-
Notifications
You must be signed in to change notification settings - Fork 25
/
technical-supplement.tex
75 lines (50 loc) · 3.84 KB
/
technical-supplement.tex
1
2
3
4
5
6
7
8
9
10
11
12
13
14
15
16
17
18
19
20
21
22
23
24
25
26
27
28
29
30
31
32
33
34
35
36
37
38
39
40
41
42
43
44
45
46
47
48
49
50
51
52
53
54
55
56
57
58
59
60
61
62
63
64
65
66
67
68
69
70
71
72
73
74
75
\documentclass[12pt]{article}
\usepackage{amsmath}
\begin{document}
\title{WiggleTools - technical supplement}
\author{Daniel Zerbino}
\maketitle
\section{Online covariance calculation}
The following is a minor adaptation of a formula presented by David Will\'e, who came up with the idea.
The covariance between two series $X = \{x_n\}_{n=1..N}$ and $Y = \{y_n\}_{n=1..N}$ is defined as:
\begin{align}
cov(X,Y) &= E[(X-E[X])(Y-E[y])] \\
&= E[XY] - E[X]E[Y]
\end{align}
When handling very large datasets, WiggleTools processes the data as soon as it is read then discards it, thus obviating the need for large memory machines. Equation (1) is a problem, because you can only know $E[X]$ and $E[Y]$ after going through the entire dataset, so all the data would have to be stored in memory to compute the overall expectation.
Equation (2) can be computed online. However, computing the sum of $(x_ny_n)_{n=1..N}$, then dividing by $N$ at the end of the run produces a very large number, which is prone to overflow the precision of the CPU given enough datapoints.
However, if we define $R_n = \sum_{i=1}^n x_iy_i$, $S_n^x = \sum_{i=1}^n x_i$ and $S_n^y = \sum_{i=1}^n y_i$, then we re-write equation (2):
$$cov(X,Y) = \frac{R_N-S_N^xS_N^y / N}{N}$$
We can therefore compute the covariance online, using the series $\{T^{xy}_n\}_{n=1..N} = \{R_n-S_n^xS_n^y / n\}_{i=1..N}$
$$cov(X,Y) = \frac{T^{xy}_N}{N}$$
Because it is a difference, $T^{xy}_n$ is less likely to overflow CPU precision than an online calculation of $R_n$.
We assume that we computed $T^{xy}_n$. Because of the nature of the data processed by WiggleTools, it is common to encounter series of points with identical values. We therefore assume that there exists $k \ge 1$ such that $(x_{n+1}=...=x_{n+k})$ and $(y_{n+1}=...=y_{n+k})$. This gives us:
\begin{align*}
T^{xy}_{n+k} &= R_{n+k} - \frac{S_{n+k}^xS_{n+k}^y}{n+k} \\
&= (R_n + kx_{n+1}y_{n+1}) - \frac{(S_n^x + kx_{n+1})(S_n^y+ky_{n+1})}{n+k} \\
&= R_n + kx_{n+1}y_{n+1} - \frac{S_n^xS_n^y + S_n^ykx_{n+1} + S_n^xky_{n+1} + k^2x_{n+1}y_{n+1}}{n+k} \\
&= R_n - \frac{S_n^xS_n^y}{n+k} + \left(1 - \frac{k}{n+k}\right)kx_{n+1}y_{n+1} - \frac{S_n^ykx_{n+1} + S_n^xky_{n+1}}{n+k}\\
&= R_n - S_n^xS_n^y\left(\frac{1}{n}-\frac{k}{n(n+k)}\right) +\frac{n}{n+k}kx_{n+1}y_{n+1} - \frac{S_n^ykx_{n+1} + S_n^xky_{n+1}}{n+k}\\
&= \left(R_n - S_n^xS_n^y/n\right) + \frac{k}{n(n+k)}S_n^xS_n^y +\frac{nk}{n+k}x_{n+1}y_{n+1} - \frac{k}{n+k}S_n^yx_{n+1} + S_n^xy_{n+1}\\
&= T^{xy}_n + \frac{k}{n+k}\left(\frac{S_n^xS_n^y}{n} +nx_{n+1}y_{n+1} - S_n^yx_{n+1} - S_n^xy_{n+1}\right)\\
\end{align*}
It is thus possible to compute $cov(X,Y)$ online, keeping only $S_n^x$, $S_n^y$, $T^{xy}_n$ and $n$ in memory. Note that if $n \gg k$, $S_n^x \gg x$ and $S_n^y \gg y$ we obtain:
$$T^{xy}_{n+k} - T^{xy}_n \approx \bar{x}\bar{y} +x_{n+1}y_{n+1} - \bar{y}x_{n+1} - \bar{x}y_{n+1} $$
$$T^{xy}_{n+k} - T^{xy}_n \approx (x_{n+1} - \bar{x})(y_{n+1} - \bar{y}) $$
This implies that although $T^{xy}_{n}$ grows in $\mathcal{O}(n)$, the increments are commensurate to the product of the standard deviations of $X$ and $Y$.
\section{Online variance computation}
The above formulas can easily be adjusted to computing variance of a series $X = \{x_n\}_{n=1..N}$, since:
$$\sigma^2(X)=cov(X,X)=\frac{T^{xx}_N}{N}$$
Where:
$$T^{xx}_0 = 0$$
and:
$$T^{xx}_{n+k} = T^{xx}_n + \frac{k}{n+k}\left(\frac{\left(S_n^x\right)^2}{n} +nx_{n+1}^2 - 2S_n^xx_{n+1}\right)$$
It is thus possible to compute $\sigma^2(X)$ online, keeping only $S_n^x$, $T^{xx}_n$ and $n$ in memory.
\section{Online Pearson correlation computation}
We apply the same idea to the Pearson correlation:
\begin{align*}
\rho &= \frac{cov(X,Y)}{\sqrt{\sigma^2(X)\sigma^2(Y)}} \\
\rho &= \frac{\frac{T^{xy}_N}{N}}{\sqrt{\frac{T^{xx}_N}{N}\frac{T^{yy}_N}{N}}} \\
\rho &= \frac{T^{xy}_N}{\sqrt{T^{xx}_NT^{yy}_N}}
\end{align*}
\end{document}