结合相关反馈技术的强化学习

Peng-Yeng Yin, B. Bhanu, Kuang-Cheng Chang, Anlei Dong
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引用次数: 5

摘要

关联反馈是一种利用用户反馈历史对检索结果进行优化的交互过程。大多数研究人员都在努力开发新的射频技术,而忽略了现有技术的优点。我们提出了一个图像相关强化学习(IRRL)模型来整合现有的射频技术。提出了多种集成方案,并利用长期共享记忆来利用多用户的检索体验。同时,提出了一种概念消化方法来降低存储需求的复杂性。实验结果表明,多种射频方法的集成比单独使用一种射频技术具有更好的检索性能,并且多个查询会话之间的相关知识共享也为改进提供了重要贡献。此外,概念消化技术显著降低了存储需求。这显示了所建议的模型对不断增长的数据库的可伸缩性。
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Reinforcement learning for combining relevance feedback techniques
Relevance feedback (RF) is an interactive process which refines the retrievals by utilizing user's feedback history. Most researchers strive to develop new RF techniques and ignore the advantages of existing ones. We propose an image relevance reinforcement learning (IRRL) model for integrating existing RF techniques. Various integration schemes are presented and a long-term shared memory is used to exploit the retrieval experience from multiple users. Also, a concept digesting method is proposed to reduce the complexity of storage demand. The experimental results manifest that the integration of multiple RF approaches gives better retrieval performance than using one RF technique alone, and that the sharing of relevance knowledge between multiple query sessions also provides significant contributions for improvement. Further, the storage demand is significantly reduced by the concept digesting technique. This shows the scalability of the proposed model against a growing-size database.
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