Salu Khadka, Pragya Shrestha Chaise, Sujin Shrestha
{"title":"Restaurant Recommendation System Using User Based Collaborative Filtering","authors":"Salu Khadka, Pragya Shrestha Chaise, Sujin Shrestha","doi":"10.51983/ajes-2020.9.2.2552","DOIUrl":null,"url":null,"abstract":"A recommendation system is an application that can identify entities of interest for a person and provide suggestions based on the past record of person’s likes and preferences. The entity of interest can be anything, for example it can be a product, a movie or a news article. Recommender system is an effective way to help users to obtain the personalized and useful information. However, due to complexity and dynamic, the traditional recommender system cannot work well in mobile environment. Keeping such things into consideration, this recommendation system aims to recommend restaurants to users using their past preferences so they do not need to go through a list of choices. The recommender system adopts a user preference model by using the features of user's visited restaurants, and utilizes the location information of user via GPS(Global Positioning System) using LBS(Location Based System) and restaurants to dynamically generate the recommendation results using collaborative filtering technique. The suggestions will be based on the user preferences obtained from the past ratings and reviews given by the user, frequently visited cuisines of the user and the time preference of the user. Moreover, a brief analysis of reviews is also made to provide user a computed synopsis of the restaurant using text mining algorithm.","PeriodicalId":365290,"journal":{"name":"Asian Journal of Electrical Sciences","volume":"54 1","pages":"0"},"PeriodicalIF":0.0000,"publicationDate":"2021-05-30","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Asian Journal of Electrical Sciences","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.51983/ajes-2020.9.2.2552","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 0
Abstract
A recommendation system is an application that can identify entities of interest for a person and provide suggestions based on the past record of person’s likes and preferences. The entity of interest can be anything, for example it can be a product, a movie or a news article. Recommender system is an effective way to help users to obtain the personalized and useful information. However, due to complexity and dynamic, the traditional recommender system cannot work well in mobile environment. Keeping such things into consideration, this recommendation system aims to recommend restaurants to users using their past preferences so they do not need to go through a list of choices. The recommender system adopts a user preference model by using the features of user's visited restaurants, and utilizes the location information of user via GPS(Global Positioning System) using LBS(Location Based System) and restaurants to dynamically generate the recommendation results using collaborative filtering technique. The suggestions will be based on the user preferences obtained from the past ratings and reviews given by the user, frequently visited cuisines of the user and the time preference of the user. Moreover, a brief analysis of reviews is also made to provide user a computed synopsis of the restaurant using text mining algorithm.
推荐系统是一种应用程序,它可以识别一个人感兴趣的实体,并根据人们过去的喜欢和偏好记录提供建议。感兴趣的实体可以是任何东西,例如它可以是一个产品,一部电影或一篇新闻文章。推荐系统是帮助用户获取个性化、有用信息的有效途径。然而,传统的推荐系统由于其复杂性和动态性,在移动环境下不能很好地工作。考虑到这些因素,这个推荐系统的目的是根据用户过去的偏好向他们推荐餐馆,这样他们就不需要浏览一个选择列表。推荐系统利用用户去过的餐厅特征,采用用户偏好模型,利用LBS(location Based system)和餐厅的位置信息,利用用户通过GPS(Global Positioning system)获取的位置信息,通过协同过滤技术动态生成推荐结果。这些建议将基于用户从过去的评分和评论中获得的用户偏好、用户经常光顾的菜系以及用户的时间偏好。此外,还对评论进行了简要分析,并使用文本挖掘算法为用户提供了餐厅的计算摘要。