Feb. 6, 2024, 5:54 a.m. | Mo Yu Qiujing Wang Shunchi Zhang Yisi Sang Kangsheng Pu Zekai Wei Han Wang Liyan Xu Ji

cs.CL updates on arXiv.org arxiv.org

When reading a story, humans can quickly understand new fictional characters with a few observations, mainly by drawing analogies to fictional and real people they already know. This reflects the few-shot and meta-learning essence of humans' inference of characters' mental states, i.e., theory-of-mind (ToM), which is largely ignored in existing research. We fill this gap with a novel NLP dataset, ToM-in-AMC, the first assessment of machines' meta-learning of ToM in a realistic narrative understanding scenario. Our dataset consists of ~1,000 …

assessment characters cs.ai cs.cl few-shot fictional characters humans inference meta meta-learning mind movies people reading story theory tom understanding

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