Abstract Meaning Representation-Based Logic-Driven Data Augmentation for Logical Reasoning
Qiming Bao, Alex Yuxuan Peng, Zhenyun Deng, Wanjun Zhong, Gael, Gendron, Timothy Pistotti, Neset Tan, Nathan Young, Yang Chen, Yonghua Zhu,, Paul Denny, Michael Witbrock, Jiamou Liu

TL;DR
This paper introduces AMR-LDA, a logic-driven data augmentation method using Abstract Meaning Representation to improve logical reasoning in large language models, showing significant performance gains on multiple tasks.
Contribution
The paper presents a novel AMR-based data augmentation approach that enhances logical reasoning capabilities of language models across various tasks.
Findings
Improved performance on seven downstream tasks.
Achieved top results on the ReClor leaderboard.
Effective augmentation for both generative and discriminative models.
Abstract
Combining large language models with logical reasoning enhances their capacity to address problems in a robust and reliable manner. Nevertheless, the intricate nature of logical reasoning poses challenges when gathering reliable data from the web to build comprehensive training datasets, subsequently affecting performance on downstream tasks. To address this, we introduce a novel logic-driven data augmentation approach, AMR-LDA. AMR-LDA converts the original text into an Abstract Meaning Representation (AMR) graph, a structured semantic representation that encapsulates the logical structure of the sentence, upon which operations are performed to generate logically modified AMR graphs. The modified AMR graphs are subsequently converted back into text to create augmented data. Notably, our methodology is architecture-agnostic and enhances both generative large language models, such as…
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Code & Models
- 🤗qbao775/AMR-LE-DeBERTa-V2-XXLarge-Contrapositionmodel· ♡ 1♡ 1
- 🤗qbao775/AMR-LE-DeBERTa-V2-XXLarge-Contraposition-Double-Negationmodel· 3 dl· ♡ 13 dl♡ 1
- 🤗qbao775/AMR-LE-DeBERTa-V2-XXLarge-Contraposition-Double-Negation-Implicationmodel· 1 dl· ♡ 11 dl♡ 1
- 🤗qbao775/AMR-LE-DeBERTa-V2-XXLarge-Contraposition-Double-Negation-Implication-Commutativemodel· 4 dl· ♡ 14 dl♡ 1
- 🤗qbao775/AMR-LE-DeBERTa-V2-XXLarge-Contraposition-Double-Negation-Implication-Commutative-Pos-Neg-1-2model· 1 dl· ♡ 11 dl♡ 1
- 🤗qbao775/AMR-LE-DeBERTa-V2-XXLarge-Contraposition-Double-Negation-Implication-Commutative-Pos-Neg-1-3model· 2 dl· ♡ 12 dl♡ 1
Videos
Taxonomy
TopicsTopic Modeling · Natural Language Processing Techniques · Machine Learning in Healthcare
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