LGAISep 8, 2023

Zero-Shot Robustification of Zero-Shot Models

arXiv:2309.04344v233 citationsh-index: 8
Originality Incremental advance
AI Analysis

This addresses robustness issues in zero-shot models for users relying on pretrained models without training, though it is incremental as it builds on existing zero-shot methods.

The paper tackles the problem of inherited biases in zero-shot models, which undermines their robustness without fine-tuning, and proposes RoboShot to improve worst group accuracy by 15.98% on average across nine tasks with minimal overall accuracy loss.

Zero-shot inference is a powerful paradigm that enables the use of large pretrained models for downstream classification tasks without further training. However, these models are vulnerable to inherited biases that can impact their performance. The traditional solution is fine-tuning, but this undermines the key advantage of pretrained models, which is their ability to be used out-of-the-box. We propose RoboShot, a method that improves the robustness of pretrained model embeddings in a fully zero-shot fashion. First, we use language models (LMs) to obtain useful insights from task descriptions. These insights are embedded and used to remove harmful and boost useful components in embeddings -- without any supervision. Theoretically, we provide a simple and tractable model for biases in zero-shot embeddings and give a result characterizing under what conditions our approach can boost performance. Empirically, we evaluate RoboShot on nine image and NLP classification tasks and show an average improvement of 15.98% on worst group accuracy, with trivial decrease in overall accuracy over several zero-shot baselines. Additionally, we demonstrate that RoboShot is compatible with a variety of pretrained and language models and propose a way to further boost performance with a zero-shot adaptation variant.

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