SAGA: A Participant-specific Examination of Story Alternatives and Goal Applicability for a Deeper Understanding of Complex Events
Interpreting and assessing goal driven actions is vital to understanding and reasoning over complex events. It is important to be able to acquire the knowledge needed for this understanding, though doing so is challenging. We argue that such knowledge can be elicited through a participant achievemen...
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Zusammenfassung: | Interpreting and assessing goal driven actions is vital to understanding and
reasoning over complex events. It is important to be able to acquire the
knowledge needed for this understanding, though doing so is challenging. We
argue that such knowledge can be elicited through a participant achievement
lens. We analyze a complex event in a narrative according to the intended
achievements of the participants in that narrative, the likely future actions
of the participants, and the likelihood of goal success. We collect 6.3K high
quality goal and action annotations reflecting our proposed participant
achievement lens, with an average weighted Fleiss-Kappa IAA of 80%. Our
collection contains annotated alternate versions of each narrative. These
alternate versions vary minimally from the "original" story, but can license
drastically different inferences. Our findings suggest that while modern large
language models can reflect some of the goal-based knowledge we study, they
find it challenging to fully capture the design and intent behind concerted
actions, even when the model pretraining included the data from which we
extracted the goal knowledge. We show that smaller models fine-tuned on our
dataset can achieve performance surpassing larger models. |
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DOI: | 10.48550/arxiv.2408.05793 |