| <!DOCTYPE html><html lang="en"><head><meta charset="utf-8"><meta name="viewport" content="width=device-width, initial-scale=1.0"><meta name="generator" content="rustdoc"><meta name="description" content="Source of the Rust file `/root/.cargo/git/checkouts/incubator-teaclave-crates-c8106113f74feefc/ede1f68/rusty-machine/src/learning/knn/mod.rs`."><meta name="keywords" content="rust, rustlang, rust-lang"><title>mod.rs - source</title><link rel="preload" as="font" type="font/woff2" crossorigin href="../../../../SourceSerif4-Regular.ttf.woff2"><link rel="preload" as="font" type="font/woff2" crossorigin href="../../../../FiraSans-Regular.woff2"><link rel="preload" as="font" type="font/woff2" crossorigin href="../../../../FiraSans-Medium.woff2"><link rel="preload" as="font" type="font/woff2" crossorigin href="../../../../SourceCodePro-Regular.ttf.woff2"><link rel="preload" as="font" type="font/woff2" crossorigin href="../../../../SourceSerif4-Bold.ttf.woff2"><link rel="preload" as="font" type="font/woff2" crossorigin href="../../../../SourceCodePro-Semibold.ttf.woff2"><link rel="stylesheet" href="../../../../normalize.css"><link rel="stylesheet" href="../../../../rustdoc.css" id="mainThemeStyle"><link rel="stylesheet" href="../../../../ayu.css" disabled><link rel="stylesheet" href="../../../../dark.css" disabled><link rel="stylesheet" href="../../../../light.css" id="themeStyle"><script id="default-settings" ></script><script src="../../../../storage.js"></script><script defer src="../../../../source-script.js"></script><script defer src="../../../../source-files.js"></script><script defer src="../../../../main.js"></script><noscript><link rel="stylesheet" href="../../../../noscript.css"></noscript><link rel="alternate icon" type="image/png" href="../../../../favicon-16x16.png"><link rel="alternate icon" type="image/png" href="../../../../favicon-32x32.png"><link rel="icon" type="image/svg+xml" href="../../../../favicon.svg"></head><body class="rustdoc source"><!--[if lte IE 11]><div class="warning">This old browser is unsupported and will most likely display funky things.</div><![endif]--><nav class="sidebar"><a class="sidebar-logo" href="../../../../rusty_machine/index.html"><div class="logo-container"><img class="rust-logo" src="../../../../rust-logo.svg" alt="logo"></div></a></nav><main><div class="width-limiter"><nav class="sub"><a class="sub-logo-container" href="../../../../rusty_machine/index.html"><img class="rust-logo" src="../../../../rust-logo.svg" alt="logo"></a><form class="search-form"><div class="search-container"><span></span><input class="search-input" name="search" autocomplete="off" spellcheck="false" placeholder="Click or press ‘S’ to search, ‘?’ for more options…" type="search"><div id="help-button" title="help" tabindex="-1"><a href="../../../../help.html">?</a></div><div id="settings-menu" tabindex="-1"><a href="../../../../settings.html" title="settings"><img width="22" height="22" alt="Change settings" src="../../../../wheel.svg"></a></div></div></form></nav><section id="main-content" class="content"><div class="example-wrap"><pre class="src-line-numbers"><span id="1">1</span> |
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| </pre><pre class="rust"><code><span class="doccomment">//! - k-Nearest Nerighbors |
| //! |
| //! Contains implemention of k-nearest search using |
| //! kd-tree, ball-tree and brute-force. |
| //! |
| //! # Usage |
| //! |
| //! ``` |
| //! # #[macro_use] extern crate rulinalg; extern crate rusty_machine; fn main() { |
| //! use rusty_machine::learning::knn::KNNClassifier; |
| //! use rusty_machine::learning::SupModel; |
| //! use rusty_machine::linalg::Vector; |
| //! |
| //! let data = matrix![1., 1., 1.; |
| //! 1., 2., 3.; |
| //! 2., 3., 1.; |
| //! 2., 2., 0.]; |
| //! let target = Vector::new(vec![0, 0, 1, 1]); |
