Despite some similarities that have been pointed out in the literature, the parallelism between automated planning and natural language processing has not been fully analysed yet. However, the success of Transformer-based models and, more generally, deep learning techniques for NLP, could open interesting research lines also for automated planning. Therefore, in this work, we investigate whether these impressive results could be transferred to planning. In particular, we study how a BERT model trained on plans computed for three well-known planning domains is able to understand how a domain works, its actions and how they are related to each other. In order to do that, we designed a variation of the typical masked language modeling task which is used for the training of BERT, and two additional experiments into which, given a sequence of consecutive actions, the model has to predict what the agent did previously (Previous Action Prediction) and what it is going to do next (Next Action Prediction).

A Preliminary Study on BERT applied to Automated Planning

Serina L.;Chiari M.;Gerevini A. E.;Putelli L.;Serina I.
2022-01-01

Abstract

Despite some similarities that have been pointed out in the literature, the parallelism between automated planning and natural language processing has not been fully analysed yet. However, the success of Transformer-based models and, more generally, deep learning techniques for NLP, could open interesting research lines also for automated planning. Therefore, in this work, we investigate whether these impressive results could be transferred to planning. In particular, we study how a BERT model trained on plans computed for three well-known planning domains is able to understand how a domain works, its actions and how they are related to each other. In order to do that, we designed a variation of the typical masked language modeling task which is used for the training of BERT, and two additional experiments into which, given a sequence of consecutive actions, the model has to predict what the agent did previously (Previous Action Prediction) and what it is going to do next (Next Action Prediction).
2022
CEUR Workshop Proceedings
Ateneo di appartenenza
Inglese
10th Italian Workshop on Planning and Scheduling, IPS 2022, RCRA Incontri E Confronti, RiCeRcA 2022, and the Workshop on Strategies, Prediction, Interaction, and Reasoning in Italy, SPIRIT 2022
2022
ita
3345
CEUR-WS
Automated Planning and Natural Language Processing; BERT; Deep Learning
no
Not applicable
none
Serina, L.; Chiari, M.; Gerevini, A. E.; Putelli, L.; Serina, I.
273
info:eu-repo/semantics/conferenceObject
5
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/11379/572374
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