Relevance is the most important factor to assure users’ satisfaction in search and the success of a search engine heavily depends on its performance on relevance. It has been observed that most of the dissatisfaction cases in relevance are due to term mismatch between queries and documents (e.g., query “ny times” does not match well with a document only containing “New York Times”), because term matching, i.e., the bag-of-words approach, still functions as the main mechanism of modern search engines. It is not exaggerated to say, therefore, that mismatch between query and document poses the most critical challenge in search. Ideally, one would like to see query and document match with each other, if they are topically relevant. Recently, researchers have expended significant effort to address the problem. The major approach is to conduct semantic matching, i.e., to perform more query and document understanding to represent the meanings of them, and perform better matching between the enriched query and document representations. With the availability of large amounts of log data and advanced machine learning techniques, this becomes more feasible and significant progress has been made recently. This survey gives a systematic and detailed introduction to newly developed machine learning technologies for query document matching (semantic matching) in search, particularly web search. It focuses on the fundamental problems, as well as the state-of-the-art solutions of query document matching on form aspect, phrase aspect, word sense aspect, topic aspect, and structure aspect. The ideas and solutions explained may motivate industrial practitioners to turn the research results into products. The methods introduced and the discussions made may also stimulate academic researchers to find new research directions and approaches. Matching between query and document is not limited to search and similar problems can be found in question answering, online advertising, cross-language information retrieval, machine translation, recommender systems, link prediction, image annotation, drug design, and other applications, as the general task of matching between objects from two different spaces. The technologies introduced can be generalized into more general machine learning techniques, which is referred to as learning to match in this survey.
Article navigation
12 June 2014
Research Article|
June 12 2014
Semantic Matching in Search Available to Purchase
Online ISSN: 1554-0677
Print ISSN: 1554-0669
© 2014 H. Li and J. Xu
2014
H. Li and J. Xu
Licensed re-use rights only
Foundations and Trends in Information Retrieval (2014) 7 (5): 343–469.
Citation
Li H, Xu J (2014), "Semantic Matching in Search". Foundations and Trends in Information Retrieval, Vol. 7 No. 5 pp. 343–469, doi: https://doi.org/10.1561/1500000035
Download citation file:
Suggested Reading
An analysis of three different measures of learning styles: can learning styles be identified in adult learners?
Journal of Workplace Learning (October,2025)
Evaluation of semantic retrieval systems on the semantic web
Library Hi Tech (November,2013)
Semantic Disclosure Control: semantics meets data privacy
Online Information Review (June,2018)
Semantic Category theory and Semantic Intertwine: the anathema of mathematics
Kybernetes (August,2014)
Spinning the Semantic Web
On the Horizon (June,2004)
Related Chapters
Semantics Equivalence of Cultural Terms of Meurukon Texts Translated from Acehnese into Indonesian
Proceedings of MICoMS 2017
Chapter 8 FOAF Within UK Academic Web Space: A Webometric Analysis of the Semantic Web
Social Information Research
Organizing Bibliographical Data with RDA: How Far Have We Stridden Toward the Semantic Web?
New Directions in Information Organization
Recommended for you
These recommendations are informed by your reading behaviors and indicated interests.
