获取旅游档案:图片收藏的用户研究

Mete Sertkan, J. Neidhardt, H. Werthner
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引用次数: 10

摘要

激发游客的偏好和需求是具有挑战性的,因为人们常常难以明确地表达它们——特别是在旅行计划的初始阶段。因此,在规划的早期阶段使用推荐系统对用户的总体满意度非常有益。之前的研究已经将图片作为一种交流工具,作为一种隐含推断旅行者偏好和需求的方式。在本文中,我们进行了一项用户研究,以验证先前关于从用户图片选择中建模旅行兴趣的可行性的主张和概念性工作。我们利用微调的卷积神经网络来计算图像的向量表示,其中每个维度对应于传统七因素模型中的旅行行为模式。在我们的研究中,我们遵循严格的隐私原则,在计算了上传的图片的向量表示后,没有保存图片。我们使用不同的策略将用户的图片表示聚合为单个用户表示,即旅游个人资料。在我们有81名参与者的用户研究中,我们让用户调整预测的旅游概况,并证实了我们方法的有效性。我们的结果表明,给定一组图片,可以确定用户的旅游概况。
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Eliciting Touristic Profiles: A User Study on Picture Collections
Eliciting the preferences and needs of tourists is challenging, since people often have difficulties to explicitly express them -- especially in the initial phase of travel planning. Recommender systems employed at the early stage of planning can therefore be very beneficial to the general satisfaction of a user. Previous studies have explored pictures as a tool of communication and as a way to implicitly deduce a traveller's preferences and needs. In this paper, we conduct a user study to verify previous claims and conceptual work on the feasibility of modelling travel interests from a selection of a user's pictures. We utilize fine-tuned convolutional neural networks to compute a vector representation of a picture, where each dimension corresponds to a travel behavioural pattern from the traditional Seven-Factor model. In our study, we followed strict privacy principles and did not save uploaded pictures after computing their vector representation. We aggregate the representations of the pictures of a user into a single user representation, i.e., touristic profile, using different strategies. In our user study with 81 participants, we let users adjust the predicted touristic profile and confirm the usefulness of our approach. Our results show that given a collection of pictures the touristic profile of a user can be determined.
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