Tesi etd-01282026-142158 |
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Tipo di tesi
Tesi di dottorato di ricerca
Autore
DINI, LUCA
URN
etd-01282026-142158
Titolo
Human in Neural Language Models: Interpreting Encoder-Based Language Models with Cognitive Signals and New Evaluation Strategies
Settore scientifico disciplinare
INF/01 - INFORMATICA
Corso di studi
DOTTORATO NAZIONALE IN INTELLIGENZA ARTIFICIALE
Relatori
tutor Dott. Dell'Orletta, Felice
supervisore Dott.ssa Brunato, Dominique
supervisore Dott.ssa Brunato, Dominique
Parole chiave
- cognitive grounding
- discourse coherence
- eye-tracking
- interpretability
- natural language processing
- neural language models
- temporal relations
Data inizio appello
18/02/2026
Consultabilità
Completa
Riassunto
This thesis investigates interpretability in Neural Language Models (NLMs), addressing the fundamental question of how these systems represent and process linguistic information. Interpretability is framed as the study of how linguistic representations in NLMs relate to mechanisms underlying human language understanding, examined through two complementary perspectives: cognitively inspired evaluation and cognitively grounded modeling. The first perspective explores how evaluation benchmarks can function as diagnostic instruments by isolating phenomena central to human comprehension, such as temporal reasoning and discourse coherence, thus exposing the depth, structure, and limitations of the linguistic knowledge encoded in NLMs. The second perspective integrates human reading signals, in particular eye-tracking data, into model training to assess whether cognitive supervision can guide neural attention toward more human-like processing strategies. Taken together, these approaches advance interpretability beyond post hoc explanation, positioning it as a guiding principle for the design and analysis of models that are both cognitively informed and computationally effective.
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| tesi_luca_dini.pdf | 8.28 Mb |
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