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A new point-of-interest approach based on multi-itinerary recommendation engine

机译:一种基于多行程推荐引擎的新的兴趣点方法

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The significance of tourism in the globe today is enormous since it is a major source of income and jobs for a nation. Tourists are facing a range of difficulties as they select suitable tours, consisting of several itineraries in terms of their interests and distinct constraints. An itinerary consists of many Points of Interest (POIs) and a POI can further be splitted into several attractions which are named as POI within POI. For selecting the itinerary, the existing techniques use the characteristics of POIs. However, a POI consists of many attractions. Out of these, one dominating attraction's type is considered as POI type. This ignores the other type of attraction's present in that POI. It may cause improper selection of itineraries. Therefore, selection of itineraries by considering POI within POI is of great benefit. But, it is very challenging. For this task, we suggest an algorithm called PWP. It recommends multiple itineraries that are based on the interest of visitors, popularity of itineraries and the cost of itineraries. If a tourist wants to visit unknown areas, the PWP algorithm can be expanded further. We have taken the similar user's features to advise multiple itineraries using the Flickr dataset. The findings show that the proposed PWP algorithm out-performs the baseline algorithms in terms of real-life matrices and heuristic based metrics.
机译:今天,全球旅游业的意义是巨大的,因为它是一个国家收入和工作的主要来源。游客在选择合适的旅游时面临着一系列困难,在他们的兴趣和独特的限制方面由几个行程组成。行程包括许多兴趣点(POI),POI可以进一步分割为几个景点,该景点被命名为POI内的POI。为了选择行程,现有技术使用POI的特征。但是,POI包括许多景点。其中一个主导的吸引力的类型被认为是POI类型。这忽略了该POI中存在的其他类型的吸引力。它可能导致行程选择不当。因此,通过考虑POI的POI在POI中的选择是有利的。但是,这是非常具有挑战性的。对于此任务,我们建议一种名为PWP的算法。它推荐了基于访客的利益,行动的流行度以及行程的成本的多种行程。如果旅游者想要访问未知区域,则可以进一步扩展PWP算法。我们已经采取了类似的用户的功能来使用Flickr DataSet建议多个行程。该发现表明,所提出的PWP算法在现实生活矩阵和基于启发式的度量方面进行了基线算法。

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