IX Congreso Internacional de Inteligencia Artificial y Reconocimiento de Patrones IWAIPR 2025
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Opening Lecture: IA Alliance Network
Andrei NeznamovHecho
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A Methodology for the Generation and Evaluation of Tabular Synthetic Data: A Case Study in Data Analysis in Intensive Care Units
Rafael Bello PérezHecho
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lzcomplexity: an entropy measures library
Efrén Aragón PérezHecho
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Fast Continuous Wavelet Transform (fCWT) at the edge: enabling the fCWT computation in ARM Cortex cores
Alejandro Iglesias GutiérrezHecho
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Track 4: AI Methods, Systems, and Biosignals. Part One
Rafael Esteban Bello PérezHecho
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A straigforward method for the optimisation of the electricity operating cost of a water desalination plant under a variable tariff
Deivis Avila PratsHecho
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Threshold Estimation for CNNs in Multi-label Historical Press Classification via Particle Swarm Optimization
Orlando Grabiel Toledano-LópezHecho
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Convolutional Neural Network for Burst Detection in Water Pipes
Christian Fernández LealHecho
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Exploring the correlation between the type of music and the emotions evoked: A study using subjective questionnaires and EEG
Fernando Alonso-FernandezHecho
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Forecasting Electrical Demand with zero-shot Lag Llama and TimesFM V2.
Darián Santiago Llanes-GuilarteHecho
Although heralded as one of the strengths in AI, raw data supply to artificial intelligence for training
has proven to be a mixed bag of successes and failures. While its attractiveness stems from the
simplicity, where a minimum a priori inference on the data has to be done, the risk is that during
training, the AI machinery focuses on non-relevant collateral patterns, which undiscovered biases in
the training data can drive. There are some infamous examples of failures in health diagnosis and
image recognition. An alternative is to abandon the idea of feeding raw data, and instead, identify
and extract relevant variables from it that can be fed to the AI engine as the sole source of training
or used as part of the training information. Furthermore, this preliminary stage can also be subject to
a non-supervised process. While this approach is not new, it still lacks general frameworks robust
enough to be used in a wealth of areas with minimum specialisation. In this talk, we will present a
framework, developed by our group, that has been used in various contexts and has proven its
robust nature and effective performance. The framework is based on information theory. It will be
explained, and examples will be given in health applications, neuroscience, and dynamical theory