Transformer-Gather, Fuzzy-Reconsider: A Scalable Hybrid Framework for Entity Resolution
This provides a practical solution for enterprise-level data integrity auditing, though it appears incremental as it combines existing techniques (pre-trained language models and fuzzy matching) in a hybrid approach.
The paper tackles entity resolution for enterprise data integrity by introducing a scalable hybrid framework that combines semantic embeddings with fuzzy string matching, achieving high retrieval recall of approximately 0.97 while maintaining efficiency on standard CPU infrastructure.
Entity resolution plays a significant role in enterprise systems where data integrity must be rigorously maintained. Traditional methods often struggle with handling noisy data or semantic understanding, while modern methods suffer from computational costs or the excessive need for parallel computation. In this study, we introduce a scalable hybrid framework, which is designed to address several important problems, including scalability, noise robustness, and reliable results. We utilized a pre-trained language model to encode each structured data into corresponding semantic embedding vectors. Subsequently, after retrieving a semantically relevant subset of candidates, we apply a syntactic verification stage using fuzzy string matching techniques to refine classification on the unlabeled data. This approach was applied to a real-world entity resolution task, which exposed a linkage between a central user management database and numerous shared hosting server records. Compared to other methods, this approach exhibits an outstanding performance in terms of both processing time and robustness, making it a reliable solution for a server-side product. Crucially, this efficiency does not compromise results, as the system maintains a high retrieval recall of approximately 0.97. The scalability of the framework makes it deployable on standard CPU-based infrastructure, offering a practical and effective solution for enterprise-level data integrity auditing.