| //! |
| //! // train the model to search 2-nearest |
| //! let mut knn = KNNClassifier::new(2); |
| //! knn.train(&data, &target).unwrap(); |
| //! |
| //! // predict new points |
| //! let res = knn.predict(&matrix![2., 3., 0.; 1., 1., 2.]).unwrap(); |
| //! assert_eq!(res, Vector::new(vec![1, 0])); |
| //! # } |
| //! ``` |
| </span><span class="kw">use </span>std::f64; |
| <span class="kw">use </span>std::collections::BTreeMap; |
| |
| <span class="kw">use </span>linalg::{Matrix, BaseMatrix, Vector}; |
| <span class="kw">use </span>learning::{LearningResult, SupModel}; |
| <span class="kw">use </span>learning::error::{Error, ErrorKind}; |
| |
| <span class="kw">mod </span>binary_tree; |
| <span class="kw">mod </span>brute_force; |
| |
| <span class="kw">pub use </span><span class="self">self</span>::binary_tree::{KDTree, BallTree}; |
| <span class="kw">pub use </span><span class="self">self</span>::brute_force::BruteForce; |
| |
| <span class="doccomment">/// k-Nearest Neighbor Classifier |
| </span><span class="attribute">#[derive(Debug)] |
| </span><span class="kw">pub struct </span>KNNClassifier<S: KNearestSearch> { |
| k: usize, |
| |
| searcher: S, |
| target: <span class="prelude-ty">Option</span><Vector<usize>>, |
| } |
| |
| <span class="kw">impl </span>Default <span class="kw">for </span>KNNClassifier<KDTree> { |
| <span class="doccomment">/// Constructs an untrained KNN Classifier with searching 5 neighbors. |
| /// |
| /// # Examples |
| /// |
| /// ``` |
| /// use rusty_machine::learning::knn::KNNClassifier; |
| /// let _ = KNNClassifier::default(); |
| /// ``` |
| </span><span class="kw">fn </span>default() -> <span class="self">Self </span>{ |
| KNNClassifier { |
| k: <span class="number">5</span>, |
| searcher: KDTree::default(), |
| target: <span class="prelude-val">None |
| </span>} |
| } |
| } |
| |
| <span class="kw">impl </span>KNNClassifier<KDTree> { |
| <span class="doccomment">/// Constructs an untrained KNN Classifier with specified |
| /// number of search neighbors. |
| /// |
| /// # Examples |
| /// |
| /// ``` |
| /// use rusty_machine::learning::knn::KNNClassifier; |
| /// let _ = KNNClassifier::new(3); |
| /// ``` |
| </span><span class="kw">pub fn </span>new(k: usize) -> <span class="self">Self </span>{ |
| KNNClassifier { |
| k: k, |
| searcher: KDTree::default(), |
| target: <span class="prelude-val">None |
| </span>} |
| } |
| } |
| |
| <span class="kw">impl</span><S: KNearestSearch> KNNClassifier<S> { |
| <span class="doccomment">/// Constructs an untrained KNN Classifier with specified |
| /// k and leafsize for KDTree. |
| /// |
| /// # Examples |
| /// |
| /// ``` |
| /// use rusty_machine::learning::knn::{KNNClassifier, BallTree}; |
| /// let _ = KNNClassifier::new_specified(3, BallTree::new(10)); |
| /// ``` |
| </span><span class="kw">pub fn </span>new_specified(k: usize, searcher: S) -> <span class="self">Self </span>{ |
| KNNClassifier { |
| k: k, |
| searcher: searcher, |
| target: <span class="prelude-val">None |
| </span>} |
| } |
| } |
| |
| <span class="kw">impl</span><S: KNearestSearch> SupModel<Matrix<f64>, Vector<usize>> <span class="kw">for </span>KNNClassifier<S> { |
| |
| <span class="kw">fn </span>predict(<span class="kw-2">&</span><span class="self">self</span>, inputs: <span class="kw-2">&</span>Matrix<f64>) -> LearningResult<Vector<usize>> { |
| <span class="kw">match </span><span class="self">self</span>.target { |
| <span class="prelude-val">Some</span>(<span class="kw-2">ref </span>target) => { |
| |
| <span class="kw">let </span><span class="kw-2">mut </span>results: Vec<usize> = Vec::with_capacity(inputs.rows()); |
| <span class="kw">for </span>row <span class="kw">in </span>inputs.row_iter() { |
