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Bibliographic Details
Main Authors: Husillos, J. C., Gallego, A., Roma, A., Troncoso, A.
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2506.07185
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author Husillos, J. C.
Gallego, A.
Roma, A.
Troncoso, A.
author_facet Husillos, J. C.
Gallego, A.
Roma, A.
Troncoso, A.
contents In this paper, we present a novel learning approach based on Neurovectors, an innovative paradigm that structures information through interconnected nodes and vector relationships for tabular data processing. Unlike traditional artificial neural networks that rely on weight adjustment through backpropagation, Neurovectors encode information by structuring data in vector spaces where energy propagation, rather than traditional weight updates, drives the learning process, enabling a more adaptable and explainable learning process. Our method generates dynamic representations of knowledge through neurovectors, thereby improving both the interpretability and efficiency of the predictive model. Experimental results using datasets from well-established repositories such as the UCI machine learning repository and Kaggle are reported both for classification and regression. To evaluate its performance, we compare our approach with standard machine learning and deep learning models, showing that Neurovectors achieve competitive accuracy.
format Preprint
id arxiv_https___arxiv_org_abs_2506_07185
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Learning based on neurovectors for tabular data: a new neural network approach
Husillos, J. C.
Gallego, A.
Roma, A.
Troncoso, A.
Machine Learning
In this paper, we present a novel learning approach based on Neurovectors, an innovative paradigm that structures information through interconnected nodes and vector relationships for tabular data processing. Unlike traditional artificial neural networks that rely on weight adjustment through backpropagation, Neurovectors encode information by structuring data in vector spaces where energy propagation, rather than traditional weight updates, drives the learning process, enabling a more adaptable and explainable learning process. Our method generates dynamic representations of knowledge through neurovectors, thereby improving both the interpretability and efficiency of the predictive model. Experimental results using datasets from well-established repositories such as the UCI machine learning repository and Kaggle are reported both for classification and regression. To evaluate its performance, we compare our approach with standard machine learning and deep learning models, showing that Neurovectors achieve competitive accuracy.
title Learning based on neurovectors for tabular data: a new neural network approach
topic Machine Learning
url https://arxiv.org/abs/2506.07185