CLLGOct 27, 2023

ArcheType: A Novel Framework for Open-Source Column Type Annotation using Large Language Models

arXiv:2310.18208v332 citationsh-index: 11Has Code
Originality Highly original
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This addresses the limitations of existing deep-learning CTA methods, which require fixed types, large training data, and high inference costs, by providing a zero-shot solution that improves performance on novel datasets.

The paper tackles the problem of semantic column type annotation (CTA) by introducing ArcheType, a framework that uses large language models for zero-shot CTA, achieving new state-of-the-art performance on benchmarks and outperforming a fine-tuned SOTA model when combined with classical techniques.

Existing deep-learning approaches to semantic column type annotation (CTA) have important shortcomings: they rely on semantic types which are fixed at training time; require a large number of training samples per type and incur large run-time inference costs; and their performance can degrade when evaluated on novel datasets, even when types remain constant. Large language models have exhibited strong zero-shot classification performance on a wide range of tasks and in this paper we explore their use for CTA. We introduce ArcheType, a simple, practical method for context sampling, prompt serialization, model querying, and label remapping, which enables large language models to solve CTA problems in a fully zero-shot manner. We ablate each component of our method separately, and establish that improvements to context sampling and label remapping provide the most consistent gains. ArcheType establishes a new state-of-the-art performance on zero-shot CTA benchmarks (including three new domain-specific benchmarks which we release along with this paper), and when used in conjunction with classical CTA techniques, it outperforms a SOTA DoDuo model on the fine-tuned SOTAB benchmark. Our code is available at https://github.com/penfever/ArcheType.

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