Establishing Trustworthiness: Rethinking Tasks and Model Evaluation (2310.05442v2)
Abstract: Language understanding is a multi-faceted cognitive capability, which the NLP community has striven to model computationally for decades. Traditionally, facets of linguistic intelligence have been compartmentalized into tasks with specialized model architectures and corresponding evaluation protocols. With the advent of LLMs the community has witnessed a dramatic shift towards general purpose, task-agnostic approaches powered by generative models. As a consequence, the traditional compartmentalized notion of language tasks is breaking down, followed by an increasing challenge for evaluation and analysis. At the same time, LLMs are being deployed in more real-world scenarios, including previously unforeseen zero-shot setups, increasing the need for trustworthy and reliable systems. Therefore, we argue that it is time to rethink what constitutes tasks and model evaluation in NLP, and pursue a more holistic view on language, placing trustworthiness at the center. Towards this goal, we review existing compartmentalized approaches for understanding the origins of a model's functional capacity, and provide recommendations for more multi-faceted evaluation protocols.
- Robert Litschko (19 papers)
- Max Müller-Eberstein (13 papers)
- Rob van der Goot (38 papers)
- Leon Weber (7 papers)
- Barbara Plank (130 papers)