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A service recommendation algorithm with the transfer learning based matrix factorization to improve cloud security

机译:基于传输学习的矩阵分解的服务推荐算法改善云安全性

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Recommendation system (RS) is designed to provide personalized services based on the users' historical data. It has been applied in various fields and is expected to recommend the suitable services for the different kinds of users. Considering the importance of individual privacy, current users gradually tend not to expose personal information. This means RS may face the highly sparse datasets in the fields of cloud security. In general, the accuracy of recommendation will be improved with the growth of individual data, but the cold start problem is exactly in this contradictory phenomenon: this question evolves to produce sufficiently accurate recommendation result under the data scarcity problem. RS has to recommend services for the rarely historical data users and the latent users might drain along with the production of counter effects. To alleviate data scarcity problem in cloud security environment, this work is to introduce similar domain knowledge based on the transfer learning. Besides, the content and location based methods have been proved that these ideas work under this situation. So, this work also employs latent dirichlet allocation (LDA) to analysis the service descriptions and explore the relationship between the content and location information. In this framework, the suitable combination of LDA and word2vec models will balance the accuracy and speed which benefit service recommendation particularly. The related experiments demonstrate the effectiveness on the real word dataset. It can be found that the transfer learning based word2vec model shows the potentiality to explore the relationship between topic words, and improve the LDA algorithm from the content relationship. This proves that in both cold start environment and warm start environment, the proposed algorithm is more robust than other model-based state-of-art methods. (C) 2019 Elsevier Inc. All rights reserved.
机译:推荐系统(RS)旨在根据用户的历史数据提供个性化服务。它已应用于各种领域,预计将为不同类型的用户推荐合适的服务。考虑到个人隐私的重要性,当前用户逐渐往往不会揭露个人信息。这意味着RS可能面临云安全领域的高稀疏数据集。通常,随着个体数据的增长,建议的准确性将得到改善,但冷启动问题正是在这种矛盾的现象中:在数据稀缺问题下产生足够准确的推荐结果,这一问题就会发展出来。 RS必须为很少的历史数据用户推荐服务,并且潜在用户可能会随着反效应的生产而排水。为了减轻云安全环境中的数据稀缺问题,这项工作是根据转移学习引入类似的域知识。此外,已经证明了基于内容和基于位置的方法,这些想法在这种情况下工作。因此,这项工作还采用潜在的Dirichlet分配(LDA)来分析服务描述并探索内容和位置信息之间的关系。在本框架中,LDA和Word2VEC型号的合适组合将平衡尤其有利于服务推荐的准确性和速度。相关实验展示了真实单词数据集的有效性。可以发现,基于转移学习的Word2Vec模型显示探索主题词之间关系的潜力,并从内容关系中提高LDA算法。这证明,在冷启动环境和温暖的开始环境中,所提出的算法比其他基于模型的最先进方法更强大。 (c)2019 Elsevier Inc.保留所有权利。

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