Armando Suárez
Also published as: A. Suárez, Armando Suarez
2025
Systematic Evaluation of Rule-Based Analytics for LLM-Driven Graph Data Modelling
Fabio Antonio Yanez | Andrés Montoyo | Armando Suárez | Alejandro Piad-Morffis | Yudivián Almeida Cruz
Proceedings of the First Workshop on Comparative Performance Evaluation: From Rules to Language Models
Fabio Antonio Yanez | Andrés Montoyo | Armando Suárez | Alejandro Piad-Morffis | Yudivián Almeida Cruz
Proceedings of the First Workshop on Comparative Performance Evaluation: From Rules to Language Models
This paper presents a novel multi-agent system for automatically generating graph database schemas from tabular data, strategically integrating rule-based analytics with large language models (LLMs). The framework leverages a lightweight rule system to select the most suitable analytic methods based on column data types, providing targeted insights that guide schema generation.
2023
A Review in Knowledge Extraction from Knowledge Bases
Fabio Yanez | Andrés Montoyo | Yoan Gutierrez | Rafael Muñoz | Armando Suarez
Proceedings of the 14th International Conference on Recent Advances in Natural Language Processing
Fabio Yanez | Andrés Montoyo | Yoan Gutierrez | Rafael Muñoz | Armando Suarez
Proceedings of the 14th International Conference on Recent Advances in Natural Language Processing
Generative language models achieve the state of the art in many tasks within natural language processing (NLP). Although these models correctly capture syntactic information, they fail to interpret knowledge (semantics). Moreover, the lack of interpretability of these models promotes the use of other technologies as a replacement or complement to generative language models. This is the case with research focused on incorporating knowledge by resorting to knowledge bases mainly in the form of graphs. The generation of large knowledge graphs is carried out with unsupervised or semi-supervised techniques, which promotes the validation of this knowledge with the same type of techniques due to the size of the generated databases. In this review, we will explain the different techniques used to test and infer knowledge from graph structures with machine learning algorithms. The motivation of validating and inferring knowledge is to use correct knowledge in subsequent tasks with improved embeddings.
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Co-authors
- Andrés Montoyo 6
- Rubén Izquierdo 3
- Rafael Muñoz 3
- Manuel Palomar 3
- German Rigau 3
- Maximiliano Saiz-Noeda 3
- Rafael Romero 2
- Sonia Vázquez 2
- Eneko Agirre 1
- Yudivián Almeida-Cruz 1
- Cătălina Barbu 1
- Richard Evans 1
- Antonio Ferrández 1
- Miguel Ángel García-Cumbreras 1
- Manuel García-Vega 1
- Yoan Gutierrez 1
- Bernardo Magnini 1
- David Martinez Iraola 1
- M. Antònia Martí 1
- M. Teresa Martín-Valdivia 1
- Patricio Martínez-Barco 1
- Diana McCarthy 1
- Ruslan Mitkov 1
- Lidia Moreno 1
- Lluís Màrquez 1
- Iulia Nica 1
- Constantin Orasan 1
- Manual Palomar 1
- Jesús Peral 1
- Alejandro Piad-Morffis 1
- Carlo Strapparava 1
- L. Alfonso Urena Lopez 1
- Luís Villarejo 1
- Fabio Yanez 1
- Fabio Antonio Yanez 1