Last updated: 2019-11-12

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Knit directory: smash-paper/analysis/

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File Version Author Date Message
html c890a40 Peter Carbonetto 2019-11-12 Re-ran poisson and gaussian_signals analyses with new code in signals.R.
html c21adca Peter Carbonetto 2019-11-12 Greatly simplified code in gaussian_signals analysis.
Rmd 44525e8 Peter Carbonetto 2019-11-12 wflow_publish(“gaussian_signals.Rmd”)
html d01177c Peter Carbonetto 2019-11-12 Simplified some of the code used in the gaussian_signals analysis.
Rmd fe0ba95 Peter Carbonetto 2019-11-12 wflow_publish(“gaussian_signals.Rmd”)
html cc557b5 Peter Carbonetto 2019-11-12 Simplified the plotting code in gaussian_signals analysis.
Rmd fdc9258 Peter Carbonetto 2019-11-12 wflow_publish(“gaussian_signals.Rmd”)
html c6e3cd3 Peter Carbonetto 2019-11-12 Build site.
Rmd 70f9238 Peter Carbonetto 2019-11-12 wflow_publish(“gaussian_signals.Rmd”)
html f0221c5 Zhengrong Xing 2019-10-28 address some reviewer comments
html 8caff70 Peter Carbonetto 2018-12-06 Re-built the workflowr pages after several minor changes to the text
Rmd c589dbb Peter Carbonetto 2018-12-06 wflow_publish(c(“index.Rmd”, “gaussian_signals.Rmd”,
html 35f03c0 Peter Carbonetto 2018-12-04 Changed title of gaussian_signals.Rmd.
Rmd 4a35339 Peter Carbonetto 2018-12-04 wflow_publish(c(“gaussian_signals.Rmd”, “index.Rmd”))
html 6897465 Peter Carbonetto 2018-12-04 Added gaussian_signals page to the home.
Rmd 7ebd899 Peter Carbonetto 2018-12-04 wflow_publish(c(“gaussian_signals.Rmd”, “index.Rmd”))
html f35239b Peter Carbonetto 2018-12-04 Completed the gaussian_signals page.
Rmd 53df81d Peter Carbonetto 2018-12-04 wflow_publish(“gaussian_signals.Rmd”)
html abc74e5 Peter Carbonetto 2018-12-04 Added plots for for variance signals.
Rmd c8957e0 Peter Carbonetto 2018-12-04 wflow_publish(“gaussian_signals.Rmd”)
html 1fe523e Peter Carbonetto 2018-12-04 Adjusted the plots of the mean functions.
Rmd 1bddd73 Peter Carbonetto 2018-12-04 wflow_publish(“gaussian_signals.Rmd”)
html dc4c6cd Peter Carbonetto 2018-12-04 I now have plots of all the mean functions in gaussian_signals.Rmd.
Rmd a8b9722 Peter Carbonetto 2018-12-04 wflow_publish(“gaussian_signals.Rmd”)
html 469c32f Peter Carbonetto 2018-12-04 Generated the gaussian_signals webpage for the first time.
Rmd 2ab6ac0 Peter Carbonetto 2018-12-04 wflow_publish(“gaussian_signals.Rmd”)
Rmd ee71f27 Peter Carbonetto 2018-12-04 Made a few small adjustments to the text in the “gaussianmeanest” analysis.

Set up environment

Load the ggplot2 and cowplot packages, and the functions definining the mean and variances used to simulate the data.

library(ggplot2)
library(cowplot)
source("../code/signals.R")

Generate the ground-truth signals

Here, n specifies the length of the signals.

n <- 1024
t <- 1:n/n

Define the mean functions.

mu.sp   <- spike.fn(t,"mean")
mu.bump <- bumps.fn(t,"mean")
mu.blk  <- blocks.fn(t,"mean")
mu.ang  <- angles.fn(t,"mean")
mu.dop  <- doppler.fn(t,"mean")
mu.blip <- blip.fn(t,"mean")
mu.cor  <- cor.fn(t,"mean")

Define the variance functions.

var1 <- cons.fn(t,"var")
var2 <- texp.fn(t,"var")
var3 <- doppler.fn(t,"var")
var4 <- bumps.fn(t,"var")
var5 <- cblocks.fn(t,"var")

