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Personalized Recommendation System on Massive Content Processing Using Improved MFNN

机译:使用改进的MFNN的海量内容处理个性化推荐系统

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Though the research in personalized recommendation systems has become widespread for recent years, IEEE Internet Computing points out that current system can not meet the real large-scale e-commerce demands, and has some weakness such as low precision and slow reaction. We have proposed a structure of personalized recommendation system based on case intelligence, which originates from human experience learning, and can facilitate to integrate various artificial intelligence components. Addressing on user case retrieval problem, the paper uses constructive and understandable multi-layer feedforward neural networks (MFNN), and employs covering algorithm to decrease the complexity of ANN algorithm. Testing from the two different domains, our experimental results indicate that the integrated method is feasible for the processing of vast and high dimensional data, and can improve the recommendation quality and support the users effectively. The paper finally signifies that the better performance mainly comes from the reliable constructing MFNN.
机译:尽管近年来对个性化推荐系统的研究已经广泛开展,但IEEE Internet Computing指出,当前的系统无法满足实际的大规模电子商务需求,并且存在诸如精度低,响应速度慢等缺点。我们提出了一种基于案例智能的个性化推荐系统结构,该结构源于人类的经验学习,可以促进各种人工智能组件的集成。针对用户案例检索问题,本文采用了结构性且易于理解的多层前馈神经网络(MFNN),并采用覆盖算法来降低ANN算法的复杂度。从两个不同领域进行测试,我们的实验结果表明,该集成方法对于处理海量和高维数据是可行的,并且可以提高推荐质量并有效地为用户提供支持。最终表明,更好的性能主要来自可靠构造的MFNN。

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