Publication | Closed Access
Multiscale Quantization for Fast Similarity Search
46
Citations
20
References
2017
Year
EngineeringMachine LearningUnsupervised Machine LearningImage AnalysisInformation RetrievalData ScienceData MiningPattern RecognitionQuantization MethodsSupervised LearningFeature LearningKnowledge DiscoveryLarge Scale OptimizationComputer ScienceImage SimilarityDeep LearningQuantization (Signal Processing)Product QuantizationMultiscale QuantizationMultiscale Quantization ApproachSimilarity Search
We propose a multiscale quantization approach for fast similarity search on large, high-dimensional datasets. The key insight of the approach is that quantization methods, in particular product quantization, perform poorly when there is large variance in the norms of the data points. This is a common scenario for real- world datasets, especially when doing product quantization of residuals obtained from coarse vector quantization. To address this issue, we propose a multiscale formulation where we learn a separate scalar quantizer of the residual norm scales. All parameters are learned jointly in a stochastic gradient descent framework to minimize the overall quantization error. We provide theoretical motivation for the proposed technique and conduct comprehensive experiments on two large-scale public datasets, demonstrating substantial improvements in recall over existing state-of-the-art methods.
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