As intelligent systems increasingly blend into our everyday life, artificial social intelligence becomes a prominent area of research. Human language offers a unique unconstrained approach to probe through questions and reason through answers about social situations. This unconstrained approach extends previous attempts to model social intelligence through numeric supervision (e.g. sentiment and emotions labels). This is the cornerstone of the Social-IQ dataset. The dataset contains rigorously annotated and validated videos, questions and answers, as well as annotations for the complexity level of each question and answer. Social-IQ brings novel challenges to the field of artificial intelligence which sparks future research in social intelligence modeling, visual reasoning, and multimodal question answering.
Link to the Social-IQ dataset website: