DSIRSep 24, 2020

Dynamic Similarity Search on Integer Sketches

arXiv:2009.11559v12 citations
Originality Incremental advance
AI Analysis

This addresses the problem of scalable and efficient similarity search for dynamic datasets with integer sketches, representing an incremental improvement over prior methods.

The paper tackles the inefficiency of existing similarity search methods for integer sketches and dynamic datasets, proposing DyFT which achieves a 6,000x speedup and 13x memory reduction on a dataset of 216 million points.

Similarity-preserving hashing is a core technique for fast similarity searches, and it randomly maps data points in a metric space to strings of discrete symbols (i.e., sketches) in the Hamming space. While traditional hashing techniques produce binary sketches, recent ones produce integer sketches for preserving various similarity measures. However, most similarity search methods are designed for binary sketches and inefficient for integer sketches. Moreover, most methods are either inapplicable or inefficient for dynamic datasets, although modern real-world datasets are updated over time. We propose dynamic filter trie (DyFT), a dynamic similarity search method for both binary and integer sketches. An extensive experimental analysis using large real-world datasets shows that DyFT performs superiorly with respect to scalability, time performance, and memory efficiency. For example, on a huge dataset of 216 million data points, DyFT performs a similarity search 6,000 times faster than a state-of-the-art method while reducing to one-thirteenth in memory.

Code Implementations1 repo
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