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An improved Bayesian network structure learning algorithm and its application in an intelligent B2C portal

机译:改进的贝叶斯网络结构学习算法及其在智能B2C门户中的应用

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摘要

Web Intelligence (WI) is a new and active research field in current AI and IT. Intelligent B2C Portals are an important research topic in WI. In this paper, we first investigate and analyze the architecture of a B2C portal for personalized recommendation from the viewpoint of conceptual levels of WI. Aiming at knowledge-level data mining in a B2C portal, we present a new improved learning algorithm of Bayesian Networks, which consists of two major contributions, namely, reducing Conditional Independence (CI) test costs by few lower order CI tests and accelerating search process by means of sort order for candidate parent nodes. Experimental results on benchmark ALARM data sets show that the improved algorithm has high accuracy, and is more efficient in the time performance than other algorithms. Finally, we apply this algorithm to learning Customer Shopping Model (CSM) in an intelligent recommendation system. By a number of experiments on real world data, we find that the recommendation method based on the learned CSM outperforms some traditional ones in rates of coverage and precision.
机译:Web Intelligence(WI)是当前AI和IT领域中一个活跃的新研究领域。智能B2C门户是WI中的重要研究主题。在本文中,我们首先从WI概念层次的角度研究和分析B2C门户的个性化推荐架构。针对B2C门户中的知识级数据挖掘,我们提出了一种改进的贝叶斯网络学习算法,该算法包括两个主要贡献,即通过减少一些低阶CI测试来降低条件独立性(CI)测试成本并加快搜索过程通过对候选父节点的排序顺序。在基准ALARM数据集上的实验结果表明,改进算法具有较高的精度,并且在时间性能上比其他算法更有效。最后,我们将此算法应用于智能推荐系统中的客户购物模型(CSM)。通过对现实世界数据的大量实验,我们发现基于学习的CSM的推荐方法在覆盖率和精确度方面优于某些传统方法。

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