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Detecting Illicit Drug Ads in Google+ Using Machine Learning

机译:使用机器学习检测Google+中的非法药物广告

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Opioid abuse epidemics is a major public health emergency in the US. Social media platforms have facilitated illicit drug trading, with significant amount of drug advertisement and selling being carried out online. In order to understand dynamics of drug abuse epidemics and design efficient public health interventions, it is essential to extract and analyze data from online drug markets. In this paper, we present a computational framework for automatic detection of illicit drug ads in social media, with Google+ being used for a proof-of-concept. The proposed SVM- and CNN-based methods have been extensively validated on the large dataset containing millions of posts collected using Google+ API. Experimental results demonstrate that our methods can efficiently identify illicit drug ads with high accuracy. Both approaches have been extensively validated using the dataset containing millions of posts collected using Google+ API. Experimental results demonstrate that both methods allow for accurate identification of illicit drug ads.
机译:Apioid滥用流行病是美国的主要公共卫生紧急情况。社交媒体平台促进了非法毒品交易,其中有大量的药物广告和销售在线进行。为了了解药物滥用流行病的动态和设计有效的公共卫生干预措施,必须提取和分析来自在线药物市场的数据。在本文中,我们介绍了一种用于自动检测社交媒体中的非法药物广告的计算框架,Google+用于概念验证。在包含使用Google+ API收集的数百万个帖子的大型数据集上已经广泛验证了所提出的SVM和CNN的方法。实验结果表明,我们的方法可以高精度地有效地识别非法药物广告。使用包含使用Google+ API收集数百万个帖子的数据集已广泛验证这两种方法。实验结果表明,两种方法都允许准确识别非法药物广告。

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