Shivashankar Subramanian, Ioana Baldini, et al.
IAAI 2020
Prior knowledge plays a critical role in decision-making, and humans preserve such knowledge in the form of natural language (NL). To emulate real-world decision-making, artificial agents should incorporate such generic knowledge into their decisionmaking framework through NL. However, since policy learning with NL-based action representation is intractable due to NL’s combinatorial complexity, previous studies have limited agents’ expressive power to only a specific environment, which sacrificed the generalization ability to other environments. This paper proposes a new environmentagnostic action framework, the languagebased general action template (L-GAT). We design action templates on the basis of general semantic schemes (FrameNet, VerbNet, and WordNet), facilitating the agent in finding a plausible action in a given state by using prior knowledge while covering broader types of actions in a general manner. Our experiment using 18 text-based games showed that our proposed L-GAT agent which uses the same actions across games, achieved a performance competitive with agents that rely on gamespecific actions. We have published the code at https://github.com/kohilin/lgat.
Shivashankar Subramanian, Ioana Baldini, et al.
IAAI 2020
Kevin Gu, Eva Tuecke, et al.
ICML 2024
Gabriele Picco, Lam Thanh Hoang, et al.
EMNLP 2021
Sara Rosenthal, Pepa Atanasova, et al.
ACL-IJCNLP 2021