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Using Interest And Transition Models To Predict Visitor Locations In Museums

机译:使用兴趣和过渡模型来预测博物馆中的参观者位置

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摘要

Museums offer vast amounts of information, but a visitor's receptivity and time are typically limited, providing the visitor with the challenge of selecting the (subjectively) interesting exhibits to view within the available time. Mobile, electronic handheld guides offer the opportunity to improve a visitor's experience by recommending exhibits of interest, and adapting the delivered content. The first step in this personalisation process is the prediction of a visitor's activities and interests. In this paper we study non-intrusive, adaptive user modelling techniques that take into account the physical constraints of the exhibition layout. We present two collaborative models for predicting a visitor's next locations in a museum, and an ensemble model that combines the predictions of these models. The three models were trained and tested on a small dataset of museum visits. Our results are encouraging, with the ensemble model yielding the best performance overall.
机译:博物馆提供了大量的信息,但是参观者的接受能力和时间通常受到限制,这给参观者带来了在可用时间内选择(主观)有趣的展览品的挑战。移动式电子手持式指南通过推荐感兴趣的展览品并调整提供的内容,提供了改善访问者体验的机会。此个性化过程的第一步是预测访客的活动和兴趣。在本文中,我们研究了非侵入式,自适应的用户建模技术,该技术考虑了展览布局的物理限制。我们提供了两个协作模型来预测游客在博物馆中的下一个位置,以及一个集合模型,结合了这些模型的预测。这三种模型在博物馆参观的小型数据集上进行了培训和测试。我们的结果令人鼓舞,总体模型产生了最佳性能。

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