The rapid growth of Deep Neural Networks (DNNs) has brought substantial advances in artificial intelligence across domains such as vision, language, and recommendation systems. However, this progress comes at a steep energy cost, with model training and deployment contributing significantly to global computational energy consumption. Understanding what drives this energy demand requires more than empirical correlation- it demands causal explanations. In this work, we investigate the causal factors underlying energy use in DNN training, using structure learning algorithms such as the PC algorithm to derive candidate causal graphs. Recognising the limitations of such methods-particularly in terms of assumptions and finite data-we introduce a novel approach to evaluate each inferred link through formal argumentation. We treat each proposed causal relationship as a dialectical object, generating arguments and counterarguments that articulate its plausibility, underlying mechanisms, and possible confounders. We operationalise this reasoning using large language models in a zero-shot prompting setup, surfacing the evidential and conceptual assumptions behind each causal claim. This hybrid approach, combining causal discovery with structured argumentative evaluation, promotes interpretability and critical scrutiny in data-driven causal modelling. Preliminary results demonstrate its potential for rendering causal claims more transparent and contestable.

Early Insights into Argumentation-Guided Causal Evaluation with the Help of LLMs

Baroni P.;Cerutti F.
;
Giacomin M.;Lamperti G. F.;Zanella M.
2025-01-01

Abstract

The rapid growth of Deep Neural Networks (DNNs) has brought substantial advances in artificial intelligence across domains such as vision, language, and recommendation systems. However, this progress comes at a steep energy cost, with model training and deployment contributing significantly to global computational energy consumption. Understanding what drives this energy demand requires more than empirical correlation- it demands causal explanations. In this work, we investigate the causal factors underlying energy use in DNN training, using structure learning algorithms such as the PC algorithm to derive candidate causal graphs. Recognising the limitations of such methods-particularly in terms of assumptions and finite data-we introduce a novel approach to evaluate each inferred link through formal argumentation. We treat each proposed causal relationship as a dialectical object, generating arguments and counterarguments that articulate its plausibility, underlying mechanisms, and possible confounders. We operationalise this reasoning using large language models in a zero-shot prompting setup, surfacing the evidential and conceptual assumptions behind each causal claim. This hybrid approach, combining causal discovery with structured argumentative evaluation, promotes interpretability and critical scrutiny in data-driven causal modelling. Preliminary results demonstrate its potential for rendering causal claims more transparent and contestable.
2025
CEUR Workshop Proceedings
MIUR (compresi PRIN FIRB,FISR)
Mario Alviano, Bettina Fazzinga
PE6_7 Artificial intelligence, intelligent systems, multi agent systems
Esperti anonimi
Inglese
no
9th Workshop on Advances in Argumentation in Artificial Intelligence, AI^3 2025
2025
ita
Internazionale
ELETTRONICO
4025
9
24
16
CEUR-WS
Argumentation; Causality; LLM
   AIDECC
   CUP D53C24000530001
no
Goal 7: Affordable and clean energy
none
Baroni, P.; Cerutti, F.; Giacomin, M.; Lamperti, G. F.; Zanella, M.
273
info:eu-repo/semantics/conferenceObject
5
4 Contributo in Atti di Convegno (Proceeding)::4.1 Contributo in Atti di convegno
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11379/635025
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