Destination image of China's National parks from a stakeholder perspective. [PDF]
Jingpei Q, ZiXuan X, Conglin Z.
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Generative Models for Crystalline Materials
Generative machine learning models are increasingly used in crystalline materials design. This review outlines major generative approaches and assesses their strengths and limitations. It also examines how generative models can be adapted to practical applications, discusses key experimental considerations for evaluating generated structures, and ...
Houssam Metni +15 more
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Enabling Fieldwork for All (EFFA) Framework: Supporting physical, social, financial, and psychological safety in the field. [PDF]
Walsh LL.
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The Impact of Moderate Altitude on Manifestations of Coronary Artery Disease. [PDF]
Van Ochten N +10 more
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Different aspirations: medicine, activism and uterine vacuum aspiration technology in Spain (1960s-1980s). [PDF]
Mundi-López M, Ignaciuk A.
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The use of artificial neural network algorithms to enhance tourism economic efficiency under information and communication technology. [PDF]
Tian Y, Tang X.
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Barriers and Facilitators for Interprofessional Education in Work-Focused Healthcare: An Integrative Review. [PDF]
Zwaan E +4 more
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A novel group tour trip recommender model for personalized travel systems. [PDF]
Alatiyyah M.
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Itinerary Planning via Deep Reinforcement Learning
Proceedings of the 2020 International Conference on Multimedia Retrieval, 2020Itinerary planning that provides tailor-made tours for each traveler is a fundamental yet inefficient task in route recommendation. In this paper, we propose an automatic route recommendation approach with deep reinforcement learning to solve the itinerary planning problem.
Shengxin Chen +3 more
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