基于聚类方法的社交媒体用户安全等级检测

Md. Kalim Amzad Chy, Sheikh Arif Ahmed, Ali Haider Doha, Abdul Kadar Muhammad Masum, S. I. Khan
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引用次数: 4

摘要

社交媒体对我们的日常生活产生了重大影响,并且由于能够与世界各地的人建立联系并分享感受,照片,视频等,因此受欢迎程度正在迅速增加。因此,这是一个高度安全问题。然而,大多数社交媒体用户并不知道他们的账户的安全级别,包括如果账户处于风险情况下,社交媒体的哪些功能应该考虑。发帖、交友等有时会带来不幸的事件,如身份盗窃、性骚扰、网络犯罪等。为了克服这种意想不到的问题,本研究提出了一种基于聚类算法的分类预测模型,通过该模型可以知道自己在社交媒体中的安全水平。数据集是通过封闭式问卷形成的。由于高维数据训练成本高,采用增益比法选择基本特征。一种无监督的算法,分层聚类,将用户聚为三组,这些组被标记为进一步分析。选择各种分类算法来训练预测模型。从模型评价结果来看,“Logistic回归”预测社交媒体用户的安全等级具有较高的准确性。因此,这种模式将为社交媒体用户的账户安全带来额外的维度。
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Social Media User’s Safety Level Detection through Classification via Clustering Approach
Social media has a significant impact on our daily life, and the popularity is increasing rapidly because of the ability to be attached to people around the world and share feelings, photos, videos, etc. So, it bears a high-security concern. However, most of the social media user does not know the security level of their account, including what features of social media should consider if the account is in a risk situation. The posting, friendship, etc. sometimes brings unfortunate events like identity theft, sexual harassment, cyber-crime, etc. To overcome such kind of unexpected issues, this research proposes a classification via clustering algorithm based predictive model by which one can know his safety level in the social media. A dataset is formed through a closed-ended questionnaire. Essential features are selected via gain ration method as high dimensional data is costly to train a model. An unsupervised algorithm, hierarchical clustering, cluster the users into three groups that are labeled for further analysis. The various classification algorithm is chosen to train the predictive model. From the model evaluation result, “Logistic Regression” predicts the safety level of a social media user with high accuracy. So, this model will bring an extra dimension in social media user account safety.
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