论文标题

依次人类教学的解释机器学习

Explanatory machine learning for sequential human teaching

论文作者

Ai, Lun, Langer, Johannes, Muggleton, Stephen H., Schmid, Ute

论文摘要

机器学习理论的可理解性的主题最近引起了人们的关注。归纳逻辑编程(ILP)使用逻辑编程来基于绑架和诱导技术从小数据中得出逻辑理论。学到的理论以规则的形式表示为声明性的知识描述。在较早的工作中,作者提供了基于机器学习的逻辑规则来实现简单分类任务的人类理解的第一个证据。在后来的研究中,发现对人类的机器学习解释的介绍可以在游戏学习的背景下产生有益和有害影响。我们通过研究概念演示对人类理解的效果的影响来继续对可理解性的调查。在这项工作中,我们研究了课程顺序的解释性效应以及用于顺序解决问题的机器学习解释。我们表明1)存在任务A和B,使得B之前学习A之前对学习B具有更好的理解为A和2)存在A和B的任务A和B,使得在学习时的解释有助于改善人类的理解。随后学习B.我们提出了一个框架。我们提出了一个基于对人类的综合性的认识的效果,以对人类的综合性进行认识和对人类的认识的证据,并提供了对人类的认识的证据。经验结果表明,复杂性增加的概念的顺序教学a)对人类的理解具有有益的影响,b)导致人类对解决问题的解决策略的发现,以及c)研究机器学习的解释可以适应人类问题解决问题的策略。

The topic of comprehensibility of machine-learned theories has recently drawn increasing attention. Inductive Logic Programming (ILP) uses logic programming to derive logic theories from small data based on abduction and induction techniques. Learned theories are represented in the form of rules as declarative descriptions of obtained knowledge. In earlier work, the authors provided the first evidence of a measurable increase in human comprehension based on machine-learned logic rules for simple classification tasks. In a later study, it was found that the presentation of machine-learned explanations to humans can produce both beneficial and harmful effects in the context of game learning. We continue our investigation of comprehensibility by examining the effects of the ordering of concept presentations on human comprehension. In this work, we examine the explanatory effects of curriculum order and the presence of machine-learned explanations for sequential problem-solving. We show that 1) there exist tasks A and B such that learning A before B has a better human comprehension with respect to learning B before A and 2) there exist tasks A and B such that the presence of explanations when learning A contributes to improved human comprehension when subsequently learning B. We propose a framework for the effects of sequential teaching on comprehension based on an existing definition of comprehensibility and provide evidence for support from data collected in human trials. Empirical results show that sequential teaching of concepts with increasing complexity a) has a beneficial effect on human comprehension and b) leads to human re-discovery of divide-and-conquer problem-solving strategies, and c) studying machine-learned explanations allows adaptations of human problem-solving strategy with better performance.

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