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Machine Learning-based Automated Data Visualization: A Meta-feature Engineering Approach

机译:基于机器学习的自动化数据可视化:元特征工程方法

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This paper investigates an effective method to automatically visualize a given data set based on machine learning. Basically, the visualization results can be varied according to the purpose of the data analysis, and as the understanding of the data becomes larger, more various results can be obtained. This paper aims at realization of an automatic data visualization system based on machine learning, and introduces a meta-level feature engineering process to construct a visualization recommendation (classification) model. Through various experiments, we have designed various meta- feature variables to determine the significance of the visualization results in order to develop the automatic visualization system and constructed the visualization recommendation model using the meta-features. For performance evaluation, we have used three data sources including UCI ML Repository, Data.world, and R datasets, and have found that the decision tree-based recommendation model provides the best performance.
机译:本文研究了基于机器学习自动可视化给定数据集的有效方法。基本上,可以根据数据分析的目的来改变可视化结果,并且随着对数据的理解变大,可以获得更多的结果。本文旨在实现基于机器学习的自动数据可视化系统,并引入了元级功能工程过程来构建可视化推荐(分类)模型。通过各种实验,我们设计了各种元特征变量,以确定可视化结果的重要性,以便使用元特征构建可视化推荐模型。对于性能评估,我们使用了三个数据来源,包括UCI ML存储库,Data.World和R数据集,并发现基于决策树的推荐模型提供了最佳性能。

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