢失了大量其他维度信息,这导致推荐的准确性降低。在本文中,我们提出了一种基于张量分解的跨域推荐方法,可以减少数据的稀疏性并提高多样性和准确性。它通过传输学习方法提取不同领域的评分模式以填充目标域中的空位值。许多关于三个公共真实数据集的实验表明,所提出的模型的推荐准确性优于一些最先进的推荐模型。它可以应用于大规模跨域信息推荐服务和网络安全数据分析。

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