Graph-Based Vector Search: An Experimental Evaluation of the State-of-the-Art

Published: 12 Jun 2025, Last Modified: 06 Jul 2025VecDB 2025EveryoneRevisionsBibTeXCC BY 4.0
Keywords: Graph-based Vector Search, Approximate Nearest Neighbors, Similarity Search
Abstract: Vector data is prevalent across business and scientific applications, and its popularity is growing with the proliferation of learned embeddings. Vector data collections often reach billions of vectors with thousands of dimensions, thus, increasing the complexity of their analysis. Vector search is the backbone of many critical analytical tasks, and graph-based methods have become the best choice for analytical tasks that do not require guarantees on the quality of the answers. Although several paradigms (seed selection, incremental insertion, neighborhood propagation, neighborhood diversification, and divide-and-conquer) have been employed to design in-memory graph-based vector search algorithms, a systematic comparison of the key algorithmic advances is still missing. We conduct an exhaustive experimental evaluation of twelve state-of-the-art methods on seven real data collections, with sizes up to 1 billion vectors. We share key insights about the strengths and limitations of these methods; e.g., the best approaches are typically based on incremental insertion and neighborhood diversification, and the choice of the base graph can hurt scalability. Finally, we discuss open research directions, such as the importance of devising more sophisticated data-adaptive seed selection and diversification strategies. An extended version of this work appeared in ACM SIGMOD 2025.
Submission Number: 14
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