基于评级和便利的用户偏好和服务的餐厅推荐系统

R. Gomathi, P. Ajitha, G. H. S. Krishna, I. Harsha Pranay
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引用次数: 18

摘要

推荐系统正在被强制执行,以向用户提供个性化的服务。它们基本上是用来产生符合用户关注的推荐或建议(比如餐馆、地点……),并且可以应用于多个领域。为了提高推荐系统的质量和服务,并解决与之相关的任何问题,可以使用与数据管理有关的各种有效技术。本文提出了一种机器学习算法来解决依赖tripadvisor.com搜索数据的个性化餐厅选择问题。酒店提供的设施和用户的意见正在被利用。NLP——自然语言处理被用于检查和标记每个酒店之前所有用户的评论(无论是正面的还是负面的),然后计算评论的总体百分比并存储输出。在餐厅推荐的过程中,首先用户根据自己的兴趣选择酒店的特征,并以此为中心,提取相应的酒店,并检查用户的评论,以确定排名最高的酒店。最终,餐厅推荐系统会将评分最高的酒店推荐给用户。提出的情感得分测度NLP算法用于寻找用户评论的方面和情感。自然语言处理(NLP)是一种以智能和有用的方式从人类语言中分析、理解和推导意义的机器学习技术。评估结果表明,与现有算法相比,所提出的NLP算法的性能有所提高。研究工作的重点是提供更精确和可访问的推荐餐厅列表。结果表明,该方法具有较高的精度。
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Restaurant Recommendation System for User Preference and Services Based on Rating and Amenities
Recommendation systems are being enforced to offer personalized set of services to the users. They are basically build to produce recommendations or suggestions (like restaurants, places…) that comply with user’s concern and that can be applied to multiple fields. To enhance the quality and service of Recommendation systems and to resolve any issues related to it, various effective techniques linked to data management can be made use of. The current paper proposes a machine learning algorithms to resolve the issue of personalized Restaurant selection relying upon tripadvisor.com search data. The facilities provided by the hotel along with user’s comments are being utilized. The NLP - Natural Language Processing is imbibed for examining and tagging all the previous user’s comments (whether positive or negative) for every hotel, thereafter computing the overall % of the comments and storing the output. In the process of Restaurant recommendation, first the user chooses the hotel’s features according to his interest and centered on this, the corresponding hotels are fetched and the user comments are examined to identify the hotel with the highest ranking. Eventually, the highest rated hotel is being recommended to the user by the restaurant recommended system. The proposed sentimental score measure NLP algorithm is used for finding the aspect and sentiments of the user comments. Natural language processing (NLP) is one of the machines learning technique to analyze, understand, and derive meaning from human language in a smart and useful way. The evaluation results reveal that the proposed NLP algorithm improves the performance when compared to existing algorithms. The focus of the research work is to offer list of recommended restaurants that is more precise and accessible. The conclusion and results reveal that the suggested approach yields high accuracy.
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