通过日期识别丰富时态查询理解:如何标记隐式时态查询?

Ricardo Campos, G. Dias, A. Jorge, C. Nunes
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引用次数: 13

摘要

一般来说,当搜索引擎以隐式时态查询的形式表达时,它们无法理解用户的时态意图。这将导致检索不太相关的信息,并阻止用户了解查询结果的可能时间维度。在本文中,我们的目标是开发一个独立于语言的模型,该模型处理查询的时间维度,并识别其最相关的时间段。为此,我们提出了一种时间相似性度量,能够将相关日期与给定查询关联起来,并过滤掉不相关的日期。我们的方法是基于对web内容的时态信息的利用,特别是在响应查询返回的k-top检索web片段集合中。我们特别关注提取年份,这是一种经常出现在这类集合中的时间信息。我们使用一组真实世界的文本时态查询来评估我们的方法,这些查询都是清晰的概念(即查询在概念上和目的上都是非模糊的)。实验表明,与基线方法相比,使用新的时间相似性度量可以改进与任何给定隐式时间查询相关的最相关日期的确定。
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Enriching temporal query understanding through date identification: how to tag implicit temporal queries?
Generically, search engines fail to understand the user's temporal intents when expressed as implicit temporal queries. This causes the retrieval of less relevant information and prevents users from being aware of the possible temporal dimension of the query results. In this paper, we aim to develop a language-independent model that tackles the temporal dimensions of a query and identifies its most relevant time periods. For this purpose, we propose a temporal similarity measure capable of associating a relevant date(s) to a given query and filtering out irrelevant ones. Our approach is based on the exploitation of temporal information from web content, particularly within the set of k-top retrieved web snippets returned in response to a query. We particularly focus on extracting years, which are a kind of temporal information that often appears in this type of collection. We evaluate our methodology using a set of real-world text temporal queries, which are clear concepts (i.e. queries which are non-ambiguous in concept and temporal in their purpose). Experiments show that when compared to baseline methods, determining the most relevant dates relating to any given implicit temporal query can be improved with a new temporal similarity measure.
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