Query Reverse Engineering of Pre-deleted Uncorrelated Operators


연구 분야: Analysis



학회: International Conference on Data Mining and Big Data


초록

Recent years have seen an increasing reliance on data processing to accomplish work tasks. However, many users do not have the programming background to write complex programs, especially query statements. Query Reverse Engineering solves the problem of deriving query statements from the database and the desired output table in reverse. SQUARES, which is based on Domain-Specific Languages (DSL), is one of the most advanced models in this field. However, the existence of uncorrelated DSL operators constrains the synthesis efficiency. This paper proposes PdQRE based on SQUARES, which improves efficiency by predicting whether DSL operators are correlated with the query statement and pre-deleting uncorrelated operators. On the test-55 dataset, the synthesis rate of PdQRE improved from 80.0% to 89.1%, and the average synthesis time was reduced from 251 s to 127 s compared to SQUARES. Comparison with Scythe et al. in the Recent posts dataset shows that PdQRE outperforms other models in Query Synthesis.


Author Profile
Quansheng Dou

School of Computer Science and Technology Kashi University 29 Xueyuan Road Kashi 844006 Xinjiang China

Andorra
Author Profile
Huixian Wang

College of Computer Science and Technology Shandong Technology and Business University P191 Binhai Middle Road Yantai 264005 Shandong China

Andorra
Author Profile
Huanling Tang

School of Information and Electronic Engineering Shandong Technology and Business University P191 Binhai Middle Road Yantai 264005 Shandong China

Andorra

📄 논문 정보

발행 연도 2024년
인용수 0
출판 국가 Andorra
사이트 Springer
좋아요 수 0

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