Semantic Explanation of Interactive Dimensionality Reduction

Yail Bian, Chris North, Eric Krokos, Sarah Joseph
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引用次数: 3

Abstract

Interactive dimensionality reduction helps analysts explore the high-dimensional data based on their personal needs and domain-specific problems. Recently, expressive nonlinear models are employed to support these tasks. However, the interpretation of these human-steered nonlinear models during human-in-the-loop analysis has not been explored. To address this problem, we present a new visual explanation design called semantic explanation. Semantic explanation visualizes model behaviors in a manner that is similar to users’ direct projection manipulations. This design conforms to the spatial analytic process and enables analysts better understand the updated model in response to their interactions. We propose a pipeline to empower interactive dimensionality reduction with semantic explanation using counterfactuals. Based on the pipeline, we implement a visual text analytics system with nonlinear dimensionality reduction powered by deep learning via the BERT model. We demonstrate the efficacy of semantic explanation with two case studies of academic article exploration and intelligence analysis.
交互降维的语义解释
交互式降维帮助分析人员根据他们的个人需求和特定领域的问题来探索高维数据。近年来,表达型非线性模型被用于支持这些任务。然而,在人在环分析中,这些人为控制的非线性模型的解释尚未得到探讨。为了解决这个问题,我们提出了一种新的视觉解释设计,称为语义解释。语义解释以一种类似于用户直接投影操作的方式可视化模型行为。这种设计符合空间分析过程,使分析人员能够更好地理解更新后的模型以响应他们的交互。我们提出了一个管道,通过使用反事实的语义解释来增强交互式降维能力。基于该管道,我们通过BERT模型实现了一个基于深度学习的非线性降维可视化文本分析系统。我们通过学术文章挖掘和智能分析两个案例来证明语义解释的有效性。
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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