| <span class="kw">let </span>(idx, <span class="kw">_</span>) = <span class="self">self</span>.searcher.search(row.raw_slice(), <span class="self">self</span>.k)<span class="question-mark">?</span>; |
| <span class="kw">let </span>res = target.select(<span class="kw-2">&</span>idx); |
| <span class="kw">let </span>(uniques, counts) = freq(res.data()); |
| <span class="kw">let </span>(id, <span class="kw">_</span>) = counts.argmax(); |
| results.push(uniques[id]); |
| } |
| <span class="prelude-val">Ok</span>(Vector::new(results)) |
| }, |
| <span class="kw">_ </span>=> <span class="prelude-val">Err</span>(Error::new_untrained()) |
| } |
| } |
| |
| <span class="kw">fn </span>train(<span class="kw-2">&mut </span><span class="self">self</span>, inputs: <span class="kw-2">&</span>Matrix<f64>, targets: <span class="kw-2">&</span>Vector<usize>) -> LearningResult<()> { |
| <span class="kw">if </span>inputs.rows() != targets.size() { |
| <span class="kw">return </span><span class="prelude-val">Err</span>(Error::new(ErrorKind::InvalidData, |
| <span class="string">"inputs and targets must be the same length"</span>)); |
| } |
| <span class="kw">if </span>inputs.rows() < <span class="self">self</span>.k { |
| <span class="kw">return </span><span class="prelude-val">Err</span>(Error::new(ErrorKind::InvalidData, |
| <span class="string">"inputs number of rows must be equal or learger than k"</span>)); |
| } |
| <span class="self">self</span>.searcher.build(inputs.clone()); |
| <span class="self">self</span>.target = <span class="prelude-val">Some</span>(targets.clone()); |
| <span class="prelude-val">Ok</span>(()) |
| } |
| } |
| |
| <span class="doccomment">/// Container for k-Nearest search results |
| </span><span class="kw">struct </span>KNearest { |
| <span class="comment">// number to search |
| </span>k: usize, |
| <span class="comment">// tuple of index and its distances, sorted by distances |
| </span>pairs: Vec<(usize, f64)>, |
| } |
| |
| <span class="kw">impl </span>KNearest { |
| |
| <span class="kw">fn </span>new(k: usize, index: Vec<usize>, distances: Vec<f64>) -> <span class="self">Self </span>{ |
| <span class="macro">debug_assert!</span>(!index.is_empty(), <span class="string">"index can't be empty"</span>); |
| <span class="macro">debug_assert!</span>(index.len() == distances.len(), |
| <span class="string">"index and distance must have the same length"</span>); |
| |
| <span class="kw">let </span><span class="kw-2">mut </span>pairs: Vec<(usize, f64)> = index.into_iter() |
| .zip(distances.into_iter()) |
| .collect(); |
| <span class="comment">// sort by distance, take k elements |
| </span>pairs.sort_by(|x, y| x.<span class="number">1</span>.partial_cmp(<span class="kw-2">&</span>y.<span class="number">1</span>).unwrap()); |
| pairs.truncate(k); |
| |
| KNearest { |
| k: k, |
| pairs: pairs |
| } |
| } |
| |
| <span class="doccomment">/// Add new index and distances to the container, keeping first k elements which |
| /// distances are smaller. Returns the updated farthest distance. |
| </span><span class="kw">fn </span>add(<span class="kw-2">&mut </span><span class="self">self</span>, index: usize, distance: f64) -> f64 { |
| <span class="comment">// self.pairs can't be empty |
| </span><span class="kw">let </span>len = <span class="self">self</span>.pairs.len(); |
| <span class="comment">// index of the last element after the query |
| </span><span class="kw">let </span>last_index: usize = <span class="kw">if </span>len < <span class="self">self</span>.k { |
| len |
| } <span class="kw">else </span>{ |
| len - <span class="number">1 |
| </span>}; |
| |
| <span class="kw">unsafe </span>{ |
| <span class="kw">if </span><span class="self">self</span>.pairs.get_unchecked(len - <span class="number">1</span>).<span class="number">1 </span>< distance { |
| <span class="kw">if </span>len < <span class="self">self</span>.k { |
