[R] Using PCA to filter a series
Jonathan Thayn
jthayn at ilstu.edu
Fri Oct 3 06:11:18 CEST 2014
I suppose I could calculate the eigenvectors directly and not worry about centering the time-series, since they essentially the same range to begin with:
vec <- eigen(cor(cbind(d1,d2,d3,d4)))$vector
cp <- cbind(d1,d2,d3,d4)%*%vec
cp1 <- cp[,1]
I guess there is no way to reconstruct the original input data using just the first component, though, is there? Not the original data in it entirety, just one time-series that we representative of the general pattern. Possibly something like the following, but with just the first component:
o <- cp%*%solve(vec)
Thanks for your help. It's been a long time since I've played with PCA.
Jonathan Thayn
On Oct 2, 2014, at 4:59 PM, David L Carlson wrote:
> I think you want to convert your principal component to the same scale as d1, d2, d3, and d4. But the "original space" is a 4-dimensional space in which d1, d2, d3, and d4 are the axes, each with its own mean and standard deviation. Here are a couple of possibilities
>
> # plot original values for comparison
>> matplot(cbind(d1, d2, d3, d4), pch=20, col=2:5)
> # standardize the pc scores to the grand mean and sd
>> new1 <- scale(pca$scores[,1])*sd(c(d1, d2, d3, d4)) + mean(c(d1, d2, d3, d4))
>> lines(new1)
> # Use least squares regression to predict the row means for the original four variables
>> new2 <- predict(lm(rowMeans(cbind(d1, d2, d3, d4))~pca$scores[,1]))
>> lines(new2, col="red")
>
> -------------------------------------
> David L Carlson
> Department of Anthropology
> Texas A&M University
> College Station, TX 77840-4352
>
>
>
> From: r-help-bounces at r-project.org [mailto:r-help-bounces at r-project.org] On Behalf Of Don McKenzie
> Sent: Thursday, October 2, 2014 4:39 PM
> To: Jonathan Thayn
> Cc: r-help at r-project.org
> Subject: Re: [R] Using PCA to filter a series
>
>
> On Oct 2, 2014, at 2:29 PM, Jonathan Thayn <jthayn at ilstu.edu> wrote:
>
>> Hi Don. I would like to "de-rotate� the first component back to its original state so that it aligns with the original time-series. My goal is to create a �cleaned�, or a �model� time-series from which noise has been removed.
>
> Please cc the list with replies. It�s considered courtesy plus you�ll get more help that way than just from me.
>
> Your goal sounds almost metaphorical, at least to me. Your first axis �aligns� with the original time series already in that it captures the dominant variation
> across all four. Beyond that, there are many approaches to signal/noise relations within time-series analysis. I am not a good source of help on these, and you probably need a statistical consult (locally?), which is not the function of this list.
>
>>
>>
>> Jonathan Thayn
>>
>>
>>
>> On Oct 2, 2014, at 2:33 PM, Don McKenzie <dmck at u.washington.edu> wrote:
>>
>>>
>>> On Oct 2, 2014, at 12:18 PM, Jonathan Thayn <jthayn at ilstu.edu> wrote:
>>>
>>>> I have four time-series of similar data. I would like to combine these into a single, clean time-series. I could simply find the mean of each time period, but I think that using principal components analysis should extract the most salient pattern and ignore some of the noise. I can compute components using princomp
>>>>
>>>>
>>>> d1 <- c(113, 108, 105, 103, 109, 115, 115, 102, 102, 111, 122, 122, 110, 110, 104, 121, 121, 120, 120, 137, 137, 138, 138, 136, 172, 172, 157, 165, 173, 173, 174, 174, 119, 167, 167, 144, 170, 173, 173, 169, 155, 116, 101, 114, 114, 107, 108, 108, 131, 131, 117, 113)
>>>> d2 <- c(138, 115, 127, 127, 119, 126, 126, 124, 124, 119, 119, 120, 120, 115, 109, 137, 142, 142, 143, 145, 145, 163, 169, 169, 180, 180, 174, 181, 181, 179, 173, 185, 185, 183, 183, 178, 182, 182, 181, 178, 171, 154, 145, 147, 147, 124, 124, 120, 128, 141, 141, 138)
>>>> d3 <- c(138, 120, 129, 129, 120, 126, 126, 125, 125, 119, 119, 122, 122, 115, 109, 141, 144, 144, 148, 149, 149, 163, 172, 172, 183, 183, 180, 181, 181, 181, 173, 185, 185, 183, 183, 184, 182, 182, 181, 179, 172, 154, 149, 156, 156, 125, 125, 115, 139, 140, 140, 138)
>>>> d4 <- c(134, 115, 120, 120, 117, 123, 123, 128, 128, 119, 119, 121, 121, 114, 114, 142, 145, 145, 144, 145, 145, 167, 172, 172, 179, 179, 179, 182, 182, 182, 182, 182, 184, 184, 182, 184, 183, 183, 181, 179, 172, 149, 149, 149, 149, 124, 124, 119, 131, 135, 135, 134)
>>>>
>>>>
>>>> pca <- princomp(cbind(d1,d2,d3,d4))
>>>> plot(pca$scores[,1])
>>>>
>>>> This seems to have created the clean pattern I want, but I would like to project the first component back into the original axes? Is there a simple way to do that?
>>>
>>> Do you mean that you want to scale the scores on Axis 1 to the mean and range of your raw data? Or their mean and variance?
>>>
>>> See
>>>
>>> ?scale
>>>>
>>>>
>>>>
>>>>
>>>> Jonathan B. Thayn
>>>>
>>>>
>>>> ______________________________________________
>>>> R-help at r-project.org mailing list
>>>> https://stat.ethz.ch/mailman/listinfo/r-help
>>>> PLEASE do read the posting guide http://www.R-project.org/posting-guide.html
>>>> and provide commented, minimal, self-contained, reproducible code.
>>>
>>> Don McKenzie
>>> Research Ecologist
>>> Pacific WIldland Fire Sciences Lab
>>> US Forest Service
>>>
>>> Affiliate Professor
>>> School of Environmental and Forest Sciences
>>> College of the Environment
>>> University of Washington
>>> dmck at uw.edu
>>
>
> Don McKenzie
> Research Ecologist
> Pacific WIldland Fire Sciences Lab
> US Forest Service
>
> Affiliate Professor
> School of Environmental and Forest Sciences
> College of the Environment
> University of Washington
> dmck at uw.edu
>
>
> [[alternative HTML version deleted]]
> ______________________________________________
> R-help at r-project.org mailing list
> https://stat.ethz.ch/mailman/listinfo/r-help
> PLEASE do read the posting guide http://www.R-project.org/posting-guide.html
> and provide commented, minimal, self-contained, reproducible code.
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