How Well Do Large Language Models Truly Ground?Download PDF

Anonymous

16 Dec 2023ACL ARR 2023 December Blind SubmissionReaders: Everyone
TL;DR: We propose a stricter grounding definition, introduce a new dataset and metric to measure under the definition, and provide insights from testing across various LLMs.
Abstract: To reduce issues like hallucinations and lack of control in Large Language Models (LLMs), a common method is to generate responses by grounding on external contexts given as input, known as knowledge-augmented models. However, previous research often narrowly defines "grounding" as just having the correct answer, which does not ensure the reliability of the entire response. To overcome this, we propose a stricter definition of grounding: a model is truly grounded if it (1) fully utilizes the necessary knowledge from the provided context, and (2) stays within the limits of that knowledge. We introduce a new dataset and a grounding metric to evaluate model capability under the definition. We perform experiments across 25 LLMs of different sizes and training methods and provide insights into factors that influence grounding performance. Our findings contribute to a better understanding of how to improve grounding capabilities and suggest an area of improvement toward more reliable and controllable LLM applications.
Paper Type: long
Research Area: NLP Applications
Contribution Types: Model analysis & interpretability
Languages Studied: English
0 Replies

Loading