| <span class="comment">// append to the last |
| </span><span class="self">self</span>.pairs.push((index, distance)); |
| } |
| <span class="self">self</span>.pairs.get_unchecked(last_index).<span class="number">1 |
| </span>} <span class="kw">else </span>{ |
| <span class="comment">// last element is already compared |
| </span><span class="kw">if </span>len >= <span class="self">self</span>.k { |
| <span class="self">self</span>.pairs.pop().unwrap(); |
| } |
| |
| <span class="kw">for </span>i <span class="kw">in </span><span class="number">2</span>..(len + <span class="number">1</span>) { |
| <span class="kw">if </span><span class="self">self</span>.pairs.get_unchecked(len - i).<span class="number">1 </span>< distance { |
| <span class="self">self</span>.pairs.insert(len - i + <span class="number">1</span>, (index, distance)); |
| <span class="kw">return </span><span class="self">self</span>.pairs.get_unchecked(last_index).<span class="number">1</span>; |
| } |
| } |
| <span class="self">self</span>.pairs.insert(<span class="number">0</span>, (index, distance)); |
| <span class="self">self</span>.pairs.get_unchecked(last_index).<span class="number">1 |
| </span>} |
| } |
| } |
| |
| <span class="doccomment">/// Return the k-th distance with searching point |
| </span><span class="kw">fn </span>dist(<span class="kw-2">&</span><span class="self">self</span>) -> f64 { |
| <span class="comment">// KNearest should gather k element at least |
| </span><span class="kw">let </span>len = <span class="self">self</span>.pairs.len(); |
| <span class="kw">if </span>len < <span class="self">self</span>.k { |
| f64::MAX |
| } <span class="kw">else </span>{ |
| <span class="kw">unsafe </span>{ |
| <span class="comment">// unchecked ver of .last().unwrap(), |
| // because self.pairs can't be empty |
| </span><span class="self">self</span>.pairs.get_unchecked(len - <span class="number">1</span>).<span class="number">1 |
| </span>} |
| } |
| } |
| |
| <span class="doccomment">/// Extract the search result to k-nearest indices and corresponding distances |
| </span><span class="kw">fn </span>get_results(<span class="self">self</span>) -> (Vec<usize>, Vec<f64>) { |
| <span class="kw">let </span><span class="kw-2">mut </span>indices: Vec<usize> = Vec::with_capacity(<span class="self">self</span>.k); |
| <span class="kw">let </span><span class="kw-2">mut </span>distances: Vec<f64> = Vec::with_capacity(<span class="self">self</span>.k); |
| <span class="kw">for </span>(i, d) <span class="kw">in </span><span class="self">self</span>.pairs { |
| indices.push(i); |
| distances.push(d); |
| } |
| (indices, distances) |
| } |
| } |
| |
| <span class="doccomment">/// Search K-nearest items |
| </span><span class="kw">pub trait </span>KNearestSearch: Default{ |
| |
| <span class="doccomment">/// build data structure for search optimization |
| </span><span class="kw">fn </span>build(<span class="kw-2">&mut </span><span class="self">self</span>, data: Matrix<f64>); |
| |
| <span class="doccomment">/// Serch k-nearest items close to the point |
| /// Returns a tuple of searched item index and its distances |
| </span><span class="kw">fn </span>search(<span class="kw-2">&</span><span class="self">self</span>, point: <span class="kw-2">&</span>[f64], k: usize) -> <span class="prelude-ty">Result</span><(Vec<usize>, Vec<f64>), Error>; |
| } |
| |
| <span class="doccomment">/// Count target label frequencies |
| /// TODO: Used in decisition tree, move impl to somewhere |
| </span><span class="kw">fn </span>freq(labels: <span class="kw-2">&</span>[usize]) -> (Vector<usize>, Vector<usize>) { |
| <span class="kw">let </span><span class="kw-2">mut </span>map: BTreeMap<usize, usize> = BTreeMap::new(); |
| <span class="kw">for </span>l <span class="kw">in </span>labels { |
