The hardware and bandwidth for this mirror is donated by dogado GmbH, the Webhosting and Full Service-Cloud Provider. Check out our Wordpress Tutorial.
If you wish to report a bug, or if you are interested in having us mirror your free-software or open-source project, please feel free to contact us at mirror[@]dogado.de.

f_table()

Introduction

After getting a vector of response events sorted by bins from a raw time vector, it is often necessary to create frequency tables in order to analyze the response distribution for a given experimental trial or session. Here we introduce a function to do so. The function takes a vector of ‘binarized’ responses as input and outputs a data frame with 3 columns:

The f_table() takes the following parameters:

This function includes zero-frequency bins in the given interval.

Example

First let’s load a data sample of response times:

data("r_times")

r_times
##   [1]  28.1  40.7  44.2  44.4  44.7  45.0  45.4  47.9  48.1  48.3  48.6  48.8
##  [13]  49.8  50.2  50.7  51.2  51.4  51.7  51.9  52.7  53.0  53.5  53.7  53.9
##  [25]  54.1  54.3  54.9  55.3  55.5  55.7  55.8  57.2  57.4  57.7  58.3  58.5
##  [37]  58.7  60.4  60.6  60.7  61.1  61.6  61.8  62.6  62.8  63.1  63.3  63.5
##  [49]  63.8  64.4  64.8  64.9  65.1  66.1  66.4  67.0  68.7  68.9  69.5  69.6
##  [61]  70.1  70.9  71.0  71.3  71.6  71.8  73.9  74.1  74.4  74.6  75.2  76.4
##  [73]  76.6  77.4  77.6  77.8  78.2  79.3  79.9  80.5  80.7  81.3  82.2  82.4
##  [85]  82.6  82.9  83.0  83.1  83.7  84.4  84.4  84.8  85.0  85.6  86.6  87.0
##  [97]  87.1  87.3  87.4  87.8  88.1  88.2  89.4  99.1  99.3  99.6  99.8 100.2
## [109] 133.1 133.1 133.6 134.9 135.2 135.3 135.4 135.7 136.5 173.8 174.1 174.3
## [121] 174.7 175.9 176.3 176.6 177.4 177.5 177.7 178.1 178.2 178.4 178.5 178.8
## [133] 179.4

Now we will use the get_bins() function included in this package (see get_bins.Rmd for further details) to convert the raw data points into time bins and then create the frequency table with f_table:

bin_res <- 10 # Lower values will create a higher resolution distribution and vice-versa.
min_x <- 0 # We use 0 as a starting point in order to get a distribution for the complete duration of the trail.
max_x <- 180 # In this specific example the total trail duration was 3 minutes.
binarized_data <- get_bins(r_times, min_x, max_x, bin_res)
data_ftable <- f_table(binarized_data, min_x, max_x, bin_res)

data_ftable
##    bins freq        prop
## 1     0    0 0.000000000
## 2    10    0 0.000000000
## 3    20    0 0.000000000
## 4    30    1 0.007518797
## 5    40    0 0.000000000
## 6    50   12 0.090225564
## 7    60   24 0.180451128
## 8    70   23 0.172932331
## 9    80   19 0.142857143
## 10   90   24 0.180451128
## 11  100    4 0.030075188
## 12  110    1 0.007518797
## 13  120    0 0.000000000
## 14  130    0 0.000000000
## 15  140    9 0.067669173
## 16  150    0 0.000000000
## 17  160    0 0.000000000
## 18  170    0 0.000000000
## 19  180   16 0.120300752

Finally let’s plot the data to visualize the resulting structure:

These binaries (installable software) and packages are in development.
They may not be fully stable and should be used with caution. We make no claims about them.
Health stats visible at Monitor.