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  1.  64
    Policy advice and best practices on bias and fairness in AI.Jose M. Alvarez,Alejandra Bringas Colmenarejo,Alaa Elobaid,Simone Fabbrizzi,Miriam Fahimi,Antonio Ferrara,Siamak Ghodsi,Carlos Mougan,Ioanna Papageorgiou,Paula Reyero,Mayra Russo,Kristen M. Scott,Laura State,Xuan Zhao &Salvatore Ruggieri -2024 -Ethics and Information Technology 26 (2):1-26.
    The literature addressing bias and fairness in AI models (fair-AI) is growing at a fast pace, making it difficult for novel researchers and practitioners to have a bird’s-eye view picture of the field. In particular, many policy initiatives, standards, and best practices in fair-AI have been proposed for setting principles, procedures, and knowledge bases to guide and operationalize the management of bias and fairness. The first objective of this paper is to concisely survey the state-of-the-art of fair-AI methods and resources, (...) and the main policies on bias in AI, with the aim of providing such a bird’s-eye guidance for both researchers and practitioners. The second objective of the paper is to contribute to the policy advice and best practices state-of-the-art by leveraging from the results of the NoBIAS research project. We present and discuss a few relevant topics organized around the NoBIAS architecture, which is made up of a Legal Layer, focusing on the European Union context, and a Bias Management Layer, focusing on understanding, mitigating, and accounting for bias. (shrink)
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  2.  97
    Integrating induction and deduction for finding evidence of discrimination.Salvatore Ruggieri,Dino Pedreschi &Franco Turini -2010 -Artificial Intelligence and Law 18 (1):1-43.
    We present a reference model for finding evidence of discrimination in datasets of historical decision records in socially sensitive tasks, including access to credit, mortgage, insurance, labor market and other benefits. We formalize the process of direct and indirect discrimination discovery in a rule-based framework, by modelling protected-by-law groups, such as minorities or disadvantaged segments, and contexts where discrimination occurs. Classification rules, extracted from the historical records, allow for unveiling contexts of unlawful discrimination, where the degree of burden over protected-by-law (...) groups is evaluated by formalizing existing norms and regulations in terms of quantitative measures. The measures are defined as functions of the contingency table of a classification rule, and their statistical significance is assessed, relying on a large body of statistical inference methods for proportions. Key legal concepts and reasonings are then used to drive the analysis on the set of classification rules, with the aim of discovering patterns of discrimination, either direct or indirect. Analyses of affirmative action, favoritism and argumentation against discrimination allegations are also modelled in the proposed framework. Finally, we present an implementation, called LP2DD, of the overall reference model that integrates induction, through data mining classification rule extraction, and deduction, through a computational logic implementation of the analytical tools. The LP2DD system is put at work on the analysis of a dataset of credit decision records. (shrink)
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  3.  130
    Give more data, awareness and control to individual citizens, and they will help COVID-19 containment.Mirco Nanni,Gennady Andrienko,Albert-László Barabási,Chiara Boldrini,Francesco Bonchi,Ciro Cattuto,Francesca Chiaromonte,Giovanni Comandé,Marco Conti,Mark Coté,Frank Dignum,Virginia Dignum,Josep Domingo-Ferrer,Paolo Ferragina,Fosca Giannotti,Riccardo Guidotti,Dirk Helbing,Kimmo Kaski,Janos Kertesz,Sune Lehmann,Bruno Lepri,Paul Lukowicz,Stan Matwin,David Megías Jiménez,Anna Monreale,Katharina Morik,Nuria Oliver,Andrea Passarella,Andrea Passerini,Dino Pedreschi,Alex Pentland,Fabio Pianesi,Francesca Pratesi,Salvatore Rinzivillo,Salvatore Ruggieri,Arno Siebes,Vicenc Torra,Roberto Trasarti,Jeroen van den Hoven &Alessandro Vespignani -2021 -Ethics and Information Technology 23 (S1):1-6.
    The rapid dynamics of COVID-19 calls for quick and effective tracking of virus transmission chains and early detection of outbreaks, especially in the “phase 2” of the pandemic, when lockdown and other restriction measures are progressively withdrawn, in order to avoid or minimize contagion resurgence. For this purpose, contact-tracing apps are being proposed for large scale adoption by many countries. A centralized approach, where data sensed by the app are all sent to a nation-wide server, raises concerns about citizens’ privacy (...) and needlessly strong digital surveillance, thus alerting us to the need to minimize personal data collection and avoiding location tracking. We advocate the conceptual advantage of a decentralized approach, where both contact and location data are collected exclusively in individual citizens’ “personal data stores”, to be shared separately and selectively, voluntarily, only when the citizen has tested positive for COVID-19, and with a privacy preserving level of granularity. This approach better protects the personal sphere of citizens and affords multiple benefits: it allows for detailed information gathering for infected people in a privacy-preserving fashion; and, in turn this enables both contact tracing, and, the early detection of outbreak hotspots on more finely-granulated geographic scale. The decentralized approach is also scalable to large populations, in that only the data of positive patients need be handled at a central level. Our recommendation is two-fold. First to extend existing decentralized architectures with a light touch, in order to manage the collection of location data locally on the device, and allow the user to share spatio-temporal aggregates—if and when they want and for specific aims—with health authorities, for instance. Second, we favour a longer-term pursuit of realizing a Personal Data Store vision, giving users the opportunity to contribute to collective good in the measure they want, enhancing self-awareness, and cultivating collective efforts for rebuilding society. (shrink)
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  4.  4
    The explanation dialogues: an expert focus study to understand requirements towards explanations within the GDPR.Laura State,Alejandra Bringas Colmenarejo,Andrea Beretta,Salvatore Ruggieri,Franco Turini &Stephanie Law -forthcoming -Artificial Intelligence and Law:1-60.
    Explainable AI (XAI) provides methods to understand non-interpretable machine learning models. However, we have little knowledge about what legal experts expect from these explanations, including their legal compliance with, and value against European Union legislation. To close this gap, we present the Explanation Dialogues, an expert focus study to uncover the expectations, reasoning, and understanding of legal experts and practitioners towards XAI, with a specific focus on the European General Data Protection Regulation. The study consists of an online questionnaire and (...) follow-up interviews, and is centered around a use-case in the credit domain. We extract both a set of hierarchical and interconnected codes using grounded theory, and present the standpoints of the participating experts towards XAI. We find that the presented explanations are hard to understand and lack information, and discuss issues that can arise from the different interests of the data controller and subject. Finally, we present a set of recommendations for developers of XAI methods, and indications of legal areas of discussion. Among others, recommendations address the presentation, choice, and content of an explanation, technical risks as well as the end-user, while we provide legal pointers to the contestability of explanations, transparency thresholds, intellectual property rights as well as the relationship between involved parties. (shrink)
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  5.  33
    Introduction to special issue on computational methods for enforcing privacy and fairness in the knowledge society.Sergio Mascetti,Annarita Ricci &Salvatore Ruggieri -2014 -Artificial Intelligence and Law 22 (2):109-111.
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