2021
DOI: 10.1007/978-3-030-64949-4_8
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Survey of Explainable Machine Learning with Visual and Granular Methods Beyond Quasi-Explanations

Abstract: This chapter surveys and analyses visual methods of explainability of Machine Learning (ML) approaches with focus on moving from quasi-explanations that dominate in ML to actual domain-specific explanation supported by granular visuals. The importance of visual and granular methods to increase the interpretability and validity of the ML model has grown in recent years. Visuals have an appeal to human perception, which other methods do not. ML interpretation is fundamentally a human activity, not a machine acti… Show more

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Cited by 42 publications
(42 citation statements)
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“… 4. Explainable artificial intelligence : Although this literature review highlighted the importance of using white-box machine learning methods, recent literature proposes the combination of deep learning with explainable artificial intelligence techniques in the analysis of educational data ( Kovalerchuk et al, 2021 ). Specifically in learning analytics, explainable artificial intelligence is still at an initial adoption step, but researchers have already reported positive results ( Verbert et al, 2020 ; Ochoa and Wise, 2021 ).…”
Section: Discussionmentioning
confidence: 99%
“… 4. Explainable artificial intelligence : Although this literature review highlighted the importance of using white-box machine learning methods, recent literature proposes the combination of deep learning with explainable artificial intelligence techniques in the analysis of educational data ( Kovalerchuk et al, 2021 ). Specifically in learning analytics, explainable artificial intelligence is still at an initial adoption step, but researchers have already reported positive results ( Verbert et al, 2020 ; Ochoa and Wise, 2021 ).…”
Section: Discussionmentioning
confidence: 99%
“…Some ML researchers argue that the current XAI approaches fail to provide satisfactory explanations that can be well understood by humans, i.e., linked to their mental models. The term "explainability" is contrasted with "explanation" [12] and "causability" [9]. According to Kovalerchuk et al [12], a model is truly explained if a domain expert accepts it based on both empirical evidence of satisfactory accuracy and the domain knowledge/theory/reasoning, which is beyond a given dataset.…”
Section: Deficiencies Of Current Xaimentioning
confidence: 99%
“…The term "explainability" is contrasted with "explanation" [12] and "causability" [9]. According to Kovalerchuk et al [12], a model is truly explained if a domain expert accepts it based on both empirical evidence of satisfactory accuracy and the domain knowledge/theory/reasoning, which is beyond a given dataset. Instead, XAI methods generate "quasi-explanations", which refer to components and properties of data and specifics of the modelling algorithm but do not explain models in terms of domain knowledge and concepts that humans use in their reasoning.…”
Section: Deficiencies Of Current Xaimentioning
confidence: 99%
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“…An alternative methodology is mapping n-D points to 2-D graphs that preserves all n-D information [1,2,5,13]. Elliptic Paired Coordinates belong to the later.…”
Section: Introductionmentioning
confidence: 99%