Explanatory machine learning for sequential human teaching
Lun Ai, Johannes Langer, Stephen H. Muggleton, Ute Schmid

TL;DR
This paper investigates how the order of concept presentation and machine-learned explanations influence human comprehension in sequential learning tasks, demonstrating benefits of curriculum design and explanation support.
Contribution
It introduces a framework for understanding the effects of sequential teaching and provides empirical evidence on the benefits of curriculum order and explanations for human learning.
Findings
Sequential teaching with increasing complexity improves comprehension.
Explanations facilitate re-discovery of problem-solving strategies.
Machine-learned explanations enhance human problem-solving performance.
Abstract
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…
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Taxonomy
TopicsLogic, Reasoning, and Knowledge · Advanced Algebra and Logic · Semantic Web and Ontologies
