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PIQA: Reasoning about Physical Commonsense in Natural Language

Mixed citation behavior. Most common role is background (56%).

28 Pith papers citing it
Background 56% of classified citations
abstract

To apply eyeshadow without a brush, should I use a cotton swab or a toothpick? Questions requiring this kind of physical commonsense pose a challenge to today's natural language understanding systems. While recent pretrained models (such as BERT) have made progress on question answering over more abstract domains - such as news articles and encyclopedia entries, where text is plentiful - in more physical domains, text is inherently limited due to reporting bias. Can AI systems learn to reliably answer physical common-sense questions without experiencing the physical world? In this paper, we introduce the task of physical commonsense reasoning and a corresponding benchmark dataset Physical Interaction: Question Answering or PIQA. Though humans find the dataset easy (95% accuracy), large pretrained models struggle (77%). We provide analysis about the dimensions of knowledge that existing models lack, which offers significant opportunities for future research.

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Showing 5 of 5 citing papers after filters.

  • Language Models are Few-Shot Learners cs.CL · 2020-05-28 · accept · none · ref 5 · internal anchor

    GPT-3 shows that scaling an autoregressive language model to 175 billion parameters enables strong few-shot performance across diverse NLP tasks via in-context prompting without fine-tuning.

  • LoopUS: Recasting Pretrained LLMs into Looped Latent Refinement Models cs.LG · 2026-05-10 · unverdicted · none · ref 58 · internal anchor

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  • A Switch-Centric In-Network Architecture for Accelerating LLM Inference in Shared-Memory Network cs.AR · 2026-03-30 · unverdicted · none · ref 13 · internal anchor

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  • Yi: Open Foundation Models by 01.AI cs.CL · 2024-03-07 · unverdicted · none · ref 5 · internal anchor

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  • Small Language Models (SLMs) Can Still Pack a Punch: A survey (updated 2026) cs.CL · 2025-01-03 · unverdicted · none · ref 13 · internal anchor

    A literature survey of Small Language Models (1-8B parameters) that can perform comparably or better than larger models, covering general-purpose and task-specific approaches plus creation techniques.