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An Improved Collaborative Filtering Recommendation Algorithm and Recommendation Strategy

机译:一种改进的协作过滤推荐算法和推荐策略

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摘要

The e-commerce recommendation system mainly includes content recommendation technology, collaborative filtering recommendation technology, and hybrid recommendation technology. The collaborative filtering recommendation technology is a successful application of personalized recommendation technology. However, due to the sparse data and cold start problems of the collaborative recommendation technology and the continuous expansion of data scale in e-commerce, the e-commerce recommendation system also faces many challenges. This paper has conducted useful exploration and research on the collaborative recommendation technology. Firstly, this paper proposed an improved collaborative filtering algorithm. Secondly, the community detection algorithm is investigated, and two overlapping community detection algorithms based on the central node and k-based faction are proposed, which effectively mine the community in the network. Finally, we select a part of user communities from the user network projected by the user-item network as the candidate neighboring user set for the target user, thereby reducing calculation time and increasing recommendation speed and accuracy of the recommendation system. This paper has a perfect combination of social network technology and collaborative filtering technology, which can greatly increase recommendation system performance. This paper used the MovieLens dataset to test two performance indexes which include MAE and RMSE. The experimental results show that the improved collaborative filtering algorithm is superior to other two collaborative recommendation algorithms for MAE and RMSE performance.
机译:电子商务推荐系统主要包括内容推荐技术,协作过滤推荐技术和混合推荐技术。协作过滤推荐技术是一个成功的个性化推荐技术应用。然而,由于具有协作推荐技术的稀疏数据和冷启动问题以及电子商务中数据规模的不断扩展,电子商务推荐系统也面临着许多挑战。本文对协作推荐技术进行了有用的探索和研究。首先,本文提出了一种改进的协作滤波算法。其次,研究了社区检测算法,提出了两个基于中央节点和基于K派的两个重叠的社区检测算法,从而有效地挖掘了网络中的社区。最后,我们从用户项目网络投影的用户网络中选择一部分用户社区作为目标用户的候选相邻用户设置,从而降低了计算时间和提高推荐系统的推荐速度和准确性。本文具有社会网络技术和协作滤波技术的完美结合,可以大大提高推荐系统性能。本文使用了Movielens数据集来测试两个性能索引,包括MAE和RMSE。实验结果表明,改进的协作滤波算法优于MAE和RMSE性能的其他两个协作推荐算法。

著录项

  • 来源
    《Mobile Information Systems》 |2019年第2期|3560968.1-3560968.11|共11页
  • 作者

    Li Xiaofeng; Li Dong;

  • 作者单位

    Heilongjiang Int Univ Dept Informat Engn Harbin 150025 Heilongjiang Peoples R China;

    Harbin Inst Technol Sch Comp Sci & Technol Harbin 150001 Heilongjiang Peoples R China;

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  • 正文语种 eng
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