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Main Authors: Jassim, Serwan, Holubar, Mario, Richter, Annika, Wolff, Cornelius, Ohmer, Xenia, Bruni, Elia
Format: Preprint
Published: 2023
Subjects:
Online Access:https://arxiv.org/abs/2311.09048
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author Jassim, Serwan
Holubar, Mario
Richter, Annika
Wolff, Cornelius
Ohmer, Xenia
Bruni, Elia
author_facet Jassim, Serwan
Holubar, Mario
Richter, Annika
Wolff, Cornelius
Ohmer, Xenia
Bruni, Elia
contents This paper presents GRASP, a novel benchmark to evaluate the language grounding and physical understanding capabilities of video-based multimodal large language models (LLMs). This evaluation is accomplished via a two-tier approach leveraging Unity simulations. The first level tests for language grounding by assessing a model's ability to relate simple textual descriptions with visual information. The second level evaluates the model's understanding of "Intuitive Physics" principles, such as object permanence and continuity. In addition to releasing the benchmark, we use it to evaluate several state-of-the-art multimodal LLMs. Our evaluation reveals significant shortcomings in the language grounding and intuitive physics capabilities of these models. Although they exhibit at least some grounding capabilities, particularly for colors and shapes, these capabilities depend heavily on the prompting strategy. At the same time, all models perform below or at the chance level of 50% in the Intuitive Physics tests, while human subjects are on average 80% correct. These identified limitations underline the importance of using benchmarks like GRASP to monitor the progress of future models in developing these competencies.
format Preprint
id arxiv_https___arxiv_org_abs_2311_09048
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle GRASP: A novel benchmark for evaluating language GRounding And Situated Physics understanding in multimodal language models
Jassim, Serwan
Holubar, Mario
Richter, Annika
Wolff, Cornelius
Ohmer, Xenia
Bruni, Elia
Computation and Language
This paper presents GRASP, a novel benchmark to evaluate the language grounding and physical understanding capabilities of video-based multimodal large language models (LLMs). This evaluation is accomplished via a two-tier approach leveraging Unity simulations. The first level tests for language grounding by assessing a model's ability to relate simple textual descriptions with visual information. The second level evaluates the model's understanding of "Intuitive Physics" principles, such as object permanence and continuity. In addition to releasing the benchmark, we use it to evaluate several state-of-the-art multimodal LLMs. Our evaluation reveals significant shortcomings in the language grounding and intuitive physics capabilities of these models. Although they exhibit at least some grounding capabilities, particularly for colors and shapes, these capabilities depend heavily on the prompting strategy. At the same time, all models perform below or at the chance level of 50% in the Intuitive Physics tests, while human subjects are on average 80% correct. These identified limitations underline the importance of using benchmarks like GRASP to monitor the progress of future models in developing these competencies.
title GRASP: A novel benchmark for evaluating language GRounding And Situated Physics understanding in multimodal language models
topic Computation and Language
url https://arxiv.org/abs/2311.09048