A framework for the delivery and evaluation of personalised multilingual information retrieval
Citation:
Mohammed Rami Ghorab, 'A framework for the delivery and evaluation of personalised multilingual information retrieval', [thesis], Trinity College (Dublin, Ireland). School of Computer Science & Statistics, 2014, pp 214Download Item:
Abstract:
The amount of content provided in different languages on the Web is growing every day. The
best answer to a user's query may not necessarily be available in his/her own language, but may
reside in the diverse, multilingual corpora of the Web. Furthermore, as Internet penetration
increases around the world, the number of multilingual users who seek and interact with
information on the Web is also increasing. Personalised Information Retrieval (PIR) aims to
help users in satisfying their information needs in a more accurate and less time-consuming
manner. The user's search can be personalised by keeping track of his/her personal information
and interests, and using this information for query adaptation and result-list adaptation.
However, current search personalisation approaches do not pay adequate attention to the effect
of multilinguality (of both the users and the content). This has a significant impact on the way
PIR services should be delivered and evaluated. The study reported in this thesis argues that
users’ searches are influenced by language. For example, a multilingual user, whose native
language is not English, may prefer to use his/her native language when seeking certain types
of content on the Web (e.g. news), yet choose to use English when seeking other types of
content (e.g. technical content). Furthermore, in multilingual search, the user may choose to
click on documents originating from certain languages depending on the type of information
sought. The study reported in this thesis shows that taking multilinguality into consideration
significantly affects PIR. The study therefore introduces the notion of Personalised
Multilingual Information Retrieval (PMIR) and proposes a novel framework for the delivery
and evaluation of PMIR services. This entailed designing, implementing, and evaluating a set
of algorithms for multilingual user modelling, multilingual query adaptation, and multilingual
result-list adaptation. Furthermore, this entailed designing and implementing a framework that
enables evaluating the compartmentalisation and the combination of PMIR elements. The
evaluation shows the success of the multilingual approach to search personalisation and
highlights the benefits of the PMIR framework. The methodology undertaken for this study
involved: theoretical investigation, an industry case study, user studies, and empirical
evaluation. The PMIR framework and the personalisation approaches proposed in this study
contribute to the areas of Personalisation and Information Retrieval as they advance research
concerning how to model Web users, how to retrieve information that adequately satisfies their
information needs, and how to make this information accessible to them.
Author: Ghorab, Mohammed Rami
Advisor:
Wade, VincentQualification name:
Doctor of Philosophy (Ph.D.)Publisher:
Trinity College (Dublin, Ireland). School of Computer Science & StatisticsNote:
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