Query Expansion For Handling Exploratory And Ambiguous Keyword Queries

abstract: Query Expansion is a functionality of search engines that suggest a set of related queries for a user issued keyword query. In case of exploratory or ambiguous keyword queries, the main goal of the user would be to identify and select a specific category of query results among different ca...

Full description

Bibliographic Details
Other Authors: Natarajan, Sivaramakrishnan (Author)
Format: Dissertation
Language:English
Published: 2011
Subjects:
Online Access:http://hdl.handle.net/2286/R.I.9197
id ndltd-asu.edu-item-9197
record_format oai_dc
spelling ndltd-asu.edu-item-91972018-06-22T03:01:50Z Query Expansion For Handling Exploratory And Ambiguous Keyword Queries abstract: Query Expansion is a functionality of search engines that suggest a set of related queries for a user issued keyword query. In case of exploratory or ambiguous keyword queries, the main goal of the user would be to identify and select a specific category of query results among different categorical options, in order to narrow down the search and reach the desired result. Typical corpus-driven keyword query expansion approaches return popular words in the results as expanded queries. These empirical methods fail to cover all semantics of categories present in the query results. More importantly these methods do not consider the semantic relationship between the keywords featured in an expanded query. Contrary to a normal keyword search setting, these factors are non-trivial in an exploratory and ambiguous query setting where the user's precise discernment of different categories present in the query results is more important for making subsequent search decisions. In this thesis, I propose a new framework for keyword query expansion: generating a set of queries that correspond to the categorization of original query results, which is referred as Categorizing query expansion. Two approaches of algorithms are proposed, one that performs clustering as pre-processing step and then generates categorizing expanded queries based on the clusters. The other category of algorithms handle the case of generating quality expanded queries in the presence of imperfect clusters. Dissertation/Thesis Natarajan, Sivaramakrishnan (Author) Chen, Yi (Advisor) Candan, Selcuk (Committee member) Sen, Arunabha (Committee member) Arizona State University (Publisher) Computer Science clustering cluster labeling feature selection Keyword search eng 107 pages M.S. Computer Science 2011 Masters Thesis http://hdl.handle.net/2286/R.I.9197 http://rightsstatements.org/vocab/InC/1.0/ All Rights Reserved 2011
collection NDLTD
language English
format Dissertation
sources NDLTD
topic Computer Science
clustering
cluster labeling
feature selection
Keyword search
spellingShingle Computer Science
clustering
cluster labeling
feature selection
Keyword search
Query Expansion For Handling Exploratory And Ambiguous Keyword Queries
description abstract: Query Expansion is a functionality of search engines that suggest a set of related queries for a user issued keyword query. In case of exploratory or ambiguous keyword queries, the main goal of the user would be to identify and select a specific category of query results among different categorical options, in order to narrow down the search and reach the desired result. Typical corpus-driven keyword query expansion approaches return popular words in the results as expanded queries. These empirical methods fail to cover all semantics of categories present in the query results. More importantly these methods do not consider the semantic relationship between the keywords featured in an expanded query. Contrary to a normal keyword search setting, these factors are non-trivial in an exploratory and ambiguous query setting where the user's precise discernment of different categories present in the query results is more important for making subsequent search decisions. In this thesis, I propose a new framework for keyword query expansion: generating a set of queries that correspond to the categorization of original query results, which is referred as Categorizing query expansion. Two approaches of algorithms are proposed, one that performs clustering as pre-processing step and then generates categorizing expanded queries based on the clusters. The other category of algorithms handle the case of generating quality expanded queries in the presence of imperfect clusters. === Dissertation/Thesis === M.S. Computer Science 2011
author2 Natarajan, Sivaramakrishnan (Author)
author_facet Natarajan, Sivaramakrishnan (Author)
title Query Expansion For Handling Exploratory And Ambiguous Keyword Queries
title_short Query Expansion For Handling Exploratory And Ambiguous Keyword Queries
title_full Query Expansion For Handling Exploratory And Ambiguous Keyword Queries
title_fullStr Query Expansion For Handling Exploratory And Ambiguous Keyword Queries
title_full_unstemmed Query Expansion For Handling Exploratory And Ambiguous Keyword Queries
title_sort query expansion for handling exploratory and ambiguous keyword queries
publishDate 2011
url http://hdl.handle.net/2286/R.I.9197
_version_ 1718699637236301824