Query log simulation for long-term learning in image retrieval

Donn Morrison, S. Marchand-Maillet, E. Bruno
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引用次数: 1

Abstract

In this paper we formalise a query simulation framework for the evaluation of long-term learning systems for image retrieval. Long-term learning relies on historical queries and associated relevance judgements, usually stored in query logs, in order to improve search results presented to users of the retrieval system. Evaluation of long-term learning methods requires access to query logs, preferably in large quantity. However, real-world query logs are notoriously difficult to acquire due to legitimate efforts of safeguarding user privacy. Query log simulation provides a useful means of evaluating long-term learning approaches without the need for real-world data. We introduce a query log simulator that is based on a user model of long-term learning that explains the observed relevance judgements contained in query logs. We validate simulated queries against a real-world query log of an image retrieval system and demonstrate that for evaluation purposes, the simulator is accurate on a global level.
查询日志模拟用于图像检索中的长期学习
在本文中,我们形式化了一个用于评估图像检索的长期学习系统的查询模拟框架。长期学习依赖于历史查询和相关的相关性判断,通常存储在查询日志中,以改善呈现给检索系统用户的搜索结果。评估长期学习方法需要访问查询日志,最好是大量的查询日志。然而,由于保护用户隐私的合法努力,真实世界的查询日志很难获得。查询日志模拟提供了一种评估长期学习方法的有用方法,而不需要实际数据。我们介绍了一个基于长期学习的用户模型的查询日志模拟器,该模型解释了查询日志中包含的观察到的相关性判断。我们根据图像检索系统的真实查询日志验证模拟查询,并证明出于评估目的,模拟器在全局级别上是准确的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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