Publication
Title
Data quality and explainable AI
Author
Abstract
In this work, we provide some insights and develop some ideas, with few technical details, about the role of explanations in Data Quality in the context of data-based machine learning models (ML). In this direction, there are, as expected, roles for causality, and explainable artificial intelligence. The latter area not only sheds light on the models, but also on the data that support model construction. There is also room for defining, identifying, and explaining errors in data, in particular, in ML, and also for suggesting repair actions. More generally, explanations can be used as a basis for defining dirty data in the context of ML, and measuring or quantifying them. We think dirtiness as relative to the ML task at hand, e.g., classification.
Language
English
Source (journal)
ACM journal of data and information quality / Association for computing machinery New York. - New York (N.Y.), 2009, currens
Publication
New York (N.Y.) : ACM , 2020
ISSN
1936-1955
DOI
10.1145/3386687
Volume/pages
12 :2 (2020) , 9 p.
Article Reference
11
ISI
000582595600005
Medium
E-only publicatie
Full text (Publisher's DOI)
Full text (open access)
Full text (publisher's version - intranet only)
UAntwerpen
Faculty/Department
Research group
Publication type
Subject
Affiliation
Publications with a UAntwerp address
External links
Web of Science
Record
Identifier
Creation 30.09.2020
Last edited 26.08.2024
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