使用RBM机器学习方法的有效基于位置的度假推荐系统

R. Jayaraman, K. C, A. Sahaya Anselin nisha, K. Somasundaram, N. Naga Saranya, Vijendra Babu D
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引用次数: 0

摘要

应用程序开发人员和研究人员采取了许多步骤来寻找适合不同季节的旅游建议。随着现代科技的发展,旅游部门的发展速度越来越快,为确保游客的旅游便利和满意度,对游客的管理工作进行改进和升级已经变得至关重要。多年来,没有最优的系统能提供游客所需的所有必需品。根据holidata的建议,拟议的系统减少了在规划期间花费的时间,并有助于提高部署过程的效率。关于客户的偏好,客户的详细信息和他们的位置是共享的,还有一些基于用户的其他信息,他们的目的地旅行,旅行日期,预算,还有其他用户吸引方面,因为它有助于有效的旅行。基于以上的事情,旅行可以计划为整个旅行。该系统使用RBM预测用户评分并推荐最佳景点。本文尝试降低RBM预测中的MAE。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Effective Location-based Recommendation Systems for Holiday using RBM Machine Learning Approach
Application developers and researchers took many steps in finding out proper tourism recommendations for various seasons. With the faster development in the travel department through modern technologies, it has gotten fundamental to present headways and upgrades in the administrations given to the sightseers, to ensure their ease of travel and satisfaction. Over the years, there has been no optimal system providing all the necessities required by a tourist. Based on the holidata recommendation, proposed system makes to decrease the time spent on the planning period and it helps to increase the deployment of process to be more effective. Regarding the customer preferences, the customer details and their location are shared and there are some other information available based on the users are, their destination trip, dates for the travel, budget and there are other user attractive aspects as it helps to have the effective trip. Based on the above things, the travel can be planned for the trip entirely. This system uses RBM to predict the user ratings and recommend the best attraction. An attempt has been made to reduce the MAE in RBM prediction.
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