114,692 research outputs found

    Tour recommendation for groups

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    Consider a group of people who are visiting a major touristic city, such as NY, Paris, or Rome. It is reasonable to assume that each member of the group has his or her own interests or preferences about places to visit, which in general may differ from those of other members. Still, people almost always want to hang out together and so the following question naturally arises: What is the best tour that the group could perform together in the city? This problem underpins several challenges, ranging from understanding people’s expected attitudes towards potential points of interest, to modeling and providing good and viable solutions. Formulating this problem is challenging because of multiple competing objectives. For example, making the entire group as happy as possible in general conflicts with the objective that no member becomes disappointed. In this paper, we address the algorithmic implications of the above problem, by providing various formulations that take into account the overall group as well as the individual satisfaction and the length of the tour. We then study the computational complexity of these formulations, we provide effective and efficient practical algorithms, and, finally, we evaluate them on datasets constructed from real city data

    Handbook for providers: a guide to the gateway review and the assessment process (Early Years Professional Status)

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    Optimisation using Natural Language Processing: Personalized Tour Recommendation for Museums

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    This paper proposes a new method to provide personalized tour recommendation for museum visits. It combines an optimization of preference criteria of visitors with an automatic extraction of artwork importance from museum information based on Natural Language Processing using textual energy. This project includes researchers from computer and social sciences. Some results are obtained with numerical experiments. They show that our model clearly improves the satisfaction of the visitor who follows the proposed tour. This work foreshadows some interesting outcomes and applications about on-demand personalized visit of museums in a very near future.Comment: 8 pages, 4 figures; Proceedings of the 2014 Federated Conference on Computer Science and Information Systems pp. 439-44

    CAFES 2012 new student survey report

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    [27] p.During Academic Day, incoming freshmen and transfer students in the College of Agriculture, Food and Environmental Sciences (CAFES) were asked to complete a one-page questionnaire designed to find out: how they learned about UW-River Falls as an option for their tertiary education; what factors most influenced their decision to come here; what sorts of contact they had with the University prior to matriculating and how committed they feel to UW-River Falls and their current majo

    Advanced recommendations in a mobile tourist information system

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    An advanced tourist information provider system delivers information regarding sights and events on their users' travel route. In order to give sophisticated personalized information about tourist attractions to their users, the system is required to consider base data which are user preferences defined in their user profiles, user context, sights context, user travel history as well as their feedback given to the sighs they have visited. In addition to sights information, recommendation on sights to the user could also be provided. This project concentrates on combinations of knowledge on recommendation systems and base information given by the users to build a recommendation component in the Tourist Information Provider or TIP system. To accomplish our goal, we not only examine several tourist information systems but also conduct the investigation on recommendation systems. We propose a number of approaches for advanced recommendation models in a tourist information system and select a subset of these for implementation to prove the concept

    Special Libraries, May-June 1947

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    Volume 38, Issue 5https://scholarworks.sjsu.edu/sla_sl_1947/1004/thumbnail.jp

    Travel recommendations in a mobile tourist information system

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    An advanced mobile tourist information system delivers information about sights and events on a tourists travel route. The system should be personalized in its interaction with the tourist. Data that can be used for personalization are: the tourists interest profile, an analysis of their travel history, and the tourists feedback about sights. Existing mobile information systems for tourists do not tailor their information delivery to the tourists interests. In this paper, we propose the use of personalised recommendations that consider all of the personal information a tourist provides. We adopt and modify techniques from recommended systems to the new application area of mobile tourist information. We propose a number of methods for personalised recommendations; and select a subset of these for implementation. This paper then presents the implemented recommended component of our TIP system for mobile tourist informatio

    Woodbury, Town of and Woodbury Police Benevolent Association (Dispatchers)

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    In the Matter of TOWN OF WOODBURY, Orange County and WOODBURY POLICE BENEVOLENT ASSOCIATION (Dispatchers). FINDINGS OF FACT and RECOMMENDATIONS FOR RESOLUTION. Peter A. Korn, Fact Finder

    Special Libraries, May-June 1947

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    Volume 38, Issue 5https://scholarworks.sjsu.edu/sla_sl_1947/1004/thumbnail.jp
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