ElectroLens: Understanding Atomistic Simulations through Spatially-Resolved Visualization of High-Dimensional Features

Xiangyun Lei, Fred Hohman, Duen Horng Chau, A. Medford
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引用次数: 2

Abstract

In recent years, machine learning (ML) has gained significant popularity in the field of chemical informatics and electronic structure theory. These techniques often require researchers to engineer abstract "features" that encode chemical concepts into a mathematical form compatible with the input to machine-learning models. However, there is no existing tool to connect these abstract features back to the actual chemical system, making it difficult to diagnose failures and to build intuition about the meaning of the features. We present ElectroLens, a new visualization tool for high-dimensional spatially-resolved features to tackle this problem. The tool visualizes high-dimensional data sets for atomistic and electron environment features by a series of linked 3D views and 2D plots. The tool is able to connect different derived features and their corresponding regions in 3D via interactive selection. It is built to be scalable, and integrate with existing infrastructure.
电子透镜:通过高维特征的空间分辨可视化来理解原子模拟
近年来,机器学习在化学信息学和电子结构理论领域得到了广泛的应用。这些技术通常需要研究人员设计抽象的“特征”,将化学概念编码成与机器学习模型输入兼容的数学形式。然而,没有现有的工具将这些抽象的特征与实际的化学系统联系起来,这使得诊断故障和建立关于特征意义的直觉变得困难。我们提出了ElectroLens,一个新的高维空间分辨率特征可视化工具来解决这个问题。该工具通过一系列链接的3D视图和2D图来可视化原子和电子环境特征的高维数据集。该工具能够通过交互式选择将不同的派生特征及其相应的三维区域连接起来。它被构建为可扩展的,并与现有的基础设施集成。
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