Concepedia

Publication | Closed Access

Semi-supervised learning of semantic classes for query understanding

23

Citations

25

References

2009

Year

Abstract

Understanding intents from search queries can improve a user's search experience and boost a site's advertising profits. Query tagging via statistical sequential labeling models has been shown to perform well, but annotating the training set for supervised learning requires substantial human effort. Domain-specific knowledge, such as semantic class lexicons, reduces the amount of needed manual annotations, but much human effort is still required to maintain these as search topics evolve over time.

References

YearCitations

Page 1