In events that are composed by many activities, there is a problem that involves retrieve and management the information of visitors that are visiting the activities. This management is crucial to find some activities that are drawing attention of visitors; identify an ideal positioning for activities; which path is more frequented by visitors. In this work, these features are studied using Complex Network theory. For the beginning, an artificial database was generated to study the mentioned features. Secondly, this work shows a method to optimize the event structure that is better than a random method and a recommendation system that achieves ~95% of accuracy.
翻译:在由许多活动构成的活动中,有一个问题涉及检索和管理访问活动者的信息。这种管理对于发现一些吸引来访者注意的活动至关重要;确定活动的理想定位;访问者更经常使用哪种途径。在这项工作中,利用复杂的网络理论研究这些特征。一开始,创建了一个人工数据库来研究上述特征。第二,这项工作展示了一种优化事件结构的方法,比随机方法好得多,以及一种精确度达到~95%的建议系统。