| <span class="kw">let </span>e = map.entry(<span class="kw-2">*</span>l).or_insert(<span class="number">0</span>); |
| <span class="kw-2">*</span>e += <span class="number">1</span>; |
| } |
| |
| <span class="kw">let </span><span class="kw-2">mut </span>uniques: Vec<usize> = Vec::with_capacity(map.len()); |
| <span class="kw">let </span><span class="kw-2">mut </span>counts: Vec<usize> = Vec::with_capacity(map.len()); |
| <span class="kw">for </span>(<span class="kw-2">&</span>k, <span class="kw-2">&</span>v) <span class="kw">in </span><span class="kw-2">&</span>map { |
| uniques.push(k); |
| counts.push(v); |
| } |
| (Vector::new(uniques), Vector::new(counts)) |
| } |
| |
| <span class="doccomment">/// Return distances between given point and data specified with row ids |
| </span><span class="kw">fn </span>get_distances(data: <span class="kw-2">&</span>Matrix<f64>, point: <span class="kw-2">&</span>[f64], ids: <span class="kw-2">&</span>[usize]) -> Vec<f64> { |
| <span class="macro">assert!</span>(!ids.is_empty(), <span class="string">"target ids is empty"</span>); |
| |
| <span class="kw">let </span><span class="kw-2">mut </span>distances: Vec<f64> = Vec::with_capacity(ids.len()); |
| <span class="kw">for </span>id <span class="kw">in </span>ids.iter() { |
| <span class="comment">// ToDo: use .row(*id) |
| </span><span class="kw">let </span>row: Vec<f64> = data.select_rows(<span class="kw-2">&</span>[<span class="kw-2">*</span>id]).into_vec(); |
| <span class="comment">// let row: Vec<f64> = self.data.row(*id).into_vec(); |
| </span><span class="kw">let </span>d = dist(point, <span class="kw-2">&</span>row); |
| distances.push(d); |
| } |
| distances |
| } |
| |
| <span class="kw">fn </span>dist(v1: <span class="kw-2">&</span>[f64], v2: <span class="kw-2">&</span>[f64]) -> f64 { |
| <span class="comment">// ToDo: use metrics |
| </span><span class="kw">let </span>d: f64 = v1.iter() |
| .zip(v2.iter()) |
| .map(|(<span class="kw-2">&</span>x, <span class="kw-2">&</span>y)| (x - y) * (x - y)) |
| .fold(<span class="number">0.</span>, |s, v| s + v); |
| d.sqrt() |
| } |
| |
| <span class="attribute">#[cfg(test)] |
| </span><span class="kw">mod </span>tests { |
| |
| <span class="kw">use </span>std::f64; |
| <span class="kw">use </span><span class="kw">super</span>::KNearest; |
| |
| <span class="attribute">#[test] |
| </span><span class="kw">fn </span>test_knearest() { |
| <span class="kw">let </span><span class="kw-2">mut </span>kn = KNearest::new(<span class="number">2</span>, <span class="macro">vec!</span>[<span class="number">1</span>, <span class="number">2</span>, <span class="number">3</span>], <span class="macro">vec!</span>[<span class="number">3.</span>, <span class="number">2.</span>, <span class="number">1.</span>]); |
| <span class="macro">assert_eq!</span>(kn.k, <span class="number">2</span>); |
| <span class="macro">assert_eq!</span>(kn.pairs, <span class="macro">vec!</span>[(<span class="number">3</span>, <span class="number">1.</span>), (<span class="number">2</span>, <span class="number">2.</span>)]); |
| <span class="macro">assert_eq!</span>(kn.dist(), <span class="number">2.</span>); |
| |
| <span class="comment">// update KNearest |
| </span><span class="kw">let </span>res = kn.add(<span class="number">10</span>, <span class="number">3.</span>); |
| <span class="macro">assert_eq!</span>(res, <span class="number">2.</span>); |
| <span class="macro">assert_eq!</span>(kn.k, <span class="number">2</span>); |
| <span class="macro">assert_eq!</span>(kn.pairs, <span class="macro">vec!</span>[(<span class="number">3</span>, <span class="number">1.</span>), (<span class="number">2</span>, <span class="number">2.</span>)]); |
| <span class="macro">assert_eq!</span>(kn.dist(), <span class="number">2.</span>); |
| |
