Explainability is becoming a key requirement of AI applications. Theavailability of meaningful explanations of decisions is seen as crucial to ensure awide range of system properties such as trustability, transparency, robustness, andinnovation. Our claim is that thisneed for explanationis part of a broader problemrelated to the fact that most of the current architectures lack properly devisedchannels for collecting and for propagating feedback about decisions and actions:that is, they do not envisage nor supportaccountability. The aim of this paper is toclarify the differences between the concepts of explainability and accountability,which are often (and wrongly) used interchangeably. We draw a line of thoughtseeing in accountability a key factor for innovation in AI applications, and wesuggest a paradigm shift from aneed for explanationto aneed for accountability.

Is Explanation the Real Key Factor for Innovation?

Matteo Baldoni;Cristina Baroglio;Roberto Micalizio;Stefano Tedeschi
2020-01-01

Abstract

Explainability is becoming a key requirement of AI applications. Theavailability of meaningful explanations of decisions is seen as crucial to ensure awide range of system properties such as trustability, transparency, robustness, andinnovation. Our claim is that thisneed for explanationis part of a broader problemrelated to the fact that most of the current architectures lack properly devisedchannels for collecting and for propagating feedback about decisions and actions:that is, they do not envisage nor supportaccountability. The aim of this paper is toclarify the differences between the concepts of explainability and accountability,which are often (and wrongly) used interchangeably. We draw a line of thoughtseeing in accountability a key factor for innovation in AI applications, and wesuggest a paradigm shift from aneed for explanationto aneed for accountability.
2020
Inglese
contributo
4 - Workshop
Italian Workshop on Explainable Artificial Intelligence 2020
Torino
November 25-26
Nazionale
C. Musto, D. Magazzeni, S. Ruggieri, G. Semeraro
Proceedings of the Italian Workshop on Explainable Artificial Intelligence
Comitato scientifico
CEUR-WS
Aquisgrana
GERMANIA
2742
87
95
9
http://ceur-ws.org/Vol-2742/short2.pdf
no
1 – prodotto con file in versione Open Access (allegherò il file al passo 6 - Carica)
4
info:eu-repo/semantics/conferenceObject
04-CONTRIBUTO IN ATTI DI CONVEGNO::04A-Conference paper in volume
Matteo Baldoni, Cristina Baroglio, Roberto Micalizio, Stefano Tedeschi
273
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2318/1762726
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