Towards Personalized Similarity Search for Vector Databases
| Autoři | |
|---|---|
| Rok publikování | 2025 |
| Druh | Článek ve sborníku |
| Konference | 17th International Conference on Similarity Search and Applications (SISAP 2024) |
| Fakulta / Pracoviště MU | |
| Citace | |
| Doi | https://doi.org/10.1007/978-3-031-75823-2_11 |
| Klíčová slova | Similarity search;Personalized similarity;Vector databases |
| Popis | The importance of similarity search has become prominent in the fast-evolving vector databases, which apply content embedding techniques on complex data to produce and manage large collections of high-dimensional vectors. Processing of such data is only possible by using a similarity function for storage, structure, and retrieval. However, if multiple users access the collection, their views on similarity can differ as similarity, in general, is subjective and context-dependent. In this article, we elaborate on the problem of a similarity search engine implementation, where users use a common index but search with personalised views of similarity, implemented by a possibly different similarity model. Specifically, we define a foundational theoretical framework and conduct experiments on real-life data to confirm the viability of such an approach. The experiments also indicate future research directions needed to propose and implement an effective and efficient personalised similarity search engine. |
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