AI RESEARCH
Synthetic Data Generation for Training Diversified Commonsense Reasoning Models
arXiv CS.CL
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ArXi:2603.18361v1 Announce Type: new Conversational agents are required to respond to their users not only with high quality (i.e. commonsense bearing) responses, but also considering multiple plausible alternative scenarios, reflecting the diversity in their responses. Despite the growing need to train diverse commonsense generators, the progress of this line of work has been significantly hindered by the lack of large-scale high-quality diverse commonsense