<?xml version="1.0" encoding="utf-8" standalone="yes"?><rss version="2.0" xmlns:atom="http://www.w3.org/2005/Atom"><channel><title>7 | Adrian Arnaiz-Rodriguez</title><link>https://adrianarnaiz.me/publication-type/7/</link><atom:link href="https://adrianarnaiz.me/publication-type/7/index.xml" rel="self" type="application/rss+xml"/><description>7</description><generator>Wowchemy (https://wowchemy.com)</generator><language>en-us</language><lastBuildDate>Fri, 26 Sep 2025 00:00:00 +0000</lastBuildDate><image><url>https://adrianarnaiz.me/media/avatar.jpg</url><title>7</title><link>https://adrianarnaiz.me/publication-type/7/</link></image><item><title>A Sociotechnical Approach to Trustworthy AI: from Algorithms to Regulation</title><link>https://adrianarnaiz.me/publication/2025-09-phdthesis/</link><pubDate>Fri, 26 Sep 2025 00:00:00 +0000</pubDate><guid>https://adrianarnaiz.me/publication/2025-09-phdthesis/</guid><description>&lt;h3 id="-phd-thesis-evaluated-with-the-highest-honors-cum-laude-by-isabel-valera-saarland-university-ciro-cattuto-isi-foundation-and-germán-gonzález-serrano-university-of-alicante">🏅 Ph.D. thesis evaluated with the highest honors (cum laude) by Isabel Valera (Saarland University), Ciro Cattuto (ISI Foundation), and Germán González Serrano (University of Alicante).&lt;/h3>
&lt;blockquote>
&lt;p>Read Adrian&amp;rsquo;s PhD thesis: &lt;a href="https://ellisalicante.org/publications/arnaiz2025thesis-en/" target="_blank" rel="noopener">&lt;em>PDF&lt;/em>&lt;/a>.
See Adrian&amp;rsquo;s thesis defense presentation (2026/09/26): &lt;a href="https://vertice.cpd.ua.es/308319" target="_blank" rel="noopener">&lt;em>Video&lt;/em>&lt;/a>.&lt;/p>
&lt;/blockquote>
&lt;h2 id="summary">Summary&lt;/h2>
&lt;p>This thesis advances a &lt;strong>sociotechnical framework&lt;/strong> for effectively implementing &lt;strong>Trustworthy Artificial Intelligence (TAI)&lt;/strong> by aligning &lt;strong>algorithmic techniques&lt;/strong>, &lt;strong>human oversight&lt;/strong>, and &lt;strong>regulatory practice&lt;/strong> throughout the AI lifecycle. It focuses on &lt;strong>AI-induced harms&lt;/strong> and their mitigation through:&lt;/p>
&lt;ul>
&lt;li>
&lt;p>&lt;strong>Algorithmic contributions&lt;/strong>&lt;/p>
&lt;ul>
&lt;li>&lt;strong>FairShap&lt;/strong>: a novel &lt;em>instance-level data valuation&lt;/em> method that measures each training example’s contribution to group-fairness metrics, enabling deeper diagnosis and mitigation of discrimination in high-risk decision-making and supporting &lt;strong>EU AI Act&lt;/strong> auditing obligations.&lt;/li>
&lt;li>&lt;strong>ERG&lt;/strong>: a &lt;em>graph-based method&lt;/em> to quantify and reduce &lt;strong>structural disparities in social capital&lt;/strong> within networks, relevant to &lt;strong>systemic risk&lt;/strong> assessments under the &lt;strong>EU Digital Services Act&lt;/strong>.&lt;/li>
&lt;/ul>
&lt;/li>
&lt;li>
&lt;p>&lt;strong>Human–AI complementarity&lt;/strong>&lt;/p>
&lt;ul>
&lt;li>A framework for &lt;strong>collaborative decision-making&lt;/strong> in high-stakes &lt;strong>matching&lt;/strong> tasks that jointly optimizes algorithmic decisions and &lt;strong>bandit-based&lt;/strong> hand-off to humans—aiming to outperform humans or algorithms alone while adhering to TAI principles of robustness, oversight, and harm minimization.&lt;/li>
