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Structured Labeling to Facilitate Concept Evolution in Machine Learning

机译:结构标签,以便于机器学习中的概念演变

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Labeling data is a seemingly simple task required for training many machine learning systems, but is actually fraught with problems. This paper introduces the notion of concept evolution, the changing nature of a person's underlying concept (the abstract notion of the target class a person is labeling for, e.g., spam email, travel related web pages) which can result in inconsistent labels and thus be detrimental to machine learning. We introduce two structured labeling solutions, a novel technique we propose for helping people define and refine their concept in a consistent manner as they label. Through a series of five experiments, including a controlled lab study, we illustrate the impact and dynamics of concept evolution in practice and show that structured labeling helps people label more consistently in the presence of concept evolution than traditional labeling.
机译:标记数据是培训许多机器学习系统所需的看似简单的任务,但实际上充满了问题。本文介绍了概念演变的概念,一个人的潜在概念的变化性质(目标类的抽象概念一个人是标签,例如,垃圾邮件,旅行相关网页),这可能导致标签不一致,因此是对机器学习有害。我们介绍了两种结构化标签解决方案,这是一种新颖的技术,我们提出帮助人们以一致的方式定义和改进他们的概念。通过一系列五项实验,包括受控实验室研究,我们说明了概念演化的影响和动态在实践中,表明结构化标签在概念演变的情况下比传统标签更加持续帮助人们标签。

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