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Machine learning approach to auto-tagging online content for content marketing efficiency: A comparative analysis between methods and content type

机译:机器学习方法自动标记在线内容以提高内容营销效率:方法和内容类型之间的比较分析

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摘要

As complex data becomes the norm, greater understanding of machine learning (ML) applications is needed for content marketers. Unstructured data, scattered across platforms in multiple forms, impedes performance and user experience. Automated classification offers a solution to this. We compare three state-of-the-art ML techniques for multilabel classification - Random Forest, K-Nearest Neighbor, and Neural Network - to automatically tag and classify online news articles. Neural Network performs the best, yielding an F1 Score of 70% and provides satisfactory cross-platform applicability on the same organisation's YouTube content. The developed model can automatically label 99.6% of the unlabelled website and 96.1% of the unlabelled YouTube content. Thus, we contribute to marketing literature via comparative evaluation of ML models for multilabel content classification, and cross-channel validation for a different type of content. Results suggest that organisations may optimise ML to auto-tag content across various platforms, opening avenues for aggregated analyses of content performance.
机译:随着复杂数据成为规范,内容营销人员需要对机器学习(ML)应用程序有更多的了解。非结构化数据以多种形式散布在各个平台上,从而影响了性能和用户体验。自动分类为此提供了解决方案。我们比较了三种用于多标签分类的最先进的ML技术-随机森林,K最近邻和神经网络-自动标记和分类在线新闻文章。神经网络表现最佳,F1得分达到70%,并在同一组织的YouTube内容上提供令人满意的跨平台适用性。开发的模型可以自动标记未标记网站的99.6%和未标记YouTube内容的96.1%。因此,我们通过对ML模型进行多标签内容分类的比较评估以及对不同类型内容的跨渠道验证,为营销文献做出了贡献。结果表明,组织可以优化ML,以跨各种平台自动标记内容,从而为汇总汇总的内容性能开辟道路。

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