Reporting LLM Prompting in Automated Software Engineering: A Guideline Based on Current Practices and Expectations
收藏Zenodo2026-04-14 更新2026-05-26 收录
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https://zenodo.org/doi/10.5281/zenodo.16101751
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资源简介:
This replication package provides the following files:
File
Description
extraction_evaluation.ipynb
Our evaluation of the data extraction, including code to generate the diagrams shown in the paper.
survey_evaluation.ipynb
Our evaluation of the survey, including code to generate the diagrams shown in the paper.
statistics_evaluation.ipynv
Our statistical evaluation of the survey.
filtering_recall.xlsx
Our evaluation comparing the LLM-based paper filtering to the manual ground truth.
extraction_data_e1_counts.csv
The LLMs used in the papers (extraction question E1), sorted by number of occurrences descending.
extraction_data.csv
The complete dataset from the data extraction.
extraction_round2_data.csv
The complete dataset from the 2nd round of the data extraction (validation round).
llm_strings.csv
A list of DOIs and the corresponding extracted LLMs from the data extraction (used for processing in the evaluation).
llms_extracted_merged.csv
A manual extraction of information from llm_strings.csv, separated into model, version, variant, size. Duplicates were merged, and a count was added. Sorted descending by count.
llms_extracted.csv
A manual extraction of information from llm_strings.csv, separated into model, version, variant, size.
survey_data.csv
The complete dataset from the survey.
survey_questions.csv
The survey questions linked to their IDs and question type.
include_exclude_papers_v3.txt
The final version of our prompt used for paper filtering.
pe_techniques.txt
A list of all extracted PE techniques including the number of occurrences, sorted descending.
survey_questionnaire.pdf
A printout of the online survey we conducted.
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Zenodo创建时间:
2025-07-18



