论文标题

有益和有害的解释机学习

Beneficial and Harmful Explanatory Machine Learning

论文作者

Ai, Lun, Muggleton, Stephen H., Hocquette, Céline, Gromowski, Mark, Schmid, Ute

论文摘要

鉴于AI中深度学习的最新成功,人们对机器学习理论的作用和需求的兴趣增加了。在这种情况下,一个独特的概念是Michie对超强机器学习(USML)的定义。 USML是通过向人类提供的符号机器学习理论的任务绩效理论的可衡量人类绩效的可测量提高来证明的。最近的一篇论文证明了机器学习的逻辑理论对分类任务的有益效果,但是据我们所知,没有现有的工作研究了机器在学习过程中对人类理解的潜在有害性。本文在简单的两个人游戏的背景下调查了机器学习理论的解释性效果,并提出了一个框架,以确定基于认知科学文献的机器解释的有害性。该方法涉及一个由两个可量化界限组成的认知窗口,并由人类试验收集的经验证据支持。我们的定量和定性结果表明,人类的学习在满足认知窗口的符号机器学理论的帮助下,其性能明显高于人类的自我学习。结果还表明,人类的学习得到了符号机器学习理论的帮助,该理论无法满足该窗口的表现,而与无助的人类学习相比,性能明显差。

Given the recent successes of Deep Learning in AI there has been increased interest in the role and need for explanations in machine learned theories. A distinct notion in this context is that of Michie's definition of Ultra-Strong Machine Learning (USML). USML is demonstrated by a measurable increase in human performance of a task following provision to the human of a symbolic machine learned theory for task performance. A recent paper demonstrates the beneficial effect of a machine learned logic theory for a classification task, yet no existing work to our knowledge has examined the potential harmfulness of machine's involvement for human comprehension during learning. This paper investigates the explanatory effects of a machine learned theory in the context of simple two person games and proposes a framework for identifying the harmfulness of machine explanations based on the Cognitive Science literature. The approach involves a cognitive window consisting of two quantifiable bounds and it is supported by empirical evidence collected from human trials. Our quantitative and qualitative results indicate that human learning aided by a symbolic machine learned theory which satisfies a cognitive window has achieved significantly higher performance than human self learning. Results also demonstrate that human learning aided by a symbolic machine learned theory that fails to satisfy this window leads to significantly worse performance than unaided human learning.

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