Andrea Tagarelli
2025
ME2-BERT: Are Events and Emotions what you need for Moral Foundation Prediction?
Lorenzo Zangari
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Candida M. Greco
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Davide Picca
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Andrea Tagarelli
Proceedings of the 31st International Conference on Computational Linguistics
Moralities, emotions, and events are complex aspects of human cognition, which are often treated separately since capturing their combined effects is challenging, especially due to the lack of annotated data. Leveraging their interrelations hence becomes crucial for advancing the understanding of human moral behaviors. In this work, we propose ME2-BERT, the first holistic framework for fine-tuning a pre-trained language model like BERT to the task of moral foundation prediction. ME2-BERT integrates events and emotions for learning domain-invariant morality-relevant text representations. Our extensive experiments show that ME2-BERT outperforms existing state-of-the-art methods for moral foundation prediction, with an average increase up to 35% in the out-of-domain scenario.
2024
Talking the Talk Does Not Entail Walking the Walk: On the Limits of Large Language Models in Lexical Entailment Recognition
Candida Maria Greco
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Lucio La Cava
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Andrea Tagarelli
Findings of the Association for Computational Linguistics: EMNLP 2024
Verbs form the backbone of language, providing the structure and meaning to sentences. Yet, their intricate semantic nuances pose a longstanding challenge. Understanding verb relations through the concept of lexical entailment is crucial for comprehending sentence meanings and grasping verb dynamics. This work investigates the capabilities of eight Large Language Models in recognizing lexical entailment relations among verbs through differently devised prompting strategies and zero-/few-shot settings over verb pairs from two lexical databases, namely WordNet and HyperLex. Our findings unveil that the models can tackle the lexical entailment recognition task with moderately good performance, although at varying degree of effectiveness and under different conditions. Also, utilizing few-shot prompting can enhance the models’ performance. However, perfectly solving the task arises as an unmet challenge for all examined LLMs, which raises an emergence for further research developments on this topic.
2014
Semantic-Based Multilingual Document Clustering via Tensor Modeling
Salvatore Romeo
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Andrea Tagarelli
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Dino Ienco
Proceedings of the 2014 Conference on Empirical Methods in Natural Language Processing (EMNLP)
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Co-authors
- Candida Maria Greco 1
- Candida M. Greco 1
- Dino Ienco 1
- Lucio La Cava 1
- Davide Picca 1
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