| <span class="kw">let </span>res = kn.add(<span class="number">11</span>, <span class="number">0.</span>); |
| <span class="macro">assert_eq!</span>(res, <span class="number">1.</span>); |
| <span class="macro">assert_eq!</span>(kn.k, <span class="number">2</span>); |
| <span class="macro">assert_eq!</span>(kn.pairs, <span class="macro">vec!</span>[(<span class="number">11</span>, <span class="number">0.</span>), (<span class="number">3</span>, <span class="number">1.</span>)]); |
| <span class="macro">assert_eq!</span>(kn.dist(), <span class="number">1.</span>); |
| } |
| |
| <span class="attribute">#[test] |
| </span><span class="kw">fn </span>test_knearest2() { |
| <span class="kw">let </span><span class="kw-2">mut </span>kn = KNearest::new(<span class="number">4</span>, <span class="macro">vec!</span>[<span class="number">1</span>, <span class="number">2</span>, <span class="number">3</span>], <span class="macro">vec!</span>[<span class="number">3.</span>, <span class="number">2.</span>, <span class="number">1.</span>]); |
| <span class="macro">assert_eq!</span>(kn.k, <span class="number">4</span>); |
| <span class="macro">assert_eq!</span>(kn.pairs, <span class="macro">vec!</span>[(<span class="number">3</span>, <span class="number">1.</span>), (<span class="number">2</span>, <span class="number">2.</span>), (<span class="number">1</span>, <span class="number">3.</span>)]); |
| <span class="macro">assert_eq!</span>(kn.dist(), f64::MAX); |
| |
| <span class="kw">let </span>res = kn.add(<span class="number">5</span>, <span class="number">1.5</span>); |
| <span class="macro">assert_eq!</span>(res, <span class="number">3.</span>); |
| <span class="macro">assert_eq!</span>(kn.k, <span class="number">4</span>); |
| <span class="macro">assert_eq!</span>(kn.pairs, <span class="macro">vec!</span>[(<span class="number">3</span>, <span class="number">1.</span>), (<span class="number">5</span>, <span class="number">1.5</span>), (<span class="number">2</span>, <span class="number">2.</span>), (<span class="number">1</span>, <span class="number">3.</span>)]); |
| <span class="macro">assert_eq!</span>(kn.dist(), <span class="number">3.</span>); |
| |
| <span class="kw">let </span>res = kn.add(<span class="number">6</span>, <span class="number">6.</span>); |
| <span class="macro">assert_eq!</span>(res, <span class="number">3.</span>); |
| <span class="macro">assert_eq!</span>(kn.k, <span class="number">4</span>); |
| <span class="macro">assert_eq!</span>(kn.pairs, <span class="macro">vec!</span>[(<span class="number">3</span>, <span class="number">1.</span>), (<span class="number">5</span>, <span class="number">1.5</span>), (<span class="number">2</span>, <span class="number">2.</span>), (<span class="number">1</span>, <span class="number">3.</span>)]); |
| <span class="macro">assert_eq!</span>(kn.dist(), <span class="number">3.</span>); |
| |
| <span class="kw">let </span>res = kn.add(<span class="number">7</span>, <span class="number">0.5</span>); |
| <span class="macro">assert_eq!</span>(res, <span class="number">2.</span>); |
| <span class="macro">assert_eq!</span>(kn.k, <span class="number">4</span>); |
| <span class="macro">assert_eq!</span>(kn.pairs, <span class="macro">vec!</span>[(<span class="number">7</span>, <span class="number">0.5</span>), (<span class="number">3</span>, <span class="number">1.</span>), (<span class="number">5</span>, <span class="number">1.5</span>), (<span class="number">2</span>, <span class="number">2.</span>)]); |
| <span class="macro">assert_eq!</span>(kn.dist(), <span class="number">2.</span>); |
| } |
| } |
| </code></pre></div> |
| </section></div></main><div id="rustdoc-vars" data-root-path="../../../../" data-current-crate="rusty_machine" data-themes="ayu,dark,light" data-resource-suffix="" data-rustdoc-version="1.66.0-nightly (5c8bff74b 2022-10-21)" ></div></body></html> |