描述社会视觉问答的数据集,以及新的TinySocial数据集

Zhanwen Chen, Shiyao Li, R. Rashedi, Xiaoman Zi, Morgan Elrod-Erickson, Bryan Hollis, Angela Maliakal, Xinyu Shen, Simeng Zhao, M. Kunda
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引用次数: 1

摘要

现代社会智力包括观看视频和回答与社会和心理理论相关内容的问题的能力,例如,对于《哈利波特》中的一个场景,“男孩们驾驶汽车飞行,父亲真的很难过吗?”社会视觉问答(Social visual question answer,简称Social VQA)正在成为研究人类(如自闭症儿童)和人工智能代理的社会推理的一种有价值的方法。然而,这个问题空间跨越了视频和问题的巨大变化。我们讨论了创建和描述社交VQA数据集的方法,包括1)众包与内部创作,包括我们创建的两个新数据集(TinySocial-Crowd和TinySocial-InHouse)和之前存在的social - iq数据集的样本比较;2)用于描述给定视频的难度和内容的新标题;3)一个新的题型描述。最后,我们描述了具有良好特征的社会VQA数据集将如何增强人工智能代理的可解释性,并可以为人们的评估和教育干预提供信息。
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Characterizing Datasets for Social Visual Question Answering, and the New TinySocial Dataset
Modern social intelligence includes the ability to watch videos and answer questions about social and theory-of-mind-related content, e.g., for a scene in Harry Potter, “Is the father really upset about the boys flying the car?” Social visual question answering (social VQA) is emerging as a valuable methodology for studying social reasoning in both humans (e.g., children with autism) and AI agents. However, this problem space spans enormous variations in both videos and questions. We discuss methods for creating and characterizing social VQA datasets, including 1) crowdsourcing versus in-house authoring, including sample comparisons of two new datasets that we created (TinySocial-Crowd and TinySocial-InHouse) and the previously existing Social-IQ dataset; 2) a new rubric for characterizing the difficulty and content of a given video; and 3) a new rubric for characterizing question types. We close by describing how having well-characterized social VQA datasets will enhance the explainability of AI agents and can also inform assessments and educational interventions for people.
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