IRDBJul 15, 2018

ANN-Benchmarks: A Benchmarking Tool for Approximate Nearest Neighbor Algorithms

arXiv:1807.05614v2568 citations
Originality Synthesis-oriented
AI Analysis

This tool helps users and researchers choose and refine k-NN algorithms for similarity search tasks, though it is incremental as it builds on existing benchmarking practices.

The paper introduces ANN-Benchmarks, a tool for benchmarking approximate nearest neighbor algorithms, providing a standard interface to evaluate performance and quality across datasets, and finds that different approaches yield comparable trade-offs.

This paper describes ANN-Benchmarks, a tool for evaluating the performance of in-memory approximate nearest neighbor algorithms. It provides a standard interface for measuring the performance and quality achieved by nearest neighbor algorithms on different standard data sets. It supports several different ways of integrating $k$-NN algorithms, and its configuration system automatically tests a range of parameter settings for each algorithm. Algorithms are compared with respect to many different (approximate) quality measures, and adding more is easy and fast; the included plotting front-ends can visualise these as images, $\LaTeX$ plots, and websites with interactive plots. ANN-Benchmarks aims to provide a constantly updated overview of the current state of the art of $k$-NN algorithms. In the short term, this overview allows users to choose the correct $k$-NN algorithm and parameters for their similarity search task; in the longer term, algorithm designers will be able to use this overview to test and refine automatic parameter tuning. The paper gives an overview of the system, evaluates the results of the benchmark, and points out directions for future work. Interestingly, very different approaches to $k$-NN search yield comparable quality-performance trade-offs. The system is available at http://ann-benchmarks.com .

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The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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