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[proxmox-backup.git] / src / tools / statistics.rs
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1//! Helpers for common statistics tasks
2use num_traits::NumAssignRef;
3use num_traits::cast::ToPrimitive;
4
5/// Calculates the sum of a list of numbers
6/// ```
7/// # use proxmox_backup::tools::statistics::sum;
8/// # use num_traits::cast::ToPrimitive;
9///
10/// assert_eq!(sum(&[0,1,2,3,4,5]), 15);
11/// assert_eq!(sum(&[-1,1,-2,2]), 0);
12/// assert!((sum(&[0.0, 0.1,0.2]).to_f64().unwrap() - 0.3).abs() < 0.001);
13/// assert!((sum(&[0.0, -0.1,0.2]).to_f64().unwrap() - 0.1).abs() < 0.001);
14/// ```
15pub fn sum<T>(list: &[T]) -> T
16where
17 T: NumAssignRef + ToPrimitive
18{
19 let mut sum = T::zero();
20 for num in list {
21 sum += num;
22 }
23 sum
24}
25
26/// Calculates the mean of a variable x
27/// ```
28/// # use proxmox_backup::tools::statistics::mean;
29///
30/// assert!((mean(&[0,1,2,3,4,5]).unwrap() - 2.5).abs() < 0.001);
31/// assert_eq!(mean::<u64>(&[]), None)
32/// ```
33pub fn mean<T>(list: &[T]) -> Option<f64>
34where
35 T: NumAssignRef + ToPrimitive
36{
37 let len = list.len();
38 if len == 0 {
39 return None
40 }
41 Some(sum(list).to_f64()?/(list.len() as f64))
42}
43
44/// Calculates the variance of a variable x
45/// ```
46/// # use proxmox_backup::tools::statistics::variance;
47///
48/// assert!((variance(&[1,2,3,4]).unwrap() - 1.25).abs() < 0.001);
49/// assert_eq!(variance::<u64>(&[]), None)
50/// ```
51pub fn variance<T>(list: &[T]) -> Option<f64>
52where
53 T: NumAssignRef + ToPrimitive
54{
55 covariance(list, list)
56}
57
58/// Calculates the (non-corrected) covariance of two variables x,y
59pub fn covariance<X, Y> (x: &[X], y: &[Y]) -> Option<f64>
60where
61 X: NumAssignRef + ToPrimitive,
62 Y: NumAssignRef + ToPrimitive,
63{
64 let len_x = x.len();
65 let len_y = y.len();
66 if len_x == 0 || len_y == 0 || len_x != len_y {
67 return None
68 }
69
70 let mean_x = mean(x)?;
71 let mean_y = mean(y)?;
72
cdde66d2 73 let covariance: f64 = (0..len_x).map(|i| {
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74 let x = x[i].to_f64().unwrap_or(0.0);
75 let y = y[i].to_f64().unwrap_or(0.0);
76 (x - mean_x)*(y - mean_y)
cdde66d2 77 }).sum();
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78
79 Some(covariance/(len_x as f64))
80}
81
82/// Returns the factors (a,b) of a linear regression y = a + bx
83/// for the variables [x,y] or None if the lists are not the same length
84/// ```
85/// # use proxmox_backup::tools::statistics::linear_regression;
86///
87/// let x = &[0,1,2,3,4];
88/// let y = &[-4,-2,0,2,4];
89/// let (a,b) = linear_regression(x,y).unwrap();
90/// assert!((a - -4.0).abs() < 0.001);
91/// assert!((b - 2.0).abs() < 0.001);
92/// ```
93pub fn linear_regression<X, Y> (x: &[X], y: &[Y]) -> Option<(f64, f64)>
94where
95 X: NumAssignRef + ToPrimitive,
96 Y: NumAssignRef + ToPrimitive
97{
98 let len_x = x.len();
99 let len_y = y.len();
100 if len_x == 0 || len_y == 0 || len_x != len_y {
101 return None
102 }
103
104 let mean_x = mean(x)?;
105 let mean_y = mean(y)?;
106
107 let mut covariance = 0.0;
108 let mut variance = 0.0;
109
110 for i in 0..len_x {
111 let x = x[i].to_f64()?;
112 let y = y[i].to_f64()?;
113
114 let x_mean_x = x - mean_x;
115
116 covariance += x_mean_x*(y - mean_y);
117 variance += x_mean_x * x_mean_x;
118 }
119
120 let beta = covariance/variance;
121 let alpha = mean_y - beta*mean_x;
122 Some((alpha,beta))
123}