Plot the signal means

This function is used to draw the mean and variance functions.

plot.signal <- function (t, y, label)
  quickplot(t,y,geom = "line",color = I("darkorange"),
            xlab = "",ylab = "",main = label)

These plots show each of the mean functions used in generating the Gaussian data sets.

theme_set(theme_cowplot())
plot_grid(plot.signal(t,mu.sp,"Spikes (sp)"),
          plot.signal(t,mu.bump,"Bumps (bump)"),
          plot.signal(t,mu.blk,"Blocks (blk)"),
          plot.signal(t,mu.ang,"Angles (ang)"),
          plot.signal(t,mu.dop,"Doppler (dop)"),
          plot.signal(t,mu.blip,"Blip (blip)"),
          plot.signal(t,mu.cor,"Corner (cor)"),
          nrow = 4,ncol = 2)

Version Author Date
cc557b5 Peter Carbonetto 2019-11-12
c6e3cd3 Peter Carbonetto 2019-11-12
f0221c5 Zhengrong Xing 2019-10-28
1fe523e Peter Carbonetto 2018-12-04
dc4c6cd Peter Carbonetto 2018-12-04
469c32f Peter Carbonetto 2018-12-04

Plot the signal variances

These plots show the variance functions used in generating the Gaussian data sets. In practice, these functions are rescaled in the simulations to achieve the desired signal-to-noise ratios (see the paper for a more detailed explanation).

plot_grid(plot.signal(t,var1,"Constant variance (v1)"),
          plot.signal(t,var2,"Triple exponential (v2)"),
          plot.signal(t,var3,"Doppler (v3)"),
          plot.signal(t,var4,"Bumps (v4)"),
          plot.signal(t,var5,"Clipped (v5)"),
          nrow = 3,ncol = 2)

Version Author Date
c21adca Peter Carbonetto 2019-11-12
d01177c Peter Carbonetto 2019-11-12
cc557b5 Peter Carbonetto 2019-11-12
c6e3cd3 Peter Carbonetto 2019-11-12
f0221c5 Zhengrong Xing 2019-10-28
abc74e5 Peter Carbonetto 2018-12-04
469c32f Peter Carbonetto 2018-12-04

sessionInfo()
# R version 3.4.3 (2017-11-30)
# Platform: x86_64-apple-darwin15.6.0 (64-bit)
# Running under: macOS High Sierra 10.13.6
# 
# Matrix products: default
# BLAS: /Library/Frameworks/R.framework/Versions/3.4/Resources/lib/libRblas.0.dylib
# LAPACK: /Library/Frameworks/R.framework/Versions/3.4/Resources/lib/libRlapack.dylib
# 
# locale:
# [1] en_US.UTF-8/en_US.UTF-8/en_US.UTF-8/C/en_US.UTF-8/en_US.UTF-8
# 
# attached base packages:
# [1] stats     graphics  grDevices utils     datasets  methods   base     
# 
# other attached packages:
# [1] cowplot_0.9.4 ggplot2_3.2.0
# 
# loaded via a namespace (and not attached):
#  [1] Rcpp_1.0.1       compiler_3.4.3   pillar_1.3.1     later_0.8.0     
#  [5] git2r_0.26.1     plyr_1.8.4       workflowr_1.5.0  tools_3.4.3     
#  [9] digest_0.6.18    evaluate_0.13    tibble_2.1.1     gtable_0.2.0    
# [13] pkgconfig_2.0.2  rlang_0.3.1      yaml_2.2.0       xfun_0.7        
# [17] withr_2.1.2.9000 stringr_1.4.0    dplyr_0.8.0.1    knitr_1.23      
# [21] fs_1.2.7         rprojroot_1.3-2  grid_3.4.3       tidyselect_0.2.5
# [25] glue_1.3.1       R6_2.4.0         rmarkdown_1.16   purrr_0.2.5     
# [29] magrittr_1.5     whisker_0.3-2    backports_1.1.2  scales_0.5.0    
# [33] promises_1.0.1   htmltools_0.3.6  assertthat_0.2.1 colorspace_1.4-0
# [37] httpuv_1.5.0     labeling_0.3     stringi_1.4.3    lazyeval_0.2.1  
# [41] munsell_0.4.3    crayon_1.3.4