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Unité de recherche
COST
Numéro de projet
C11.0132
Titre du projet
Harnessing and Advancing Social Search (HASS): Understanding User Intent, Information Need and Temporal Relevance
Titre du projet anglais
Harnessing and Advancing Social Search (HASS): Understanding User Intent, Information Need and Temporal Relevance

Textes relatifs à ce projet

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Mots-clé
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Programme de recherche
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Description succincte
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Autres indications
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Partenaires et organisations internationales
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Résumé des résultats (Abstract)
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Références bases de données
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Textes saisis


CatégorieTexte
Mots-clé
(Anglais)
Information retrieval; interactive search; social search; understanding user intent; information needs
Programme de recherche
(Anglais)
COST-Action IC1002 - Multilingual and multifaceted interactive information access (MUMIA)
Description succincte
(Anglais)
In this project we propose to investigate searching and browsing in social sites and determine where the oneshot and one-size-fits-all paradigm of search is failing users and does not sufficiently assist them with their information gathering task. We will use modern statistical learning techniques to develop models that are able to utilise personalisation, temporal task-based knowledge and topical information derived from the corpus to improve search. The proposed work will significantly extend earlier work in personalisation of social media search and latent topic models carried out by the applicant. These new models will better serve users their information needs and better support them in completing more complex tasks over multiple queries or even sessions. Furthermore the models will provide better insight into the data contained in social sites including information about the topics represented and how their use and popularity is varying over time.
Autres indications
(Anglais)
Full name of research-institution/enterprise: Università della Svizzera italiana Facoltà di Scienze informatiche, USI
Partenaires et organisations internationales
(Anglais)
AT; BE; BG; HR; CY; DK; EE; FI; FR; F.Y. R. Macedonia; DE; EL; HU; IE; IL; IT; LT; NL; NO; PL; PT; RO; RS; SI; ES; SE; UK; RU
Résumé des résultats (Abstract)
(Anglais)
In this project we investigate searching and browsing in social sites (particularly micro blogs) and determine where the one-shot and one-size-fits-all paradigm of search is failing users and does not sufficiently assist them with their information gathering task. In doing so we gain a more complete understanding of the search behaviour and needs of users on micro blogs and how this differs from more traditional search environments as reported on in existing literature. Based on these insights we use modern statistical learning techniques to develop models that are able to utilise personalisation, temporal task-based knowledge and topical information derived from the corpus to improve search and to recommend items of interest to users. The proposed work significantly extends earlier work in personalisation of social media search and latent topic models carried out by the applicants.
Références bases de données
(Anglais)
Swiss Database: COST-DB of the State Secretariat for Education and Research Hallwylstrasse 4 CH-3003 Berne, Switzerland Tel. +41 31 322 74 82 Swiss Project-Number: C11.0132