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A Radial Visualisation for Model Comparison and Feature Identification

机译:模型比较和特征识别的径向可视化

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Machine Learning (ML) plays a key role in various intelligent systems, and building an effective ML model for a data set is a difficult task involving various steps including data cleaning, feature definition and extraction, ML algorithms development, model training and evaluation as well as others. One of the most important steps in the process is to compare generated substantial amounts of ML models to find the optimal one for the deployment. It is challenging to compare such models with dynamic number of features. This paper proposes a novel visualisation approach based on a radial net to compare ML models trained with a different number of features of a given data set while revealing implicit dependent relations. In the proposed approach, ML models and features are represented by lines and arcs respectively. The dependence of ML models with dynamic number of features is encoded into the structure of visualisation, where ML models and their dependent features are directly revealed from related line connections. ML model performance information is encoded with colour and line width in the innovative visualisation. Together with the structure of visualization, feature importance can be directly discerned to help to understand ML models.
机译:机器学习(ML)在各种智能系统中起着关键作用,并为数据集构建有效的ML模型是涉及各种步骤的困难任务,包括数据清洁,功能定义和提取,ML算法开发,模型培训和评估。也是如此就像其他人一样。该过程中最重要的步骤之一是将生成的大量ML模型进行比较以找到部署的最佳选择。将这些模型与动态的功能进行比较是挑战性的。本文提出了一种基于径向网的新型可视化方法,以比较具有不同数量的给定数据集的ML模型的ML模型,同时揭示隐式依赖关系。在所提出的方法中,ML模型和特征分别由线和弧表示。 ML模型具有动态数量的特征的依赖性被编码为可视化结构,其中ML模型及其依赖特征直接从相关线路连接中透露。 ML模型性能信息以创新可视化的颜色和线宽编码。与可视化结构一起,可以直接辨别出现重要性以帮助理解ML模型。

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