Text Encoders Lack Knowledge: Leveraging Generative Llms For Domain-specific Semantic Textual Similarity · The Large Language Model Bible Contribute to LLM-Bible

Text Encoders Lack Knowledge: Leveraging Generative Llms For Domain-specific Semantic Textual Similarity

Gatto Joseph, Sharif Omar, Seegmiller Parker, Bohlman Philip, Preum Sarah Masud. Arxiv 2023

[Paper]    
GPT Model Architecture Prompting RAG Reinforcement Learning

Amidst the sharp rise in the evaluation of large language models (LLMs) on various tasks, we find that semantic textual similarity (STS) has been under-explored. In this study, we show that STS can be cast as a text generation problem while maintaining strong performance on multiple STS benchmarks. Additionally, we show generative LLMs significantly outperform existing encoder-based STS models when characterizing the semantic similarity between two texts with complex semantic relationships dependent on world knowledge. We validate this claim by evaluating both generative LLMs and existing encoder-based STS models on three newly collected STS challenge sets which require world knowledge in the domains of Health, Politics, and Sports. All newly collected data is sourced from social media content posted after May 2023 to ensure the performance of closed-source models like ChatGPT cannot be credited to memorization. Our results show that, on average, generative LLMs outperform the best encoder-only baselines by an average of 22.3% on STS tasks requiring world knowledge. Our results suggest generative language models with STS-specific prompting strategies achieve state-of-the-art performance in complex, domain-specific STS tasks.

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