具有语义的交互式空间关键字查询

Jiabao Sun, Jiajie Xu, Kai Zheng, Chengfei Liu
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引用次数: 15

摘要

传统的空间关键字查询面临返回与查询关键字在形态上不同的同义词的所需对象的困难。为了克服这一缺陷,本文研究了具有语义的交互式空间关键字查询。它不仅通过理解查询关键字,而且通过交互改进对查询语义的理解,从而增强传统查询。在概率主题模型的基础上,提出了一种新的交互策略,通过学习用户反馈来精确地推断潜在的查询语义。在每次交互中,都会仔细选择返回的对象,以确保对用户期望的查询语义进行有效推断。在每一轮交互中,对一个小的候选对象集进行查询处理,当从用户反馈中学习到的潜在查询语义足够明确时,整个查询过程终止。在真实签入数据集上的实验结果表明,通过有限的交互次数,结果的质量得到了显著提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Interactive Spatial Keyword Querying with Semantics
Conventional spatial keyword queries confront the difficulty of returning desired objects that are synonyms but morphologically different to query keywords. To overcome this flaw, this paper investigates the interactive spatial keyword querying with semantics. It aims to enhance the conventional queries by not only making sense of the query keywords, but also refining the understanding of query semantics through interactions. On top of the probabilistic topic model, a novel interactive strategy is proposed to precisely infer the latent query semantics by learning from user feedbacks. In each interaction, the returned objects are carefully selected to ensure effective inference of user intended query semantics. Query processing is carried out on a small candidate object set at each round of interaction, and the whole querying process terminates when the latent query semantics learned from user feedback becomes explicit enough. The experimental results on real check-in dataset demonstrates that the quality of results has been significantly improved through limited number of interactions.
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