Lexically-constrained Text Generation through Commonsense Knowledge Extraction and Injection
Yikang Li, Pulkit Goel, Varsha Kuppur Rajendra, Har Simrat Singh,, Jonathan Francis, Kaixin Ma, Eric Nyberg, Alessandro Oltramari

TL;DR
This paper improves lexically-constrained text generation by integrating commonsense knowledge from Conceptnet into a language model, resulting in more semantically accurate and human-like sentences that meet lexical constraints.
Contribution
It introduces a novel approach to enhance text generation by injecting commonsense relations into a language model and enforcing lexical constraints, improving semantic correctness.
Findings
Commonsense injection improves semantic alignment with human understanding.
The method maintains lexical constraints while enhancing sentence quality.
Ablation studies confirm the effectiveness of commonsense relation integration.
Abstract
Conditional text generation has been a challenging task that is yet to see human-level performance from state-of-the-art models. In this work, we specifically focus on the Commongen benchmark, wherein the aim is to generate a plausible sentence for a given set of input concepts. Despite advances in other tasks, large pre-trained language models that are fine-tuned on this dataset often produce sentences that are syntactically correct but qualitatively deviate from a human understanding of common sense. Furthermore, generated sequences are unable to fulfill such lexical requirements as matching part-of-speech and full concept coverage. In this paper, we explore how commonsense knowledge graphs can enhance model performance, with respect to commonsense reasoning and lexically-constrained decoding. We propose strategies for enhancing the semantic correctness of the generated text, which we…
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Taxonomy
TopicsTopic Modeling · Natural Language Processing Techniques · Multimodal Machine Learning Applications
