Goal Recognition (GR) consists of recognising the goal of an agent from partial observations. The state of the art on particular planning domains is represented by GRNet, a model based on Recurrent Neural Networks that solves GR as a classification task. Compared to automated planning, the need for large training sets is the main disadvantage of these approaches. Therefore, we formalise a loss regularisation technique to reduce the number of training samples needed, to reduce the convergence time, and to increase the performance in GR instances with a small percentage of observations. We empirically evaluate its effectiveness through extensive experiments.

Regularised Loss Function for Goal Recognition as a Deep Learning Task

Olivato, Matteo
;
Chiari, Mattia;Serina, Lorenzo;Borelli, Valerio;Tummolo, Massimiliano;Serina, Ivan;Rossetti, Nicholas;Gerevini, Alfonso Emilio
2026-01-01

Abstract

Goal Recognition (GR) consists of recognising the goal of an agent from partial observations. The state of the art on particular planning domains is represented by GRNet, a model based on Recurrent Neural Networks that solves GR as a classification task. Compared to automated planning, the need for large training sets is the main disadvantage of these approaches. Therefore, we formalise a loss regularisation technique to reduce the number of training samples needed, to reduce the convergence time, and to increase the performance in GR instances with a small percentage of observations. We empirically evaluate its effectiveness through extensive experiments.
2026
Lecture Notes in Computer Science
Ateneo di appartenenza
Inglese
34th International Conference on Artificial Neural Networks, ICANN 2025
2025
ltu
16068
570
581
12
9783032045577
Springer Science and Business Media Deutschland GmbH
Automated Planning; Convergence Time; Deep Learning; Goal Recognition; Loss Regularisation; Partial Observations; Recurrent Neural Networks; Training Sample Reduction;
no
Goal 9: Industry, Innovation, and Infrastructure
Goal 13: Climate action
open
Olivato, Matteo; Chiari, Mattia; Serina, Lorenzo; Borelli, Valerio; Tummolo, Massimiliano; Serina, Ivan; Rossetti, Nicholas; Gerevini, Alfonso Emilio...espandi
273
info:eu-repo/semantics/conferenceObject
8
4 Contributo in Atti di Convegno (Proceeding)::4.1 Contributo in Atti di convegno
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11379/632345
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