An application of ontology driven machine learning model challenges for the classification of social media data: a systematic literature review

Admas A. Kero, Dawit Demissie, K. K. Tune
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Abstract

This systematic literature review aimed to explore the challenges and limitations of applying ontology driven machine learning models to the classification of social media data. Social media platforms generate a vast amount of data that requires automated and reliable classification to facilitate analysis and decision-making. Ontology driven machine learning models offer a promising approach to address this need by harnessing the power of both ontologies and machine learning algorithms to improve accuracy and efficiency. However, the application of such models to social media data classification poses unique challenges due to the complex and dynamic nature of social media data. To address this research gap, a systematic literature search was conducted, and 20 studies were included in the review. The findings of this review suggest that ontology driven machine learning models offer a promising approach to address the challenges of social media data classification. However, the existing literature highlights several challenges that need to be addressed, such as ontology development, feature selection, and model validation. Overall, the review provides insights into the current state of research on ontology driven machine learning models for social media data classification, identifies research gaps, and suggests directions for future investigation.
应用本体驱动的机器学习模型对社交媒体数据分类的挑战:系统文献综述
这篇系统的文献综述旨在探讨将本体驱动的机器学习模型应用于社交媒体数据分类的挑战和局限性。社交媒体平台产生了大量的数据,这些数据需要自动可靠的分类,以便于分析和决策。本体驱动的机器学习模型通过利用本体和机器学习算法的力量来提高准确性和效率,为解决这一需求提供了一种有前途的方法。然而,由于社交媒体数据的复杂性和动态性,将这些模型应用于社交媒体数据分类面临着独特的挑战。为了弥补这一研究空白,我们进行了系统的文献检索,并纳入了20项研究。本综述的发现表明,本体驱动的机器学习模型为解决社交媒体数据分类的挑战提供了一种有前途的方法。然而,现有文献强调了需要解决的几个挑战,如本体开发、特征选择和模型验证。总体而言,该综述提供了对用于社交媒体数据分类的本体驱动机器学习模型的研究现状的见解,确定了研究差距,并为未来的研究提出了方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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