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This project is part of the
@thi.ng/umbrella monorepo.
About
N-dimensional distance metrics & K-nearest neighborhoods for point queries.
Distance metrics
The package provides the
IDistance
interface for custom distance metric implementations & conversions from/to raw
distance values. The following preset metrics are provided too:
Preset | Number | nD | 2D | 3D | Comments |
---|
EUCLEDIAN | | ✅ | | | Eucledian distance |
EUCLEDIAN1 | ✅ | | | | |
EUCLEDIAN2 | | | ✅ | | |
EUCLEDIAN3 | | | | ✅ | |
HAVERSINE_LATLON | | | ✅ | | Great-circle distance for lat/lon geo locations |
HAVERSINE_LONLAT | | | ✅ | | Great-circle distance for lon/lat geo locations |
DIST_SQ | | ✅ | | | Squared dist (avoids Math.sqrt ) |
DIST_SQ1 | ✅ | | | | |
DIST_SQ2 | | | ✅ | | |
DIST_SQ3 | | | | ✅ | |
defManhattan(n) | | ✅ | | | Manhattan distance |
MANHATTAN2 | | | ✅ | | |
MANHATTAN3 | | | | ✅ | |
Neighborhoods
Neighborhoods can be used to select n-D spatial items around a given target
location and an optional catchment radius (infinite by default). Neighborhoods
also use one of the given distance metrics and implement the widely used
IDeref
interface to obtain the final query results.
Custom neighborhood selections can be defined via the
INeighborhood
interface. Currently, there are two different implementations available, each
providing several factory functions to instantiate and provide defaults for
different dimensions. See documentation and examples below.
Nearest
An INeighborhood
implementation for nearest neighbor queries around a given
target location, initial query radius and IDistance
metric to determine
proximity.
KNearest
An INeighborhood
implementation for K-nearest neighbor queries around a given
target location, initial query radius and IDistance
metric to determine
proximity. The K-nearest neighbors will be accumulated via an internal
heap and
results can be optionally returned in order of proximity (via .deref()
or
.values()
). For K=1 it will be more efficient to use Nearest
to avoid the
additional overhead.
Status
STABLE - used in production
Search or submit any issues for this package
Work is underway integrating this approach into the spatial indexing data
structures provided by the
@thi.ng/geom-accel
package.
Related packages
- @thi.ng/geom-accel - n-D spatial indexing data structures with a shared ES6 Map/Set-like API
- @thi.ng/k-means - Configurable k-means & k-medians (with k-means++ initialization) for n-D vectors
- @thi.ng/vectors - Optimized 2d/3d/4d and arbitrary length vector operations
Installation
yarn add @thi.ng/distance
ES module import:
<script type="module" src="https://cdn.skypack.dev/@thi.ng/distance"></script>
Skypack documentation
For Node.js REPL:
# with flag only for < v16
node --experimental-repl-await
> const distance = await import("@thi.ng/distance");
Package sizes (gzipped, pre-treeshake): ESM: 1.20 KB
Dependencies
API
Generated API docs
import * as d from "@thi.ng/distance";
const items = { a: 5, b: 16, c: 9.5, d: 2, e: 12 };
const k = d.knearestN(10, 3);
Object.entries(items).forEach(([id, x]) => k.consider(x, id));
k.deref()
k.values()
const k2 = d.knearestN(10, 3, 5, d.EUCLEDIAN1, true);
Object.entries(items).forEach(([id, x]) => k2.consider(x, id));
k2.deref()
Authors
Karsten Schmidt
If this project contributes to an academic publication, please cite it as:
@misc{thing-distance,
title = "@thi.ng/distance",
author = "Karsten Schmidt",
note = "https://thi.ng/distance",
year = 2021
}
License
© 2021 Karsten Schmidt // Apache Software License 2.0