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Estimating Commonsense Plausibility through Semantic Shifts

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Commonsense plausibility estimation is critical for evaluating language models (LMs), yet existing generative approaches--reliant on likelihoods or verbalized judgments--struggle with fine-grained discrimination. In this paper, we propose ComPaSS, a novel discriminative framework that quantifies commonsense plausibility by measuring semantic shifts when augmenting sentences with commonsense-related information. Plausible augmentations induce minimal shifts in semantics, while implausible ones result in substantial deviations. Evaluations on two types of fine-grained commonsense plausibility estimation tasks across different backbones, including LLMs and vision-language models (VLMs), show that ComPaSS consistently outperforms baselines. It demonstrates the advantage of discriminative approaches over generative methods in fine-grained commonsense plausibility evaluation. Experiments also show that (1) VLMs yield superior performance to LMs, when integrated with ComPaSS, on vision-grounded commonsense tasks. (2) contrastive pre-training sharpens backbone models' ability to capture semantic nuances, thereby further enhancing ComPaSS.

Wanqing Cui, Wei Huang, Keping Bi, Jiafeng Guo, Xueqi Cheng• 2025

Related benchmarks

TaskDatasetResultRank
Commonsense Plausibility Estimation (Attribute Ranking)CoDa
Spearman's ρ62.87
15
Visual Commonsense Attribute RankingViComTe
Color Score51.73
15
Commonsense Plausibility Estimation (Free-form Text)CFC
Spearman Correlation (ρ)49.01
14
Binary comparison for commonsense plausibilityCoDa 1.0 (test)
Accuracy95.39
5
Binary comparison for commonsense plausibilityViComTe Shape 1.0 (test)
Accuracy94.33
5
Binary comparison for commonsense plausibilityViComTe Material 1.0 (test)
Accuracy91.27
5
Binary comparison for commonsense plausibilityViComTe Color 1.0 (test)
Accuracy93.29
5
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