Durys, BartoszTomczyk, Arkadiusz2023-09-212023-09-212023Durys B., Tomczyk A., Improvement of Attention Mechanism Explainability in Prediction of Chemical Molecules’ Properties. W: Progress in Polish Artificial Intelligence Research 4, Wojciechowski A. (Ed.), Lipiński P. (Ed.)., Seria: Monografie Politechniki Łódzkiej Nr. 2437, Wydawnictwo Politechniki Łódzkiej, Łódź 2023, s. 119-124, ISBN 978-83-66741-92-8, doi: 10.34658/9788366741928.17.978-83-66741-92-8http://hdl.handle.net/11652/4792https://doi.org/10.34658/9788366741928.17In this paper, the analysis of selected graph neural network operators is presented. The classic Graph Convolutional Network (GCN) was compared with methods containing trainable attention coefficients: Graph Attention Network (GAT) and Graph Transformer (GT). Moreover, which is an original contribution of this work, training of GT was modified with an additional loss function component enabling easier explainability of the produced model. The experiments were conducted using datasets with chemical molecules where both classification and regression tasks are considered. The results show that additional constraint not only does not make the results worse but, in some cases, it improves predictions.enDla wszystkich w zakresie dozwolonego użytkuFair use conditionattention mechanismgraph transformergraph neural networkexplainabilitychemical moleculesmechanizm uwagitransformator grafowygrafowa sieć neuronowawyjaśnialnośćcząsteczki chemiczneImprovement of Attention Mechanism Explainability in Prediction of Chemical Molecules’ PropertiesRozdział - monografiaLicencja PŁLUT License10.34658/9788366741928.17