基于遗传算法的信息过滤研究

Hui Ning, Zhichao Lv, Yue Wu, Lijuan Cui, Chun-hua Wang
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引用次数: 1

摘要

信息过滤技术可以帮助人们挑选出感兴趣的信息,屏蔽掉不必要的信息。面对实时在线网络信息过滤的新挑战,自适应信息过滤技术显得尤为重要。在自适应信息过滤的用户模板自学习方面,针对推送给用户的初始信息相关性高但稀疏的问题,本文采用了基于遗传算法的自适应轮廓自学习过程。通过对系统的伪相关反馈信息进行遗传优化,选择最优的特征信息作为正例的质心进入Rocchio模块,从而实现自适应学习,更新用户画像。实验结果表明,该方法有效地屏蔽了伪相关反馈的信息稀疏性和特征模糊的误导性,提高了自适应信息过滤系统的过滤质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on information filtration based on genetic algorithm
The technology of information filtering may help the people to pick out the interested information and shield the unnecessary information. Facing the new challenge of the real-time online network information filtration, the technology of the adaptive information filtering appears to be very important in this case. In aspects of the self-learning of user template for adaptive information filtering, with regard to the problem that the initial information pushing to the user having a high correlation but being sparse, this article uses the course of the adaptive profile self-learning based on genetic algorithm for these reasons. Through carrying on the genetic optimization to the information of pseudo-relevance feedback of the system and choosing the most superior feature information into the Rocchio module as the centroid of positive examples, thus realize the adaptive study and renewed the user profile. According to the experimental result, this method has shielded the information sparsity of the pseudo-relevance feedback and the misleading of the feature ambiguity effectively to improve the filtering quality of the adaptive information filtering system.
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