Fuzzy Temporal Protoforms for the Quantitative Description of Processes in Natural Language

TítuloFuzzy Temporal Protoforms for the Quantitative Description of Processes in Natural Language
AutoresYago Fontenla-Seco, Alberto Bugarín-Diz, Manuel Lama
TipoComunicación para congreso
Fonte 2021 IEEE International Conference on Fuzzy Systems, Luxemburo, Luxemburgo, 2021.
ISBN978-1-6654-4407-1
DOI10.1109/FUZZ45933.2021.9494444
AbstractIn this paper, we propose a series of fuzzy temporal protoforms in the framework of the automatic generation of quantitative and qualitative natural language descriptions of processes. The model includes temporal and causal information from processes and attributes, quantifies attributes in time during the process life-span and recalls causal relations and temporal distances between events, among other features. Through integrating process mining techniques and fuzzy sets within the usual Data-to-Text architecture, our framework is able to extract relevant quantitative temporal as well as structural information from a process and describe it in natural language involving uncertain terms. A real use-case in the cardiology domain is presented, showing the potential of our model for providing natural language explanations addressed to domain experts.
Palabras chaveProcess mining, Protoforms, Linguistic Description of Data, Natural Language Generation