Ahmetoglu, A.Celik, B.Öztop, ErhanUğur, E.2024-02-232024-02-232024-02-012377-3766http://hdl.handle.net/10679/9210https://doi.org/10.1109/LRA.2024.3350994In this letter, we propose and realize a new deep learning architecture for discovering symbolic representations for objects and their relations based on the self-supervised continuous interaction of a manipulator robot with multiple objects in a tabletop environment. The key feature of the model is that it can take a changing number of objects as input and map the object-object relations into symbolic domain explicitly. In the model, we employ a self-attention layer that computes discrete attention weights from object features, which are treated as relational symbols between objects. These relational symbols are then used to aggregate the learned object symbols and predict the effects of executed actions on each object. The result is a pipeline that allows the formation of object symbols and relational symbols from a dataset of object features, actions, and effects in an end-to-end manner. We compare the performance of our proposed architecture with state-of-the-art symbol discovery methods in a simulated tabletop environment where the robot needs to discover symbols related to the relative positions of objects to predict the action's result. Our experiments show that the proposed architecture performs better than other baselines in effect prediction while forming not only object symbols but also relational symbols.enginfo:eu-repo/semantics/restrictedAccessDiscovering predictive relational object symbols with symbolic attentive layersArticle921977198410.1109/LRA.2024.3350994Deep learning methodsDevelopmental roboticsLearning categories and concepts2-s2.0-85182377256