&lt;/ul>
&lt;/li>
&lt;li>
&lt;p>&lt;strong>Governance &amp;amp; law&lt;/strong>&lt;/p>
&lt;ul>
&lt;li>An analysis of &lt;strong>AI for worker management&lt;/strong> under &lt;strong>Spanish labor law&lt;/strong>, mapping legal duties across the lifecycle, and highlighting tensions such as &lt;strong>correlation-based&lt;/strong> ML vs. legal requirements for &lt;strong>causal justification&lt;/strong> in certain decisions.&lt;/li>
&lt;/ul>
&lt;/li>
&lt;/ul>
&lt;p>Overall, the thesis argues that achieving TAI requires viewing &lt;strong>trustworthiness as an emergent property&lt;/strong> of &lt;strong>sociotechnical systems&lt;/strong>—the interplay of &lt;strong>data, algorithms, institutions, and regulation&lt;/strong>—and provides practical guidance for &lt;strong>researchers, practitioners, and policymakers&lt;/strong>.&lt;/p>
&lt;h2 id="main-publications-discussed-in-the-thesis">Main publications discussed in the thesis&lt;/h2>
&lt;ul>
&lt;li>
&lt;p>&lt;strong>AO24&lt;/strong> — Arnaiz-Rodriguez, A., &amp;amp; Oliver, N. (2024).&lt;br>
&lt;em>Towards Algorithmic Fairness by means of Instance-level Data Re-weighting based on Shapley Values.&lt;/em> DMLR @ ICLR 2024.&lt;br>
Link: &lt;a href="https://openreview.net/forum?id=ivf1QaxEGQ">https://openreview.net/forum?id=ivf1QaxEGQ&lt;/a>&lt;/p>
&lt;/li>
&lt;li>
&lt;p>&lt;strong>ACO25&lt;/strong> — Arnaiz-Rodriguez, A., Curto Rex, G., &amp;amp; Oliver, N. (2025).&lt;br>
&lt;em>Structural Group Unfairness: Measurement and Mitigation by Means of the Effective Resistance.&lt;/em> ICWSM 2025, 19(1), 83–106.&lt;br>
Link: &lt;a href="https://doi.org/10.1609/icwsm.v19i1.35805">https://doi.org/10.1609/icwsm.v19i1.35805&lt;/a>&lt;/p>
&lt;/li>
&lt;li>
&lt;p>&lt;strong>ACTOG25&lt;/strong> — Arnaiz-Rodriguez, A., Corvelo, N., Thejaswi, S., Oliver, N., &amp;amp; Gomez-Rodriguez, M. (2025).&lt;br>
&lt;em>Towards Human–AI Complementarity in Matching Tasks.&lt;/em> HLDM @ ECML-PKDD 2025.&lt;br>
Link: &lt;a href="https://arxiv.org/abs/2508.13285">https://arxiv.org/abs/2508.13285&lt;/a>&lt;/p>
&lt;/li>
&lt;li>
&lt;p>&lt;strong>AL24a&lt;/strong> — Arnaiz-Rodriguez, A., and Losada Carreño, J. (2024).
(EN: &lt;em>The Intersection of Trustworthy AI and Labour Law. A Legal and Technical Study from a Tripartite Taxonomy&lt;/em>) &lt;em>La intersección de la IA fiable y el Derecho del Trabajo. Un estudio jurídico y técnico desde una taxonomía tripartita&lt;/em>. Revista General de Derecho del Trabajo y de la Seguridad Social, Iustel, 69. [Iustel]
Link: &lt;a href="https://www.iustel.com/v2/revistas/detalle_revista.asp?id_noticia=427491">https://www.iustel.com/v2/revistas/detalle_revista.asp?id_noticia=427491&lt;/a>&lt;/p>
&lt;/li>
&lt;li>
&lt;p>&lt;strong>AL24b&lt;/strong> — Arnaiz-Rodriguez, A., and Losada Carreño, J. (2024).
(EN: &lt;em>Studying Causality in Algorithmic Decision Making: the Impact of AI in the Business Domain&lt;/em>) &lt;em>Estudio de la causalidad en la toma de decisiones algorítmicas: el impacto de la IA en el ámbito empresarial&lt;/em>. Revista Internacional y Comparada de Relaciones Laborales y Derecho del Empleo, ADAPT, 12(3).
Link: &lt;a href="https://ejcls.adapt.it/index.php/rlde_adapt/issue/view/105">https://ejcls.adapt.it/index.php/rlde_adapt/issue/view/105&lt;/a>&lt;/p>
&lt;/li>
&lt;/ul>
&lt;h2 id="supporting-publications">Supporting publications&lt;/h2>
&lt;ul>
&lt;li>
&lt;p>&lt;strong>ABEO22&lt;/strong> — Arnaiz-Rodriguez, A., Begga, A., Escolano, F., &amp;amp; Oliver, N. (2022).&lt;br>
&lt;em>DiffWire: Inductive Graph Rewiring via the Lovász Bound.&lt;/em> LoG 2022, PMLR 198:15:1–15:27.&lt;br>
Link: &lt;a href="https://proceedings.mlr.press/v198/arnaiz-rodri-guez22a.html">https://proceedings.mlr.press/v198/arnaiz-rodri-guez22a.html&lt;/a>&lt;/p>
&lt;/li>
&lt;li>
&lt;p>&lt;strong>AE25&lt;/strong> — Arnaiz-Rodriguez, A., &amp;amp; Errica, F. (2025).&lt;br>
&lt;em>Oversmoothing, “Oversquashing”, Heterophily, Long-Range, and more: Demystifying Common Beliefs in Graph Machine Learning.&lt;/em> MLG @ ECML-PKDD 2025 (Best paper).&lt;br>
Preprint: &lt;a href="https://arxiv.org/abs/2505.15547">https://arxiv.org/abs/2505.15547&lt;/a>&lt;/p>
&lt;/li>
&lt;/ul>
&lt;h2 id="tutorials">Tutorials&lt;/h2>
&lt;ul>
&lt;li>
&lt;p>&lt;strong>ABEOH22&lt;/strong> — Arnaiz-Rodriguez, A., Begga, A., Escolano, F., Oliver, N., &amp;amp; Hancock, E. (2022).&lt;br>
&lt;em>Graph Rewiring: From Theory to Applications in Fairness.&lt;/em> Tutorial @ LoG 2022.
Link: &lt;a href="https://ellisalicante.org/tutorials/GraphRewiring">https://ellisalicante.org/tutorials/GraphRewiring&lt;/a>&lt;/p>
&lt;/li>
&lt;li>
&lt;p>&lt;strong>AV24&lt;/strong> — Arnaiz-Rodriguez, A., &amp;amp; Velingker, A. (2024).&lt;br>
&lt;em>Graph Learning: Principles, Challenges, and Open Directions.&lt;/em> Tutorial @ ICML 2024.&lt;br>
Link: &lt;a href="https://icml.cc/virtual/2024/tutorial/35233">https://icml.cc/virtual/2024/tutorial/35233&lt;/a>&lt;/p>
&lt;/li>
&lt;/ul>
&lt;h2 id="other-publications-not-included-in-the-thesis">Other publications not included in the thesis&lt;/h2>
&lt;ul>
&lt;li>&lt;strong>SAHO25&lt;/strong> — Schweighofer, K., Arnaiz-Rodriguez, A., Hochreiter, S., &amp;amp; Oliver, N. M. (2025).&lt;br>
&lt;em>The Disparate Benefits of Deep Ensembles.&lt;/em> ICML.&lt;br>
Preprint: &lt;a href="https://arxiv.org/abs/2410.13831">https://arxiv.org/abs/2410.13831&lt;/a>&lt;/li>
&lt;/ul>
&lt;h2 id="defense-video">Defense video&lt;/h2>
&lt;ul>
&lt;li>&lt;strong>Defense of the Doctoral Thesis&lt;/strong> — University of Alicante, &lt;em>26/09/2025&lt;/em>, 10:30.&lt;br>
Video: &lt;a href="https://vertice.cpd.ua.es/308319">https://vertice.cpd.ua.es/308319&lt;/a>&lt;/li>
&lt;/ul></description></item></channel></rss>