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Personalized Recommendation Based on Unbalanced Symmetrical Mass Diffusion

机译:基于非对称对称质量扩散的个性化推荐

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Information filtering model for personalized recommendation has dramatically promote the development of recommendation technology. In various kinds of information filtering models, mass diffusion model has rise fruitful researches. Although traditional work assumes in heterogeneous bipartite network consideration of initial resource from the collected object can much enhance the recommendation accuracy, its intrinsic unsymmetrical assumption that similarity is only determined by power of mass resource diffusion from the collected to the uncollected proves defective, adversely limiting further improvement of recommendation accuracy. After investigation, we believe symmetrical diffusions involve not only the direction from the collected object to the uncollected but also the reverse. Moreover, we find the bidirectional diffusions are unbalanced, and comprehensively propose a unbalanced symmetrical diffusion model (USD) to conquer the above drawbacks. Extensive numerical experiments, performed on two benchmark data sets Movielens and Netflix, shows more outstanding improvement than mainstream diffusion based methods, with respect to accuracy, diversity and personalization.
机译:个性化推荐信息过滤模型大大促进了推荐技术的发展。在各种信息滤波模型中,大众扩散模型具有富有成效的研究。虽然传统工作假设来自收集对象的初始资源的异质二分网络考虑,但是可以提高推荐准确性,其内在的非对称假设认为相似性仅被大规模资源扩散的电力从收集到未收集的证明证明缺陷,不利地限制提高建议准确性。在调查之后,我们认为对称扩散不仅涉及从收集对象到未收集的方向而且反向的方向。此外,我们发现双向扩散是不平衡的,并且全面提出了不平衡的对称扩散模型(USD)来征服上述缺点。在两个基准数据集Movielens和Netflix上执行的广泛数值实验显示比基于主流扩散的方法更加出色,关于准确性,多样性和个性化。

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