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Understanding Behaviors in Different Domains: The Role of Machine Learning Techniques and Network Science

机译:了解不同领域的行为:机器学习技术和网络科学的作用

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Recent developments in the Internet of Things (IoT), social media, and the data sciences have resulted in larger volumes of data than ever before, offering more opportunity for observing and understanding behaviors. Advances in data analytic and machine learning techniques have also enabled assessments to be more multi-faceted, incorporating data from more sources. Machine learning algorithms such as Decision Trees and Random Forests, K-nearest neighbors, and Artificial Neural Networks have been used to uncover hidden patterns in data and derive predictions and recommendations from a wide range of data types and sources. However, these do not necessarily yield insights into behaviors in complex systems/domains. Methods from mathematics such as Set Theory, Graph Theory, and Network Science may be useful in shedding light on the interactions and relationships within and across domains. This paper provides a description of the applications, strengths, and limitations of some of these techniques and methods.
机译:物联网(IoT),社交媒体和数据科学的最新发展已产生了比以往更大的数据量,为观察和理解行为提供了更多机会。数据分析和机器学习技术的进步也使评估变得更加多元化,并结合了来自更多来源的数据。诸如决策树和随机森林,K近邻和人工神经网络之类的机器学习算法已用于发现数据中的隐藏模式,并从各种数据类型和数据源中得出预测和建议。但是,这些并不一定能深入了解复杂系统/域中的行为。诸如集合论,图论和网络科学之类的数学方法可能有助于阐明领域内和领域之间的相互作用和关系。本文提供了其中一些技术和方法的应用,优势和局限性的描述。

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