Improving the Movie Showtime Scheduling Problem by Integrated Artificial Intelligence Techniques

Paknarat Lawitsanon, Kamonporn Hanthanunchai, Nattanan Chanachanchai, Sitthisak Mahanin, Jumpol Polvichai
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Abstract

This paper describes a development of an artificial intelligence system for efficiently scheduling movie showtimes. The strategy was to get the maximum amount of visitors by applying any appropriate artificial intelligence techniques to the problem of showtime schedule. The system consists of three key parts which are the movie showtime scheduling system, the predictive model of the total amount of visitors of each movie on selected days, and the web application. In this paper, five different branches of movie theaters were selected for examining the system. The total movie slots were calculated by the models and utilized to be used in the scheduling process following the criteria defined from exploratory data analysis (EDA). According to experiments, the final integrated system was evaluated with many appropriate test scenarios. The average number of visitors by the artificial intelligence system was greater than the average visitors normally reported by the movie theater company. Consequently, the developed system was showing ability to help the company increase the income and also decrease the staff's burden tasks. In addition, any mistakes caused by human errors were expected to alleviate as well.
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应用集成人工智能技术改进电影放映时间调度问题
本文描述了一种用于高效调度电影放映时间的人工智能系统的开发。他们的策略是通过适当的人工智能技术来解决表演时间安排问题,以获得最大的游客数量。该系统由电影放映时间调度系统、每部电影在选定日期的总访问量预测模型和web应用程序三个关键部分组成。本文选取了五个不同的影院分支机构对该系统进行了研究。根据探索性数据分析(EDA)定义的标准,通过模型计算总电影档位,并将其用于调度过程。根据实验,对最终的集成系统进行了多种合适的测试场景评估。人工智能系统的平均观众人数比电影院公司通常报告的平均观众人数要多。因此,开发的系统显示出帮助公司增加收入的能力,也减少了员工的负担任务。此外,任何由人为错误引起的错误也有望得到缓解。
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