基于机器学习的社交数据用户兴趣识别方法

R. Tahir, M. Naeem
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摘要

Twitter、Facebook、Instagram等社交媒体平台被认为是提取个人信息的常见来源,比如他们的需求、兴趣和观点。我们在本文中的主要贡献是确定与巴基斯坦时尚产业相关的用户兴趣和愿望。由于巴基斯坦人大多用罗马乌尔都语写推文和评论,我们在这项研究中关注的数据集由罗马乌尔都语推文和谷歌地图评论组成。从文献中,我们观察到,由于罗马乌尔都语是一种低资源语言,因此没有太多的努力用于罗马乌尔都语的推文和评论。在方法方面,我们应用LDA、LSA和BERT进行主题建模;Vadar结合TextBlob和DistilBert进行情感分析;以及用于识别具有相似兴趣的用户群的K-Means。在我们的实验中,我们使用了15000条tweet和6000条bb0评论。我们能够为每个品牌创建五个不同的集群。这些集群进一步用于根据用户的兴趣跟踪用户。我们评估了我们的方法的性能,并根据Cohen的Kappa分数对其进行了实证验证,并获得了0.45的分数,表明人与机器之间存在适度的一致性。
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A Machine Learning based Approach to Identify User Interests from Social Data
Social media platforms like Twitter, Facebook, Instagram, etc., are considered a common source of extracting information about individuals, such as their needs, interests, and opinions. Our major contribution in this paper is to identify user interests and desires related to the fashion industry in Pakistan. Since people in Pakistan mostly write tweets and reviews in Roman Urdu, the dataset we focused on in this research was comprised of Roman Urdu Tweets and Google Map reviews. From the literature, we observed that not much effort has been done on Roman Urdu tweets and reviews because of its being a low resource language. In terms of methodology, we applied LDA, LSA, and BERT for topic modeling; Vadar combined with TextBlob and DistilBert for sentiment analysis; and K-Means for identifying user clusters with similar interests. In our experiments, we used 15000 tweets and 6000 Google reviews. We were able to create five distinct clusters for each brand. These clusters were further used to track the users based on their interests. We evaluated the performance of our approach and validated it empirically based on Cohen's Kappa score, and achieved a score of 0.45 that shows moderate agreement between human and machine.
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