PASTA: A Dataset for Modeling PArticipant STAtes in Narratives

Author:

Ghosh Sayontan1,Koupaee Mahnaz2,Chen Isabella3,Ferraro Francis4,Chambers Nathanael5,Balasubramanian Niranjan6

Affiliation:

1. Stony Brook University, USA. sagghosh@cs.stonybrook.edu

2. Stony Brook University, USA. mkoupaee@cs.stonybrook.edu

3. Stony Brook University, USA. isabellachenusa@gmail.com

4. University of Maryland, Baltimore County, USA. ferraro@umbc.edu

5. United States Naval Academy, USA. nchamber@usna.edu

6. Stony Brook University, USA. niranjan@cs.stonybrook.edu

Abstract

Abstract The events in a narrative are understood as a coherent whole via the underlying states of their participants. Often, these participant states are not explicitly mentioned, instead left to be inferred by the reader. A model that understands narratives should likewise infer these implicit states, and even reason about the impact of changes to these states on the narrative. To facilitate this goal, we introduce a new crowdsourced English-language, Participant States dataset, PASTA. This dataset contains inferable participant states; a counterfactual perturbation to each state; and the changes to the story that would be necessary if the counterfactual were true. We introduce three state-based reasoning tasks that test for the ability to infer when a state is entailed by a story, to revise a story conditioned on a counterfactual state, and to explain the most likely state change given a revised story. Experiments show that today’s LLMs can reason about states to some degree, but there is large room for improvement, especially in problems requiring access and ability to reason with diverse types of knowledge (e.g., physical, numerical, factual).1

Publisher

MIT Press

Subject

Artificial Intelligence,Computer Science Applications,Linguistics and Language,Human-Computer Interaction,Communication

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4. Cue me in: Content-inducing approaches to interactive story generation;Brahman,2020

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