• Home
  • Categories
  • Tags
  • Pricing
  • Submit
  1. Home
  2. Concepts & Definitions
  3. K-means Tree

K-means Tree

K-means Tree is a clustering-based data structure that organizes high-dimensional vectors for fast similarity search and retrieval. It is used as an indexing method in some vector databases to optimize performance for vector search operations.

🌐Visit Website

About this tool

K-means Tree

Category: Concepts & Definitions
Tags: clustering, data-structure, similarity-search, high-dimensional

Description

K-means Tree is a clustering-based data structure designed to organize high-dimensional vectors for efficient similarity search and retrieval. It is commonly used as an indexing method in vector databases to optimize the performance of vector search operations.

Features

  • Clustering-based Structure: Organizes data points hierarchically using k-means clustering at each node to partition the data set.
  • Efficient Similarity Search: Enables fast nearest neighbor search by recursively narrowing down the search space to relevant clusters.
  • Scalable to High Dimensions: Designed to handle high-dimensional vector data, which is common in applications like image retrieval, recommendation systems, and natural language processing.
  • Indexing Method: Used as an indexing method in vector databases to accelerate vector search and retrieval tasks.
  • Supports Approximate Search: Can be used for approximate nearest neighbor search, trading off some accuracy for significant speed improvements, especially in high-dimensional settings.
  • Optimized for Performance: Reduces the number of distance computations required for similarity search, leading to faster query times compared to brute-force methods.

Use Cases

  • Vector search in databases
  • Image, text, and multimedia retrieval
  • Recommendation systems
  • Machine learning and data mining tasks involving high-dimensional data

References

  • Wikipedia: k-d tree

Note: No pricing information is provided, as this is a concept/data structure rather than a commercial product or service.

Surveys

Loading more......

Information

Websiteen.wikipedia.org
PublishedMay 13, 2025

Categories

1 Item
Concepts & Definitions

Tags

4 Items
#clustering
#data structure
#similarity search
#high-dimensional

Similar Products

6 result(s)
Foundations of Multidimensional and Metric Data Structures

Technical book covering theory and practice of multidimensional and metric data structures for similarity search, forming a theoretical basis for index structures used in vector databases.

Locality-Sensitive Hashing

Locality-Sensitive Hashing (LSH) is an algorithmic technique for approximate nearest neighbor search in high-dimensional vector spaces, commonly used in vector databases to speed up similarity search while reducing memory footprint.

IDEA

IDEA is an inverted, deduplication-aware index structure designed to improve storage efficiency and query performance for similarity search workloads. It is implemented as research code and targets high-dimensional vector and content-addressable data, making it relevant to large-scale vector database and ANN indexing systems.

OasysDB

OasysDB is an open-source vector database focused on efficient similarity search and management of high-dimensional data.

Vexvault

Vexvault is an open-source vector database designed for efficient storage, management, and similarity search of high-dimensional vector data.

NMSLIB

NMSLIB is an efficient similarity search library and toolkit for high-dimensional vector spaces, supporting a variety of indexing algorithms for vector database use cases.

Built with
Ever Works
Ever Works

Connect with us

Stay Updated

Get the latest updates and exclusive content delivered to your inbox.

Product

  • Categories
  • Tags
  • Pricing
  • Help

Clients

  • Sign In
  • Register
  • Forgot password?

Company

  • About Us
  • Admin
  • Sitemap

Resources

  • Blog
  • Submit
  • API Documentation
All product names, logos, and brands are the property of their respective owners. All company, product, and service names used in this repository, related repositories, and associated websites are for identification purposes only. The use of these names, logos, and brands does not imply endorsement, affiliation, or sponsorship. This directory may include content generated by artificial intelligence.
Copyright © 2025 Acme. All rights reserved.·Terms of Service·Privacy Policy·Cookies