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Recommendation system based on deep learning methods: a systematic review and new directions

机译:基于深度学习方法的推荐系统:系统审查和新方向

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These days, many recommender systems (RS) are utilized for solving information overload problem in areas such as e-commerce, entertainment, and social media. Although classical methods of RS have achieved remarkable successes in providing item recommendations, they still suffer from many issues such as cold start and data sparsity. With the recent achievements of deep learning in various applications such as Natural Language Processing (NLP) and image processing, more efforts have been made by the researchers to exploit deep learning methods for improving the performance of RS. However, despite the several research works on deep learning based RS, very few secondary studies were conducted in the field. Therefore, this study aims to provide a systematic literature review (SLR) of deep learning based RSs that can guide researchers and practitioners to better understand the new trends and challenges in the field. This paper is the first SLR specifically on the deep learning based RS to summarize and analyze the existing studies based on the best quality research publications. The paper particularly adopts an SLR approach based on the standard guidelines of the SLR designed by Kitchemen-ham which uses selection method and provides detail analysis of the research publications. Several publications were gathered and after inclusion/exclusion criteria and the quality assessment, the selected papers were finally used for the review. The results of the review indicated that autoencoder (AE) models are the most widely exploited deep learning architectures for RS followed by the Convolutional Neural Networks (CNNs) and the Recurrent Neural Networks (RNNs) models. Also, the results showed that Movie Lenses is the most popularly used datasets for the deep learning-based RS evaluation followed by the Amazon review datasets. Based on the results, the movie and e-commerce have been indicated as the most common domains for RS and that precision and Root Mean Squared Error are the most commonly used metrics for evaluating the performance of the deep leaning based RSs.
机译:如今,许多推荐系统(RS)用于解决电子商务,娱乐和社交媒体等领域的信息过载问题。虽然RS的古典方法在提供项目建议方面取得了显着取得成功,但它们仍然遭受许多问题,如冷启动和数据稀疏性。随着最近在自然语言处理(NLP)和图像处理等各种应用中的深度学习的成就,研究人员已经提出了更多的努力来利用深度学习方法来提高卢比的性能。然而,尽管基于深度学习的卢比,但是在该领域进行了很少的二级研究。因此,本研究旨在提供基于深度学习的RSS的系统文献综述(SLR),可以指导研究人员和从业者更好地了解该领域的新趋势和挑战。本文是第一个专门针对基于深度学习的SLR,总结和分析了基于最优质的研究出版物的现有研究。本文特别采用SLR方法,基于Kitchemen-HAM设计的SLR的标准指南,该方法使用选择方法并提供研究出版物的详细分析。收集了几种出版物,并在包含/排除标准和质量评估后,最终用于审查所选论文。审查结果表明,AutoEncoder(AE)模型是RS的最广泛利用的深度学习架构,接着是卷积神经网络(CNN)和经常性神经网络(RNNS)模型。此外,结果表明,电影镜是最普遍使用的基于深度学习的RS评估的数据集,然后是亚马逊审查数据集。基于结果,电影和电子商务已被指示为卢比最常见的域,精度和根均方误差是评估基于深度倾斜的RSS的性能的最常用的指标。

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