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Auteurs principaux: Shichman, Mollie, Bonial, Claire, Blodgett, Austin, Hudson, Taylor, Ferraro, Francis, Rudinger, Rachel
Format: Preprint
Publié: 2025
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Accès en ligne:https://arxiv.org/abs/2502.18452
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author Shichman, Mollie
Bonial, Claire
Blodgett, Austin
Hudson, Taylor
Ferraro, Francis
Rudinger, Rachel
author_facet Shichman, Mollie
Bonial, Claire
Blodgett, Austin
Hudson, Taylor
Ferraro, Francis
Rudinger, Rachel
contents During Human Robot Interactions in disaster relief scenarios, Large Language Models (LLMs) have the potential for substantial physical reasoning to assist in mission objectives. However, these reasoning capabilities are often found only in larger models, which are not currently reasonable to deploy on robotic systems due to size constraints. To meet our problem space requirements, we introduce a dataset and pipeline to create Field Reasoning and Instruction Decoding Agent (FRIDA) models. In our pipeline, domain experts and linguists combine their knowledge to make high-quality, few-shot prompts used to generate synthetic data for fine-tuning. We hand-curate datasets for this few-shot prompting and for evaluation to improve LLM reasoning on both general and disaster-specific objects. We concurrently run an ablation study to understand which kinds of synthetic data most affect performance. We fine-tune several small instruction-tuned models and find that ablated FRIDA models only trained on objects' physical state and function data outperformed both the FRIDA models trained on all synthetic data and the base models in our evaluation. We demonstrate that the FRIDA pipeline is capable of instilling physical common sense with minimal data.
format Preprint
id arxiv_https___arxiv_org_abs_2502_18452
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle FRIDA to the Rescue! Analyzing Synthetic Data Effectiveness in Object-Based Common Sense Reasoning for Disaster Response
Shichman, Mollie
Bonial, Claire
Blodgett, Austin
Hudson, Taylor
Ferraro, Francis
Rudinger, Rachel
Computation and Language
Artificial Intelligence
During Human Robot Interactions in disaster relief scenarios, Large Language Models (LLMs) have the potential for substantial physical reasoning to assist in mission objectives. However, these reasoning capabilities are often found only in larger models, which are not currently reasonable to deploy on robotic systems due to size constraints. To meet our problem space requirements, we introduce a dataset and pipeline to create Field Reasoning and Instruction Decoding Agent (FRIDA) models. In our pipeline, domain experts and linguists combine their knowledge to make high-quality, few-shot prompts used to generate synthetic data for fine-tuning. We hand-curate datasets for this few-shot prompting and for evaluation to improve LLM reasoning on both general and disaster-specific objects. We concurrently run an ablation study to understand which kinds of synthetic data most affect performance. We fine-tune several small instruction-tuned models and find that ablated FRIDA models only trained on objects' physical state and function data outperformed both the FRIDA models trained on all synthetic data and the base models in our evaluation. We demonstrate that the FRIDA pipeline is capable of instilling physical common sense with minimal data.
title FRIDA to the Rescue! Analyzing Synthetic Data Effectiveness in Object-Based Common Sense Reasoning for Disaster Response
topic Computation and Language
Artificial Intelligence
url https://arxiv.org/abs/2502.18452