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When LLMs are Unfit Use FastFit: Fast and Effective Text Classification with Many Classes

FastFit integrates batch contrastive learning and token-level similarity scores to achieve fast and accurate few-shot classification across diverse datasets.

Year
2024
Venue
arXiv 2024
Authors
2
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arxiv.org/abs/2404.12365ARXIV-DEFAULT
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Abstract

We present FastFit, a method, and a Python package design to provide fast and accurate few-shot classification, especially for scenarios with many semantically similar classes. FastFit utilizes a novel approach integrating batch contrastive learning and token-level similarity score. Compared to existing few-shot learning packages, such as SetFit, Transformers, or few-shot prompting of large language models via API calls, FastFit significantly improves multiclass classification performance in speed and accuracy across FewMany, our newly curated English benchmark, and Multilingual datasets. FastFit demonstrates a 3-20x improvement in training speed, completing training in just a few seconds. The FastFit package is now available on GitHub and PyPi, presenting a user-friendly solution for NLP practitioners.

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2