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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:
bins
which is the bin index for every data point.freq
the frequency of each bin.prop
the frequency expressed as a proportion of the
total responses.The f_table()
takes the following parameters:
x
the numeric vector of binned time data.min_x
the minimum value of the binned
distribution.max_x
the maximum value of the binned
distribution.bin_res
the bin resolution forThis function includes zero-frequency bins in the given interval.
First let’s load a data sample of response 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:
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