TRANSQLATION: TRANsformer-based SQL RecommendATION
Chapter
Accepted version
Permanent lenke
https://hdl.handle.net/11250/3128259Utgivelsesdato
2023Metadata
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Originalversjon
2023 IEEE International Conference on Big Data (BigData). 2023, 4703-4711. 10.1109/BigData59044.2023.10386277Sammendrag
The exponential growth of data production emphasizes the importance of database management systems (DBMS) for managing vast amounts of data. However, the complexity of writing Structured Query Language (SQL) queries requires a diverse range of skills, which can be a challenge for many users. Different approaches are proposed to address this challenge by aiding SQL users in mitigating their skill gaps. One of these approaches is to design recommendation systems that provide several suggestions to users for writing their next SQL queries. Despite the availability of such recommendation systems, they often have several limitations, such as lacking sequenceawareness, session-awareness, and context-awareness. In this paper, we propose TRANSQLATION, a session-aware and sequenceaware recommendation system that recommends the fragments of the subsequent SQL query in a user session. We demonstrate that TRANSQLATION outperforms existing works by achieving, on average, 22% more recommendation accuracy when having a large amount of data and is still effective even when training data is limited. We further demonstrate that considering contextual similarity is a critical aspect that can enhance the accuracy and relevance of recommendations in query recommendation systems.