The Fill-Mask Association Test (FMAT): Measuring Propositions in Natural Language
Han-Wu-Shuang Bao
Abstract:Recent advances in large language models are enabling the computational intelligent analysis of psychology in natural language. Here, the Fill-Mask Association Test (FMAT) is introduced as a novel and integrative method leveraging Masked Language Models to study and measure psychology from a propositional perspective at the societal level. The FMAT uses BERT models to compute semantic probabilities of option words filling in the masked blank of a designed query (i.e., a cloze-like contextualized sentence). The… Show more
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