28 research outputs found

    Personalized information retrieval based on time-sensitive user profile

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    Les moteurs de recherche, largement utilisĂ©s dans diffĂ©rents domaines, sont devenus la principale source d'information pour de nombreux utilisateurs. Cependant, les SystĂšmes de Recherche d'Information (SRI) font face Ă  de nouveaux dĂ©fis liĂ©s Ă  la croissance et Ă  la diversitĂ© des donnĂ©es disponibles. Un SRI analyse la requĂȘte soumise par l'utilisateur et explore des collections de donnĂ©es de nature non structurĂ©e ou semi-structurĂ©e (par exemple : texte, image, vidĂ©o, page Web, etc.) afin de fournir des rĂ©sultats qui correspondent le mieux Ă  son intention et ses intĂ©rĂȘts. Afin d'atteindre cet objectif, au lieu de prendre en considĂ©ration l'appariement requĂȘte-document uniquement, les SRI s'intĂ©ressent aussi au contexte de l'utilisateur. En effet, le profil utilisateur a Ă©tĂ© considĂ©rĂ© dans la littĂ©rature comme l'Ă©lĂ©ment contextuel le plus important permettant d'amĂ©liorer la pertinence de la recherche. Il est intĂ©grĂ© dans le processus de recherche d'information afin d'amĂ©liorer l'expĂ©rience utilisateur en recherchant des informations spĂ©cifiques. Comme le facteur temps a gagnĂ© beaucoup d'importance ces derniĂšres annĂ©es, la dynamique temporelle est introduite pour Ă©tudier l'Ă©volution du profil utilisateur qui consiste principalement Ă  saisir les changements du comportement, des intĂ©rĂȘts et des prĂ©fĂ©rences de l'utilisateur en fonction du temps et Ă  actualiser le profil en consĂ©quence. Les travaux antĂ©rieurs ont distinguĂ© deux types de profils utilisateurs : les profils Ă  court-terme et ceux Ă  long-terme. Le premier type de profil est limitĂ© aux intĂ©rĂȘts liĂ©s aux activitĂ©s actuelles de l'utilisateur tandis que le second reprĂ©sente les intĂ©rĂȘts persistants de l'utilisateur extraits de ses activitĂ©s antĂ©rieures tout en excluant les intĂ©rĂȘts rĂ©cents. Toutefois, pour les utilisateurs qui ne sont pas trĂšs actifs dont les activitĂ©s sont peu nombreuses et sĂ©parĂ©es dans le temps, le profil Ă  court-terme peut Ă©liminer des rĂ©sultats pertinents qui sont davantage liĂ©s Ă  leurs intĂ©rĂȘts personnels. Pour les utilisateurs qui sont trĂšs actifs, l'agrĂ©gation des activitĂ©s rĂ©centes sans ignorer les intĂ©rĂȘts anciens serait trĂšs intĂ©ressante parce que ce type de profil est gĂ©nĂ©ralement en Ă©volution au fil du temps. Contrairement Ă  ces approches, nous proposons, dans cette thĂšse, un profil utilisateur gĂ©nĂ©rique et sensible au temps qui est implicitement construit comme un vecteur de termes pondĂ©rĂ©s afin de trouver un compromis en unifiant les intĂ©rĂȘts rĂ©cents et anciens. Les informations du profil utilisateur peuvent ĂȘtre extraites Ă  partir de sources multiples. Parmi les mĂ©thodes les plus prometteuses, nous proposons d'utiliser, d'une part, l'historique de recherche, et d'autre part les mĂ©dias sociaux. En effet, les donnĂ©es de l'historique de recherche peuvent ĂȘtre extraites implicitement sans aucun effort de l'utilisateur et comprennent les requĂȘtes Ă©mises, les rĂ©sultats correspondants, les requĂȘtes reformulĂ©es et les donnĂ©es de clics qui ont un potentiel de retour de pertinence/rĂ©troaction. Par ailleurs, la popularitĂ© des mĂ©dias sociaux permet d'en faire une source inestimable de donnĂ©es utilisĂ©es par les utilisateurs pour exprimer, partager et marquer comme favori le contenu qui les intĂ©resse. En premier lieu, nous avons modĂ©lisĂ© le profil utilisateur utilisateur non seulement en fonction du contenu de ses activitĂ©s mais aussi de leur fraĂźcheur en supposant que les termes utilisĂ©s rĂ©cemment dans les activitĂ©s de l'utilisateur contiennent de nouveaux intĂ©rĂȘts, prĂ©fĂ©rences et pensĂ©es et doivent ĂȘtre pris en considĂ©ration plus que les anciens intĂ©rĂȘts surtout que de nombreux travaux antĂ©rieurs ont prouvĂ© que l'intĂ©rĂȘt de l'utilisateur diminue avec le temps. Nous avons modĂ©lisĂ© le profil utilisateur sensible au temps en fonction d'un ensemble de donnĂ©es collectĂ©es de Twitter (un rĂ©seau social et un service de microblogging) et nous l'avons intĂ©grĂ© dans le processus de reclassement afin de personnaliser les rĂ©sultats standards en fonction des intĂ©rĂȘts de l'utilisateur.En second lieu, nous avons Ă©tudiĂ© la dynamique temporelle dans le cadre de la session de recherche oĂč les requĂȘtes rĂ©centes soumises par l'utilisateur contiennent des informations supplĂ©mentaires permettant de mieux expliquer l'intention de l'utilisateur et prouvant qu'il n'a pas trouvĂ© les informations recherchĂ©es Ă  partir des requĂȘtes prĂ©cĂ©dentes.Ainsi, nous avons considĂ©rĂ© les interactions rĂ©centes et rĂ©currentes au sein d'une session de recherche en donnant plus d'importance aux termes apparus dans les requĂȘtes rĂ©centes et leurs rĂ©sultats cliquĂ©s. Nos expĂ©rimentations sont basĂ©s sur la tĂąche Session TREC 2013 et la collection ClueWeb12 qui ont montrĂ© l'efficacitĂ© de notre approche par rapport Ă  celles de l'Ă©tat de l'art. Au terme de ces diffĂ©rentes contributions et expĂ©rimentations, nous prouvons que notre modĂšle gĂ©nĂ©rique de profil utilisateur sensible au temps assure une meilleure performance de personnalisation et aide Ă  analyser le comportement des utilisateurs dans les contextes de session de recherche et de mĂ©dias sociaux.Recently, search engines have become the main source of information for many users and have been widely used in different fields. However, Information Retrieval Systems (IRS) face new challenges due to the growth and diversity of available data. An IRS analyses the query submitted by the user and explores collections of data with unstructured or semi-structured nature (e.g. text, image, video, Web page etc.) in order to deliver items that best match his/her intent and interests. In order to achieve this goal, we have moved from considering the query-document matching to consider the user context. In fact, the user profile has been considered, in the literature, as the most important contextual element which can improve the accuracy of the search. It is integrated in the process of information retrieval in order to improve the user experience while searching for specific information. As time factor has gained increasing importance in recent years, the temporal dynamics are introduced to study the user profile evolution that consists mainly in capturing the changes of the user behavior, interests and preferences, and updating the profile accordingly. Prior work used to discern short-term and long-term profiles. The first profile type is limited to interests related to the user's current activities while the second one represents user's persisting interests extracted from his prior activities excluding the current ones. However, for users who are not very active, the short-term profile can eliminate relevant results which are more related to their personal interests. This is because their activities are few and separated over time. For users who are very active, the aggregation of recent activities without ignoring the old interests would be very interesting because this kind of profile is usually changing over time. Unlike those approaches, we propose, in this thesis, a generic time-sensitive user profile that is implicitly constructed as a vector of weighted terms in order to find a trade-off by unifying both current and recurrent interests. User profile information can be extracted from multiple sources. Among the most promising ones, we propose to use, on the one hand, searching history. Data from searching history can be extracted implicitly without any effort from the user and includes issued queries, their corresponding results, reformulated queries and click-through data that has relevance feedback potential. On the other hand, the popularity of Social Media makes it as an invaluable source of data used by users to express, share and mark as favorite the content that interests them. First, we modeled a user profile not only according to the content of his activities but also to their freshness under the assumption that terms used recently in the user's activities contain new interests, preferences and thoughts and should be considered more than old interests. In fact, many prior works have proved that the user interest is decreasing as time goes by. In order to evaluate the time-sensitive user profile, we used a set of data collected from Twitter, i.e a social networking and microblogging service. Then, we apply our re-ranking process to a Web search system in order to adapt the user's online interests to the original retrieved results. Second, we studied the temporal dynamics within session search where recent submitted queries contain additional information explaining better the user intent and prove that the user hasn't found the information sought from previous submitted ones. We integrated current and recurrent interactions within a unique session model giving more importance to terms appeared in recently submitted queries and clicked results. We conducted experiments using the 2013 TREC Session track and the ClueWeb12 collection that showed the effectiveness of our approach compared to state-of-the-art ones. Overall, in those different contributions and experiments, we prove that our time-sensitive user profile insures better performance of personalization and helps to analyze user behavior in both session search and social media contexts

