选择新的培训文档来更新用户配置文件

Abdulmohsen Algarni, Yuefeng Li, Yue Xu
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引用次数: 11

摘要

相关反馈(RF)已被证明是提高检索精度的有效方法。自适应信息过滤(AIF)技术得益于过去几十年来在所有相关任务中取得的进步。如何用新的反馈快速有效地更新系统是AIF的一个难点。在现有的反馈方法中,更新过程主要集中在更新系统参数上。在本文中,我们开发了一种新的方法,自适应关联特征发现(ARFD)。基于滑动窗口的正负反馈自动更新系统知识,有效解决非单调问题。将利用系统目前获得的知识选择一些新的培训文件。然后,从选定的训练文档中提取特定的特征。不同的方法被用来合并和修改向量空间中的特征权值。该模型是为关联特征发现(RFD)而设计的,RFD是一种基于模式挖掘的方法,它利用负相关反馈来提高从正反馈中提取特征的质量。在路透社语料库卷1和TREC主题上也提出了学习算法来实现这种方法。实验表明,该方法能够有效地实现激励效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Selected new training documents to update user profile
Relevance Feedback (RF) has been proven very effective for improving retrieval accuracy. Adaptive information filtering (AIF) technology has benefited from the improvements achieved in all the tasks involved over the last decades. A difficult problem in AIF has been how to update the system with new feedback efficiently and effectively. In current feedback methods, the updating processes focus on updating system parameters. In this paper, we developed a new approach, the Adaptive Relevance Features Discovery (ARFD). It automatically updates the system's knowledge based on a sliding window over positive and negative feedback to solve a nonmonotonic problem efficiently. Some of the new training documents will be selected using the knowledge that the system currently obtained. Then, specific features will be extracted from selected training documents. Different methods have been used to merge and revise the weights of features in a vector space. The new model is designed for Relevance Features Discovery (RFD), a pattern mining based approach, which uses negative relevance feedback to improve the quality of extracted features from positive feedback. Learning algorithms are also proposed to implement this approach on Reuters Corpus Volume 1 and TREC topics. Experiments show that the proposed approach can work efficiently and achieves the encouragement performance.
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