Institutional black boxes pose an even greater risk than algorithmic ones in a legal context

2024
book section
article
dc.abstract.enBlack boxes in machine learning (ML) systems can be understood in at least two ways; in relation to (1) an algorithm, i.e., a decision rule, when that rule is impossible for a human to interpret, or (2) the secrecy of that rule (proprietary nature of it), due to business or economic factors. I call the first understanding "algorithmic black boxes" and the second "institutional black boxes". These two understandings are independent of each other, in particular, transparent algorithms can be part of systems that are institutional black boxes. I indicate that when it comes to the application of ML in public institutions applying the law (e.g., courts), institutional black boxes pose a particular threat to the integrity and reliability of ML systems used in such a context. I argue that in the eXplainable Artificial Intelligence trend, more attention should be paid not only to the favourable features of the algorithm (e.g., direct interpretability) but also to the business context in which the ML system is developed. Its secrecy can sabotage the transparency of even the simplest models.
dc.affiliationWydział Prawa i Administracji
dc.contributor.authorPorębski, Andrzej - 371234
dc.contributor.editorMańdziuk, Jacek
dc.contributor.editorŻychowski, Adam
dc.contributor.editorMałkiński, Mikołaj
dc.date.accession2024-09-12
dc.date.accessioned2024-09-21T09:48:15Z
dc.date.available2024-09-21T09:48:15Z
dc.date.issued2024
dc.date.openaccess0
dc.description.accesstimew momencie opublikowania
dc.description.additionalStreszcz. ang. s. 562. Bibliogr. s. 568-570. Książka posiada DOI: 10.17388/WUT.2024.0002.MiNI
dc.description.physical562-570
dc.description.versionostateczna wersja wydawcy
dc.description.volume5
dc.identifier.bookweblinkhttps://pages.mini.pw.edu.pl/~estatic/pliki/PP-RAI_2024_proceedings.pdf
dc.identifier.eisbn978-83-8156-697-1
dc.identifier.isbn978-83-8156-696-4
dc.identifier.project2022/45/N/HS5/00871 , Narodowe Centrum Nauki
dc.identifier.urihttps://ruj.uj.edu.pl/handle/item/445543
dc.identifier.weblinkhttps://pages.mini.pw.edu.pl/~estatic/pliki/PP-RAI_2024_proceedings.pdf
dc.languageeng
dc.language.containereng
dc.placeWarsaw
dc.publisherWarsaw University of Technology Press
dc.publisher.ministerialPolitechnika Warszawska
dc.rightsDodaję tylko opis bibliograficzny
dc.rights.licenceInna otwarta licencja
dc.share.typeinne
dc.source.integratorfalse
dc.subject.enAI & Law
dc.subject.enblack box
dc.subject.entransparency
dc.subject.enexplainability
dc.subject.enCOMPAS
dc.subject.eneXplainable Artificial Intelligence
dc.subject.enXAI
dc.subtypeArticle
dc.titleInstitutional black boxes pose an even greater risk than algorithmic ones in a legal context
dc.title.containerProgress in Polish artificial intelligence research
dc.typeBookSection
dspace.entity.typePublicationen
dc.abstract.en
Black boxes in machine learning (ML) systems can be understood in at least two ways; in relation to (1) an algorithm, i.e., a decision rule, when that rule is impossible for a human to interpret, or (2) the secrecy of that rule (proprietary nature of it), due to business or economic factors. I call the first understanding "algorithmic black boxes" and the second "institutional black boxes". These two understandings are independent of each other, in particular, transparent algorithms can be part of systems that are institutional black boxes. I indicate that when it comes to the application of ML in public institutions applying the law (e.g., courts), institutional black boxes pose a particular threat to the integrity and reliability of ML systems used in such a context. I argue that in the eXplainable Artificial Intelligence trend, more attention should be paid not only to the favourable features of the algorithm (e.g., direct interpretability) but also to the business context in which the ML system is developed. Its secrecy can sabotage the transparency of even the simplest models.
dc.affiliation
Wydział Prawa i Administracji
dc.contributor.author
Porębski, Andrzej - 371234
dc.contributor.editor
Mańdziuk, Jacek
dc.contributor.editor
Żychowski, Adam
dc.contributor.editor
Małkiński, Mikołaj
dc.date.accession
2024-09-12
dc.date.accessioned
2024-09-21T09:48:15Z
dc.date.available
2024-09-21T09:48:15Z
dc.date.issued
2024
dc.date.openaccess
0
dc.description.accesstime
w momencie opublikowania
dc.description.additional
Streszcz. ang. s. 562. Bibliogr. s. 568-570. Książka posiada DOI: 10.17388/WUT.2024.0002.MiNI
dc.description.physical
562-570
dc.description.version
ostateczna wersja wydawcy
dc.description.volume
5
dc.identifier.bookweblink
https://pages.mini.pw.edu.pl/~estatic/pliki/PP-RAI_2024_proceedings.pdf
dc.identifier.eisbn
978-83-8156-697-1
dc.identifier.isbn
978-83-8156-696-4
dc.identifier.project
2022/45/N/HS5/00871 , Narodowe Centrum Nauki
dc.identifier.uri
https://ruj.uj.edu.pl/handle/item/445543
dc.identifier.weblink
https://pages.mini.pw.edu.pl/~estatic/pliki/PP-RAI_2024_proceedings.pdf
dc.language
eng
dc.language.container
eng
dc.place
Warsaw
dc.publisher
Warsaw University of Technology Press
dc.publisher.ministerial
Politechnika Warszawska
dc.rights
Dodaję tylko opis bibliograficzny
dc.rights.licence
Inna otwarta licencja
dc.share.type
inne
dc.source.integrator
false
dc.subject.en
AI & Law
dc.subject.en
black box
dc.subject.en
transparency
dc.subject.en
explainability
dc.subject.en
COMPAS
dc.subject.en
eXplainable Artificial Intelligence
dc.subject.en
XAI
dc.subtype
Article
dc.title
Institutional black boxes pose an even greater risk than algorithmic ones in a legal context
dc.title.container
Progress in Polish artificial intelligence research
dc.type
BookSection
dspace.entity.typeen
Publication
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