Explainable Artificial Intelligence for Tabular Data: A Survey

Machine learning techniques are increasingly gaining attention due to their widespread use in various disciplines across academia and industry. Despite their tremendous success, many such techniques suffer from the “black-box” problem, which refers to situations where the data...

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Main Authors: Maria Sahakyan, Zeyar Aung, Talal Rahwan
Format: Article
Language:English
Published: IEEE 2021-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/9551946/
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author Maria Sahakyan
Zeyar Aung
Talal Rahwan
author_facet Maria Sahakyan
Zeyar Aung
Talal Rahwan
author_sort Maria Sahakyan
collection DOAJ
description Machine learning techniques are increasingly gaining attention due to their widespread use in various disciplines across academia and industry. Despite their tremendous success, many such techniques suffer from the &#x201C;black-box&#x201D; problem, which refers to situations where the data analyst is unable to explain why such techniques arrive at certain decisions. This problem has fuelled interest in Explainable Artificial Intelligence (XAI), which refers to techniques that can easily be interpreted by humans. Unfortunately, many of these techniques are not suitable for <italic>tabular data</italic>, which is surprising given the importance and widespread use of tabular data in critical applications such as finance, healthcare, and criminal justice. Also surprising is the fact that, despite the vast literature on XAI, there are still no survey articles to date that focus on tabular data. Consequently, despite the existing survey articles that cover a wide range of XAI techniques, it remains challenging for researchers working on tabular data to go through all of these surveys and extract the techniques that are suitable for their analysis. Our article fills this gap by providing a comprehensive and up-to-date survey of the XAI techniques that are relevant to tabular data. Furthermore, we categorize the references covered in our survey, indicating the type of the model being explained, the approach being used to provide the explanation, and the XAI problem being addressed. Our article is the first to provide researchers with a map that helps them navigate the XAI literature in the context of tabular data.
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spelling doaj.art-e8ca5164c25540aca9d40c37a42d17682022-12-22T01:51:14ZengIEEEIEEE Access2169-35362021-01-01913539213542210.1109/ACCESS.2021.31164819551946Explainable Artificial Intelligence for Tabular Data: A SurveyMaria Sahakyan0https://orcid.org/0000-0002-6227-6024Zeyar Aung1https://orcid.org/0000-0001-5990-9305Talal Rahwan2https://orcid.org/0000-0003-0070-0667Department of Electrical Engineering and Computer Science, Khalifa University, Abu Dhabi, United Arab EmiratesDepartment of Electrical Engineering and Computer Science, Khalifa University, Abu Dhabi, United Arab EmiratesDepartment of Computer Science, New York University Abu Dhabi (NYUAD), Abu Dhabi, United Arab EmiratesMachine learning techniques are increasingly gaining attention due to their widespread use in various disciplines across academia and industry. Despite their tremendous success, many such techniques suffer from the &#x201C;black-box&#x201D; problem, which refers to situations where the data analyst is unable to explain why such techniques arrive at certain decisions. This problem has fuelled interest in Explainable Artificial Intelligence (XAI), which refers to techniques that can easily be interpreted by humans. Unfortunately, many of these techniques are not suitable for <italic>tabular data</italic>, which is surprising given the importance and widespread use of tabular data in critical applications such as finance, healthcare, and criminal justice. Also surprising is the fact that, despite the vast literature on XAI, there are still no survey articles to date that focus on tabular data. Consequently, despite the existing survey articles that cover a wide range of XAI techniques, it remains challenging for researchers working on tabular data to go through all of these surveys and extract the techniques that are suitable for their analysis. Our article fills this gap by providing a comprehensive and up-to-date survey of the XAI techniques that are relevant to tabular data. Furthermore, we categorize the references covered in our survey, indicating the type of the model being explained, the approach being used to provide the explanation, and the XAI problem being addressed. Our article is the first to provide researchers with a map that helps them navigate the XAI literature in the context of tabular data.https://ieeexplore.ieee.org/document/9551946/Black-box modelsexplainable artificial intelligencemachine learningmodel interpretability
spellingShingle Maria Sahakyan
Zeyar Aung
Talal Rahwan
Explainable Artificial Intelligence for Tabular Data: A Survey
IEEE Access
Black-box models
explainable artificial intelligence
machine learning
model interpretability
title Explainable Artificial Intelligence for Tabular Data: A Survey
title_full Explainable Artificial Intelligence for Tabular Data: A Survey
title_fullStr Explainable Artificial Intelligence for Tabular Data: A Survey
title_full_unstemmed Explainable Artificial Intelligence for Tabular Data: A Survey
title_short Explainable Artificial Intelligence for Tabular Data: A Survey
title_sort explainable artificial intelligence for tabular data a survey
topic Black-box models
explainable artificial intelligence
machine learning
model interpretability
url https://ieeexplore.ieee.org/document/9551946/
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AT zeyaraung explainableartificialintelligencefortabulardataasurvey
AT talalrahwan explainableartificialintelligencefortabulardataasurvey