CLJun 1, 2023

Column Type Annotation using ChatGPT

arXiv:2306.00745v233 citationsh-index: 63
AI Analysis

This work addresses data integration challenges in data lakes by providing a competitive, low-resource solution for column type annotation, though it is incremental as it applies an existing model to a new task.

The authors tackled column type annotation by exploring ChatGPT in zero- and few-shot settings, achieving F1 scores over 85% with minimal examples, compared to a fine-tuned RoBERTa model requiring 356 examples for similar performance.

Column type annotation is the task of annotating the columns of a relational table with the semantic type of the values contained in each column. Column type annotation is an important pre-processing step for data search and data integration in the context of data lakes. State-of-the-art column type annotation methods either rely on matching table columns to properties of a knowledge graph or fine-tune pre-trained language models such as BERT for column type annotation. In this work, we take a different approach and explore using ChatGPT for column type annotation. We evaluate different prompt designs in zero- and few-shot settings and experiment with providing task definitions and detailed instructions to the model. We further implement a two-step table annotation pipeline which first determines the class of the entities described in the table and depending on this class asks ChatGPT to annotate columns using only the relevant subset of the overall vocabulary. Using instructions as well as the two-step pipeline, ChatGPT reaches F1 scores of over 85% in zero- and one-shot setups. To reach a similar F1 score a RoBERTa model needs to be fine-tuned with 356 examples. This comparison shows that ChatGPT is able deliver competitive results for the column type annotation task given no or only a minimal amount of task-specific demonstrations.

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