Personalized Query Suggestion With Diversity Awareness

Di Jiang, K. Leung, Jan Vosecky, Wilfred Ng
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引用次数: 23

Abstract

Query suggestion is an important functionality provided by the search engine to facilitate information seeking of the users. Existing query suggestion methods usually focus on recommending queries that are the most relevant to the input query. However, such relevance-oriented strategy cannot effectively handle query uncertainty, a common scenario that the input query can be interpreted as multiple different meanings. To alleviate this problem, the concepts of diversification and person-alization have been individually introduced to query suggestion systems. These two concepts are often seen as incompatible alternatives, because diversification considers multiple aspects of the input query to maximize the probability that some query aspect is relevant to the user while personalization aims to adapt the suggestions to a specific aspect that aligns with the preference of a specific user. In this paper, we refute this antagonistic view and propose a new query suggestion paradigm, Personalized Query Suggestion With Diversity Awareness (PQS-DA) to effectively combine diversification and personalization into one unified framework. In PQS-DA, the suggested queries are effectively diversified to cover different potential facets of the input query while the ranking of suggested queries are personalized to ensure that the top ones are those that align with a user's personal preference. We evaluate PQS-DA on a real-life search engine query log against several state-of-the-art methods with respect to a variety of metrics. The experimental results verify our hypothesis that diversification and personalization can be effectively integrated and they are able to enhance each other within the PQS-DA framework, which significantly outperforms several strong baselines with respect to a series of metrics.
具有多样性意识的个性化查询建议
查询建议是搜索引擎为方便用户查找信息而提供的一项重要功能。现有的查询建议方法通常侧重于推荐与输入查询最相关的查询。然而,这种面向相关性的策略不能有效地处理查询不确定性,这是输入查询可能被解释为多个不同含义的常见场景。为了缓解这一问题,在查询建议系统中分别引入了多样化和个性化的概念。这两个概念通常被视为不兼容的替代方案,因为多样化考虑输入查询的多个方面,以最大限度地提高某些查询方面与用户相关的可能性,而个性化旨在使建议适应与特定用户偏好一致的特定方面。本文反驳了这一对立观点,提出了一种新的查询建议范式——个性化查询建议与多样性意识(PQS-DA),将多样化和个性化有效地结合到一个统一的框架中。在PQS-DA中,建议查询被有效地多样化,以覆盖输入查询的不同潜在方面,而建议查询的排名是个性化的,以确保最前面的是那些与用户的个人偏好一致的查询。我们在一个真实的搜索引擎查询日志上对几种最先进的方法进行了PQS-DA评估,这些方法与各种指标有关。实验结果验证了我们的假设,即多样化和个性化可以有效地整合在一起,并且它们能够在PQS-DA框架内相互增强,在一系列指标方面显着优于几个强基线。
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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