CLAIFeb 20, 2024

NL2Formula: Generating Spreadsheet Formulas from Natural Language Queries

arXiv:2402.14853v1107 citationsh-index: 37Findings
Originality Synthesis-oriented
AI Analysis

This addresses a tedious and error-prone task for spreadsheet users, but it is incremental as it builds on existing sequence-to-sequence methods.

The paper tackles the problem of generating spreadsheet formulas from natural language queries to reduce user burden, introducing the NL2Formula benchmark with a dataset of 70,799 query-formula pairs and a baseline model fCoder that shows superior performance.

Writing formulas on spreadsheets, such as Microsoft Excel and Google Sheets, is a widespread practice among users performing data analysis. However, crafting formulas on spreadsheets remains a tedious and error-prone task for many end-users, particularly when dealing with complex operations. To alleviate the burden associated with writing spreadsheet formulas, this paper introduces a novel benchmark task called NL2Formula, with the aim to generate executable formulas that are grounded on a spreadsheet table, given a Natural Language (NL) query as input. To accomplish this, we construct a comprehensive dataset consisting of 70,799 paired NL queries and corresponding spreadsheet formulas, covering 21,670 tables and 37 types of formula functions. We realize the NL2Formula task by providing a sequence-to-sequence baseline implementation called fCoder. Experimental results validate the effectiveness of fCoder, demonstrating its superior performance compared to the baseline models. Furthermore, we also compare fCoder with an initial GPT-3.5 model (i.e., text-davinci-003). Lastly, through in-depth error analysis, we identify potential challenges in the NL2Formula task and advocate for further investigation.

Foundations

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