On the End-to-End Development of a Cultural Tourism Recommender

G. Pavlidis
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引用次数: 1

Abstract

Recommenders are systems that employ some knowledge on items and user preferences, along with sophisticated algorithms to provide personalised content and services. They have been around to tackle the information overload and personalisation demand in today's always-connected world. This technology appeared in the cultural heritage domain relatively recently, but the bibliography is already rich, as cultural tourism plays an important role for regional economies. From the technical perspective, different approaches, like collaborative filtering, content-based, knowledge-based and hybrid approaches, have been adopted. From the intuition perspective, the approaches are influenced by current conceptualisation and specific application domains and demands. The museum has been one of the main target applications, either as a part of visit support or in the context of cultural tourism initiatives. This article presents a review of the domain and draws a generic blueprint for the end-to-end development of a recommender for cultural tourism that outperforms a baseline popularity-based approach.
论文化旅游推荐服务的端到端开发
推荐系统利用一些关于商品和用户偏好的知识,以及复杂的算法来提供个性化的内容和服务。在当今这个始终互联的世界里,他们一直在解决信息过载和个性化需求。该技术在文化遗产领域出现的时间较晚,但由于文化旅游对区域经济的重要作用,相关文献已经丰富。从技术角度看,采用了协同过滤、内容过滤、知识过滤和混合过滤等方法。从直观的角度来看,这些方法受到当前概念化和特定应用领域和需求的影响。博物馆一直是主要目标应用之一,无论是作为访问支持的一部分,还是在文化旅游倡议的背景下。本文介绍了该领域的回顾,并绘制了文化旅游推荐的端到端开发的通用蓝图,该蓝图优于基于流行度的基线方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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