Multiplex Regulation System With Personalised Recommendation Using ML

Anshul Shroff, Bickey Kumar Shah, Aayush Jha, A. Jaiswal, P. Sapra, Manoj Kumar
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引用次数: 1

Abstract

The main aim of this research work is to conduct a feasibility study and requirement analysis for a Multiplex Management system (MMS). This research work includes the design diagrams that facilitate the production of the software and its use in making a frontend and backend for the system according to the elicited requirements, by integrating them. Its alpha version, which strictly adhering to relevant software engineering practices that test the software with suitable methods has also developed. It automates various functions of Multiplex Theater with particular emphasis on ticket reservation, show screening, personnel management, statistical report generation, and increasing ticket sales by giving personalized movie suggestions by learning from the previous booking history or characteristics of users. MMS is a Web application that provides different interfaces for different stakeholders like users, admins, and employees. The admins can add movies and schedule screenings and evaluate the booking statistics and the users and employees can book and cancel tickets. The system also analyzes various factors using Machine Learning to suggest movies to the User to maximize their chances of booking them. The data and model generated from this system are also a precious commodity that can be leveraged successfully to bring in large gains for the Service.
基于ML的个性化推荐的多路调节系统
本研究的主要目的是对多路复用管理系统(MMS)进行可行性研究和需求分析。这项研究工作包括便于软件生产的设计图,以及根据所引出的需求,通过集成它们来为系统制作前端和后端。它的alpha版本,严格遵守相关的软件工程实践,用合适的方法测试软件,也已经开发出来。它将多厅影院的各种功能自动化,重点是订票、放映、人员管理、统计报表生成,以及通过学习用户之前的订票历史或特征,给出个性化的电影建议,从而增加票房。MMS是一个Web应用程序,它为不同的涉众(如用户、管理员和雇员)提供不同的接口。管理员可以添加电影和安排放映,评估预订统计数据,用户和员工可以预订和取消门票。该系统还利用机器学习分析各种因素,向用户推荐电影,以最大限度地提高他们预订电影的机会。从该系统生成的数据和模型也是一种宝贵的商品,可以成功地利用它们为服务带来巨大收益。
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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