    Extracting place semantics from geo-folksonomies

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    Massive interest in geo-referencing of personal resources is evident on the web. People are collaboratively digitising maps and building place knowledge resources that document personal use and experiences in geographic places. Understanding and discovering these place semantics can potentially lead to the development of a different type of place gazetteer that holds not only standard information of place names and geographic location, but also activities practiced by people in a place and vernacular views of place characteristics. The main contributions of this research are as follows. A novel framework is proposed for the analysis of geo-folksonomies and the automatic discovery of place-related semantics. The framework is based on a model of geographic place that extends the definition of place as defined in traditional gazetteers and geospatial ontologies to include the notion of place affordance. A method of clustering place resources to overcome the inaccuracy and redundancy inherent in the geo-folksonomy structure is developed and evaluated. Reference ontologies are created and used in a tag resolution stage to discover place-related concepts of interest. Folksonomy analysis techniques are then used to create a place ontology and its component type and activity ontologies. The resulting concept ontologies are compared with an expert ontology of place type and activities and evaluated through a user questionnaire. To demonstrate the utility of the proposed framework, an application is developed to illustrate the possible enrichment of search experience by exposing the derived semantics to users of web mapping abstract applications. Finally, the value of using the discovered place semantics is also demonstrated by proposing two semantic based similarity approaches; user similarity and place similarity. The validity of the approaches was confirmed by the results of an experiment conducted on a realistic folksonomy dataset

    ECSCW 2013 Adjunct Proceedings The 13th European Conference on Computer Supported Cooperative Work 21 - 25. September 2013, Paphos, Cyprus

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    This volume presents the adjunct proceedings of ECSCW 2013.While the proceedings published by Springer Verlag contains the core of the technical program, namely the full papers, the adjunct proceedings includes contributions on work in progress, workshops and master classes, demos and videos, the doctoral colloquium, and keynotes, thus indicating what our field may become in the future

    Design of an E-learning system using semantic information and cloud computing technologies

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    Humanity is currently suffering from many difficult problems that threaten the life and survival of the human race. It is very easy for all mankind to be affected, directly or indirectly, by these problems. Education is a key solution for most of them. In our thesis we tried to make use of current technologies to enhance and ease the learning process. We have designed an e-learning system based on semantic information and cloud computing, in addition to many other technologies that contribute to improving the educational process and raising the level of students. The design was built after much research on useful technology, its types, and examples of actual systems that were previously discussed by other researchers. In addition to the proposed design, an algorithm was implemented to identify topics found in large textual educational resources. It was tested and proved to be efficient against other methods. The algorithm has the ability of extracting the main topics from textual learning resources, linking related resources and generating interactive dynamic knowledge graphs. This algorithm accurately and efficiently accomplishes those tasks even for bigger books. We used Wikipedia Miner, TextRank, and Gensim within our algorithm. Our algorithm‘s accuracy was evaluated against Gensim, largely improving its accuracy. Augmenting the system design with the implemented algorithm will produce many useful services for improving the learning process such as: identifying main topics of big textual learning resources automatically and connecting them to other well defined concepts from Wikipedia, enriching current learning resources with semantic information from external sources, providing student with browsable dynamic interactive knowledge graphs, and making use of learning groups to encourage students to share their learning experiences and feedback with other learners.Programa de Doctorado en Ingeniería Telemática por la Universidad Carlos III de MadridPresidente: Luis Sánchez Fernández.- Secretario: Luis de la Fuente Valentín.- Vocal: Norberto Fernández Garcí
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