计算机科学
查询扩展
情报检索
杠杆(统计)
查询优化
查询语言
搜索引擎
组分(热力学)
Web搜索查询
数据挖掘
热力学
机器学习
物理
作者
Claudio Carpineto,Giovanni Romano
出处
期刊:ACM Computing Surveys
[Association for Computing Machinery]
日期:2012-01-01
卷期号:44 (1): 1-50
被引量:1045
标识
DOI:10.1145/2071389.2071390
摘要
The relative ineffectiveness of information retrieval systems is largely caused by the inaccuracy with which a query formed by a few keywords models the actual user information need. One well known method to overcome this limitation is automatic query expansion (AQE), whereby the user’s original query is augmented by new features with a similar meaning. AQE has a long history in the information retrieval community but it is only in the last years that it has reached a level of scientific and experimental maturity, especially in laboratory settings such as TREC. This survey presents a unified view of a large number of recent approaches to AQE that leverage various data sources and employ very different principles and techniques. The following questions are addressed. Why is query expansion so important to improve search effectiveness? What are the main steps involved in the design and implementation of an AQE component? What approaches to AQE are available and how do they compare? Which issues must still be resolved before AQE becomes a standard component of large operational information retrieval systems (e.g., search engines)?
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