Abstract
Ambiguous information needs expressed in a limited number of keywords
often result in long-winded query sessions and many query reformulations.
In this work, we tackle ambiguous queries by providing automatically gen-
erated semantic aspects that can guide users to satisfying results regarding
their information needs. To generate semantic aspects, we use semantic an-
notations available in the documents and leverage models representing the
semantic relationships between annotations of the same type. The aspects in
turn provide us a foundation for representing text in a completely structured
manner, thereby allowing for a semantically-motivated organization of search
results. We evaluate our approach on a testbed of over 5,000 aspects on Web
scale document collections amounting to more than 450 million documents,
with temporal, geographic, and named entity annotations as example dimen-
sions. Our experimental results show that our general approach is Web-scale
ready and finds relevant aspects for highly ambiguous queries.
BibTeX
@techreport{Guptareport2007, TITLE = {Generating Semantic Aspects for Queries}, AUTHOR = {Gupta, Dhruv and Berberich, Klaus and Str{\"o}tgen, Jannik and Zeinalipour-Yazti, Demetrios}, LANGUAGE = {eng}, ISSN = {0946-011X}, NUMBER = {MPI-I-2017-5-001}, INSTITUTION = {Max-Planck-Institut f{\"u}r Informatik}, ADDRESS = {Saarbr{\"u}cken}, YEAR = {2017}, ABSTRACT = {Ambiguous information needs expressed in a limited number of keywords<br>often result in long-winded query sessions and many query reformulations.<br>In this work, we tackle ambiguous queries by providing automatically gen-<br>erated semantic aspects that can guide users to satisfying results regarding<br>their information needs. To generate semantic aspects, we use semantic an-<br>notations available in the documents and leverage models representing the<br>semantic relationships between annotations of the same type. The aspects in<br>turn provide us a foundation for representing text in a completely structured<br>manner, thereby allowing for a semantically-motivated organization of search<br>results. We evaluate our approach on a testbed of over 5,000 aspects on Web<br>scale document collections amounting to more than 450 million documents,<br>with temporal, geographic, and named entity annotations as example dimen-<br>sions. Our experimental results show that our general approach is Web-scale<br>ready and finds relevant aspects for highly ambiguous queries.}, TYPE = {Research Report}, }
Endnote
%0 Report %A Gupta, Dhruv %A Berberich, Klaus %A Strötgen, Jannik %A Zeinalipour-Yazti, Demetrios %+ Databases and Information Systems, MPI for Informatics, Max Planck Society Databases and Information Systems, MPI for Informatics, Max Planck Society Databases and Information Systems, MPI for Informatics, Max Planck Society Databases and Information Systems, MPI for Informatics, Max Planck Society %T Generating Semantic Aspects for Queries : %G eng %U http://hdl.handle.net/11858/00-001M-0000-002E-07DD-0 %Y Max-Planck-Institut für Informatik %C Saarbrücken %D 2017 %P 39 p. %X Ambiguous information needs expressed in a limited number of keywords<br>often result in long-winded query sessions and many query reformulations.<br>In this work, we tackle ambiguous queries by providing automatically gen-<br>erated semantic aspects that can guide users to satisfying results regarding<br>their information needs. To generate semantic aspects, we use semantic an-<br>notations available in the documents and leverage models representing the<br>semantic relationships between annotations of the same type. The aspects in<br>turn provide us a foundation for representing text in a completely structured<br>manner, thereby allowing for a semantically-motivated organization of search<br>results. We evaluate our approach on a testbed of over 5,000 aspects on Web<br>scale document collections amounting to more than 450 million documents,<br>with temporal, geographic, and named entity annotations as example dimen-<br>sions. Our experimental results show that our general approach is Web-scale<br>ready and finds relevant aspects for highly ambiguous queries. %B Research Report %@ false