Maria Di Maro


2024

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Estimating Commonsense Knowledge from a Linguistic Analysis on Information Distribution
Sabrina Mennella | Maria Di Maro | Martina Di Bratto
Proceedings of the Sixth International Conference on Computational Linguistics in Bulgaria (CLIB 2024)

Commonsense Knowledge (CSK) is defined as a complex and multifaceted structure, encompassing a wide range of knowledge and reasoning generally acquired through everyday experiences. As CSK is often implicit in communication, it poses a challenge for AI systems to simulate human-like interaction. This work aims to deepen the CSK information structure from a linguistic perspective, starting from its organisation in conversations. To achieve this goal, we developed a three-level analysis model to extract more insights about this knowledge, focusing our attention on the second level. In particular, we aimed to extract the distribution of explicit actions and their execution order in the communicative flow. We built an annotation scheme based on FrameNet and applied it to a dialogical corpus on the culinary domain. Preliminary results indicate that certain frames occur earlier in the dialogues, while others occur towards the process’s end. These findings contribute to the systematic nature of actions by establishing clear patterns and relationships between frames.

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Taking Decisions in a Hybrid Conversational AI Architecture Using Influence Diagrams
Roberto Basile Giannini | Antonio Origlia | Maria Di Maro
Proceedings of the 10th Italian Conference on Computational Linguistics (CLiC-it 2024)

This paper explores the application of the Influence Diagrams model for decision-making in the context of conversational agents. The system consists of a Conversational Recommender System (CoRS), in which the decision-making module is separate from the language generation module. It provides the capability to evolve a belief based on user responses, which in turn influences the decisions made by the conversational agent. The proposed system is based on a pre-existing CoRS that relies on Bayesian Networks informing a separate decision process. The introduction of Influence Diagrams aims to integrate both Bayesian inference and the dialogue move selection phase into a single model, thereby generalising the decision-making process. To test the effectiveness and plausibility of the dialogues generated by the developed CoRS, a dialogue simulator was created and the simulated interactions were evaluated by a pool of human judges.

2022

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A Multi-source Graph Representation of the Movie Domain for Recommendation Dialogues Analysis
Antonio Origlia | Martina Di Bratto | Maria Di Maro | Sabrina Mennella
Proceedings of the Thirteenth Language Resources and Evaluation Conference

In dialogue analysis, characterising named entities in the domain of interest is relevant in order to understand how people are making use of them for argumentation purposes. The movie recommendation domain is a frequently considered case study for many applications and by linguistic studies and, since many different resources have been collected throughout the years to describe it, a single database combining all these data sources is a valuable asset for cross-disciplinary investigations. We propose an integrated graph-based structure of multiple resources, enriched with the results of the application of graph analytics approaches to provide an encompassing view of the domain and of the way people talk about it during the recommendation task. While we cannot distribute the final resource because of licensing issues, we share the code to assemble and process it once the reference data have been obtained from the original sources.

2017

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Graph Databases for Designing High-Performance Speech Recognition Grammars
Maria Di Maro | Marco Valentino | Anna Riccio | Antonio Origlia
Proceedings of the 12th International Conference on Computational Semantics (IWCS) — Short papers