基于社会媒体分析的个性化旅游推荐系统

Joseph Coelho, Paromita Nitu, P. Madiraju
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引用次数: 19

摘要

个性化的推荐系统可以为用户提供定制化的服务。社交媒体是帮助个性化的一种资源。本研究探讨了twitter数据在个性化旅游推荐中的应用。使用机器学习分类模型来识别与旅行相关的推文。然后,这些旅游推文被用来为用户提供个性化的旅游景点推荐。名胜古迹分为:历史建筑、博物馆、公园和餐馆。为了更好地个性化该模型,还挖掘了用户朋友和关注者的旅游推文。志愿者推特用户被要求提供他们的推特账号,并在一项调查中对他们的旅游类别偏好进行排名。我们通过比较我们的模型做出的预测和用户在调查中的选择来评估我们的模型。评价结果表明,预测准确率为68%。准确性可以通过更好的旅行推特训练数据集以及使用机器学习的更好的旅行类别识别技术来提高。旅游类别可以增加到包括体育场馆、音乐活动、娱乐等项目,从而微调推荐。该模型根据模型生成的旅游类别得分,从每个类别中列出“n”个景点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Personalized Travel Recommendation System Using Social Media Analysis
Personalization of recommender systems enables customized services to users. Social media is one resource that aids personalization. This study explores the use of twitter data to personalize travel recommendations. A machine learning classification model is used to identify travel related tweets. The travel tweets are then used to personalize recommendations regarding places of interest for the user. Places of interest are categorized as: historical buildings, museums, parks, and restaurants. To better personalize the model, travel tweets of the user’s friends and followers are also mined. Volunteer twitter users were asked to provide their twitter handle as well as rank their travel category preferences in a survey. We evaluated our model by comparing the predictions made by our model with the users choices in the survey. The evaluations show 68% prediction accuracy. The accuracy can be improved with a better travel-tweet training dataset as well as a better travel category identification technique using machine learning. The travel categories can be increased to include items like sports venues, musical events, entertainment, etc. and thereby fine-tune the recommendations. The proposed model lists 'n' places of interest from each category in proportion to the travel category score generated by the model.
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