基于内容过滤的旅游景点推荐系统

Mishal Muneer, Uzair Rasheed, Sadia Khalid, M. Ahmad
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引用次数: 1

摘要

在线推荐系统已经崭露头角。在线推荐系统为旅游和交易提供了更好、更快的选择旅游点的方式。推荐系统是一种强大的新兴技术,可以帮助消费者根据自己的兴趣找到最好的旅游地点。推荐系统为最终用户推荐最合适的目的地。互联网旅游门户网站也经常通过考虑几个特点来相互竞争。推荐系统是提高收入和吸引消费者的最好方法之一。建立的系统检索不相关的信息,导致低客户满意度和客户的失望。本研究提出并设计了基于内容过滤的旅游景点推荐系统。它会根据用户的预算和兴趣,推荐最好的野餐地点。该系统改善了游客的体验,并根据他们喜欢的东西推荐最好的地方;最重要的是,它是预算友好的,因为它根据用户的兴趣和需求建议不同的地方。数据收集,包括用户信息、综合用户参与报告和旅游景点数据,是实现旅游推荐系统的主要挑战。用户信息主要来源于用户在注册过程中输入的信息。当系统拥有用户喜欢和不喜欢的数据时,系统将用户的偏好与作者为旅游推荐系统制作的数据集进行比较,在数据集中首先识别出在选择旅游目的地时必须考虑的所有特征。本文还考虑了用户的好恶和用户以前的历史来推荐一个类似的旅游景点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Tour Spot Recommendation System via Content-Based Filtering
Online recommendation systems have gained prominence. The online recommendation systems provide a better and faster way to choose Tour Spots for traveling and transactions. Recommender systems are powerful emerging technologies that help consumers to find the best places for touring according to their interests. The recommendation system recommends the most appropriate destinations for the end users. Internet travel portals also compete with each other regularly by taking into consideration several characteristics. Recommendation systems are one of the best methods to raise income and attract consumers. Established systems retrieved irrelevant information that resulted in low customer satisfaction and disappointment of customers. In this research, the Tour Spot recommendation system through content-based filtering is proposed and designed. It recommends the best picnic spot according to the budget and interest of the user. The proposed system improves the tourist experience and recommends the best place according to the things they would like; most significantly it is budget friendly as it suggests different places according to the interests and needs of the user. Data collection, including user information, consolidated user engagement reports, and tour spot data, is the primary challenge of implementing a travel recommendation system. User information originates mainly from information entered by the user during the registration process. When the system has the data of user likes and dislikes, then the system compares the user preferences to the dataset that the author makes for the tour recommendation systems in the dataset first identifies all the features that must be considered at the time of selection of travel destination. This Article also considers user likes and dislikes and the previous history of users to recommend a similar tour spot.
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