分类就是解释:通过人类-人工智能协作从异构数据中构建分类

S. Meier, Katrin Glinka
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引用次数: 0

摘要

分类法构建是一项需要在给定的参考框架内解释和分类数据的任务,它在处理知识和信息组织的许多应用程序领域中发挥作用。在本文中,我们探讨了如何通过集成机器学习(ML)的系统来支持分类法构建。然而,仅仅依靠基于机器学习的黑盒系统来自动构建分类法会忽略用户的专业知识。我们提出了一种方法,允许用户迭代地考虑多个模型的输出作为其语义构建过程的一部分。我们在两个真实的用例中实现了我们的方法。这项工作定位于HCI研究的背景下,该研究调查了基于ml的系统的设计,重点是实现人类与人工智能的协作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
To Classify is to Interpret: Building Taxonomies from Heterogeneous Data through Human-AI Collaboration
Taxonomy building is a task that requires interpreting and classifying data within a given frame of reference, which comes to play in many areas of application that deal with knowledge and information organization. In this paper, we explore how taxonomy building can be supported with systems that integrate machine learning (ML). However, relying only on black-boxed ML-based systems to automate taxonomy building would sideline the users’ expertise. We propose an approach that allows the user to iteratively take into account multiple model’s outputs as part of their sensemaking process. We implemented our approach in two real-world use cases. The work is positioned in the context of HCI research that investigates the design of ML-based systems with an emphasis on enabling human-AI collaboration.
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