论文标题

众包机器教学的感知

Crowdsourcing the Perception of Machine Teaching

论文作者

Hong, Jonggi, Lee, Kyungjun, Xu, June, Kacorri, Hernisa

论文摘要

可教的界面可以通过明确提供相关的培训示例来使最终用户能够将机器学习系统置于其特质和环境中。在促进控制的同时,缺乏专业知识或误解可能会阻碍它们的有效性。我们调查了用户如何通过在亚马逊机械土耳其人中部署移动教学测试来概念化,体验和反思他们在机器教学中的参与。使用基于绩效的支付方案,机械土耳其人(n = 100)被要求实时训练,测试和重新培训可靠的识别模型,并在其环境中拍摄了一些快照。我们发现,参与者将多样性纳入了从相似之处到人类如何识别对象独立于大小,观点,位置和照明的对象的示例。他们的许多误解都涉及推理的一致性和模型能力。由于测试中的变化有限和边缘案例,大多数在第二次训练尝试中不会改变策略。

Teachable interfaces can empower end-users to attune machine learning systems to their idiosyncratic characteristics and environment by explicitly providing pertinent training examples. While facilitating control, their effectiveness can be hindered by the lack of expertise or misconceptions. We investigate how users may conceptualize, experience, and reflect on their engagement in machine teaching by deploying a mobile teachable testbed in Amazon Mechanical Turk. Using a performance-based payment scheme, Mechanical Turkers (N = 100) are called to train, test, and re-train a robust recognition model in real-time with a few snapshots taken in their environment. We find that participants incorporate diversity in their examples drawing from parallels to how humans recognize objects independent of size, viewpoint, location, and illumination. Many of their misconceptions relate to consistency and model capabilities for reasoning. With limited variation and edge cases in testing, the majority of them do not change strategies on a second training attempt.

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