Application of Machine Learning in Digital Marketing

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Abstract

The medication utilization alludes to unforeseen alleviation of sicknesses or side effects when patients take a medication for another known sign. Throughout the entire existence of medication revelation, this has contributed altogether to new and fruitful signs for some medications. Our past research has distinguished patient announced fortunate medication use in internet-based life. On the off chance that such data could be computationally distinguished in internet-based life, it could be useful for producing and approving medication repositioning speculations. The proposed framework outlines recognition of fortunate medication use in online life as a parallel grouping issue and examined profound neural system models as an answer. The proposed framework discovers patients revealed fortunate new signs for the medications they were utilizing for comorbid conditions, which is really significant data for tranquilize repositioning. The proposed framework examines drug results, and solid common language handling and content mining strategies are expected to naturally mine internet-based life information for a huge scope. The proposed framework adds setting data assisted with decreasing the bogus positive pace of profound neural system models. Within the sight of an amazingly imbalanced dataset and constrained cases of fortunate medication utilization, profound neural system models didn't outflank other AI models with n-gram and setting highlights. Be that as it may, profound neural system models could all the more successfully use word inserting in include development
机器学习在数字营销中的应用
药物的利用暗示了不可预见的减轻疾病或副作用,当患者服用药物的另一个已知的迹象。纵观整个药物启示的存在,这已经为一些药物的新的和富有成效的迹象做出了贡献。我们过去的研究表明,在基于互联网的生活中,有杰出的患者宣布幸运的药物使用。如果这些数据能够在基于互联网的生活中进行计算区分,那么它可能对生产和批准药物重新定位推测有用。提出的框架概述了在线生活中幸运药物使用作为一个平行分组问题的认识,并研究了深层神经系统模型作为答案。提出的框架发现,患者在使用治疗合并症的药物后出现了幸运的新症状,这对于镇静剂重新定位来说是非常重要的数据。所提出的框架检查药物结果,以及可靠的公共语言处理和内容挖掘策略有望在大范围内自然地挖掘基于互联网的生命信息。提出的框架增加了辅助降低深度神经系统模型伪正速度的设置数据。在令人惊讶的不平衡数据集和幸运药物使用的有限案例中,深度神经系统模型并没有用n-gram和设置亮点击败其他人工智能模型。尽管如此,深度神经系统模型可以更成功地使用包含发展的单词插入
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