人们在地理参考文本中搜索哪些方面?

Gwan Jang, Keun-Chan Park, Kyung-min Kim, Yoonjae Jeong, Sung-Hyon Myaeng
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引用次数: 1

摘要

在向移动用户提供服务时,关键是要知道他们将查找与可从查询或上下文中提取的地理引用实体相关的哪些类型的信息。虽然了解访问Web的高级用户意图(如信息、导航和事务)是有用的,但对用户兴趣进行更精细的分类将进一步帮助根据用户意图调整移动搜索结果。我们的研究重点是了解用户查询中提到的地理引用实体的哪些方面,试图为地理引用Web搜索中的用户意图创建一个模型。通过收集和分析向可操作问答系统提出的地理参考问题,我们描绘了人们在与地理信息相关的信息中寻求的非主题信息的主要方面。确定的方面进一步概念化,以开发具有三个维度的用户兴趣模型,并用两组数据验证该模型。该模型可以作为在移动搜索环境中识别用户意图的基础,也可以作为对要检索的地理相关文本进行分类的基础。
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What aspects do people search in geo-referenced text?
In providing a service to mobile users, it would be critical to know what types of information they would look for in association with geo-referenced entities that may be extractable from queries or contexts. While understanding high-level user intentions in accessing the Web, such as informational, navigational, and transactional, is useful, a finer-level classification of user interests would further help adapting mobile search results to user intensions. Our research focuses on understanding what aspects of geo-referenced entities are mentioned in user queries in an attempt to create a model for user intents in geo-referenced Web searching. By collecting and analyzing geo-referenced questions posed to operational question answering systems, we delineated major aspects of non-topical information that people would seek in association with geographic information. The identified aspects were further conceptualized to develop a user interest model with three dimensions, which was validated with two sets of data. The model can be a basis for identifying user's intent in a mobile search context as well as classifying geo-related text to be retrieved for its aspectual category.
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