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Unifying Explicit and Implicit Feedback for Top-N Recommendation

机译:为TOP-N推荐统一显式和隐含的反馈

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In the era of big data, the data are diverse and complex. The issue that using multi-source data efficiently in recommender system is very essential. To solve this problem, we proposes a ranking model that integrates explicit feedback data with implicit feedback data together. We use weighting factors to measure the impact of different user behaviors on recommendation quality. We solved the data fusion problem and the Top-N items recommendation problem. We used matrix decomposition for collaborative filtering. Finally, a parallel optimization model based on distributed and parallel computing is proposed, and the implementation on Spark is provided. Through comparison with several models, our model greatly enhanced the items recommendation quality and improved the scalability and efficiency of personalized recommender systems.
机译:在大数据的时代,数据是多种多样的和复杂的。在推荐系统中有效地使用多源数据的问题非常重要。为了解决这个问题,我们提出了一种排名模型,它将明确的反馈数据与隐式反馈数据集成在一起。我们使用加权因素来衡量不同用户行为对质量推荐的影响。我们解决了数据融合问题和Top-N项目的推荐问题。我们使用矩阵分解进行协同滤波。最后,提出了一种基于分布式和并行计算的并行优化模型,并提供了火花的实现。通过与多种型号的比较,我们的模型大大提高了项目推荐质量,提高了个性化推荐系统的可扩展性和效率。

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