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Beneficial and harmful explanatory machine learning
Ai, Lun; Muggleton, Stephen H.; Hocquette, Céline; u. a. (2021): Beneficial and harmful explanatory machine learning, in: Machine Learning, Dordrecht: Springer, Jg. 110, Nr. 4, S. 695–721, doi: 10.1007/s10994-020-05941-0.
Faculty/Chair:
Author:
Title of the Journal:
Machine learning
ISSN:
0885-6125
1573-0565
Publisher Information:
Year of publication:
2021
Volume:
110
Issue:
4
Pages:
Language:
English
Abstract:
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.
Keywords: ; ; ; ; ;
Critical Thinking
Instructional Theory
Learning Theory
Machine Learning
Symbolic AI
Artificial Intelligence
Type:
Article
Activation date:
September 13, 2021
Versioning
Question on publication
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https://fis.uni-bamberg.de/handle/uniba/51179