This package contains a set of functions related to exploratory data analysis, data preparation, and model performance. It is used by people coming from business, research, and teaching (professors and students).
funModeling
is intimately related to the Data
Science Live Book -Open Source- (2017) in the sense that most of
its functionality is used to explain different topics addressed by the
book.
funModeling
:Some functions have in-line comments so the user can open the black-box and learn how it was developed, or to tune or improve any of them.
All the functions are well documented, explaining all the parameters
with the help of many short examples. R documentation can be accessed
by: help("name_of_the_function")
.
This quick-start is focused only on the functions. All explanations around them, and the how and when to use them, can be accessed by following the “Read more here.” links below each section, which redirect you to the book.
Below there are most of the funModeling
functions
divided by category.
status
: Dataset health status (2nd version)Similar to df_status
, but it returns all percentages in
the 0 to 1 range (not 1 to 100).
## variable q_zeros p_zeros q_na p_na
## age age 0 0.0000000 0 0.00000000
## gender gender 0 0.0000000 0 0.00000000
## chest_pain chest_pain 0 0.0000000 0 0.00000000
## resting_blood_pressure resting_blood_pressure 0 0.0000000 0 0.00000000
## serum_cholestoral serum_cholestoral 0 0.0000000 0 0.00000000
## fasting_blood_sugar fasting_blood_sugar 258 0.8514851 0 0.00000000
## resting_electro resting_electro 151 0.4983498 0 0.00000000
## max_heart_rate max_heart_rate 0 0.0000000 0 0.00000000
## exer_angina exer_angina 204 0.6732673 0 0.00000000
## oldpeak oldpeak 99 0.3267327 0 0.00000000
## slope slope 0 0.0000000 0 0.00000000
## num_vessels_flour num_vessels_flour 176 0.5808581 4 0.01320132
## thal thal 0 0.0000000 2 0.00660066
## heart_disease_severity heart_disease_severity 164 0.5412541 0 0.00000000
## exter_angina exter_angina 204 0.6732673 0 0.00000000
## has_heart_disease has_heart_disease 0 0.0000000 0 0.00000000
## q_inf p_inf type unique
## age 0 0 integer 41
## gender 0 0 factor 2
## chest_pain 0 0 factor 4
## resting_blood_pressure 0 0 integer 50
## serum_cholestoral 0 0 integer 152
## fasting_blood_sugar 0 0 factor 2
## resting_electro 0 0 factor 3
## max_heart_rate 0 0 integer 91
## exer_angina 0 0 integer 2
## oldpeak 0 0 numeric 40
## slope 0 0 integer 3
## num_vessels_flour 0 0 integer 4
## thal 0 0 factor 3
## heart_disease_severity 0 0 integer 5
## exter_angina 0 0 factor 2
## has_heart_disease 0 0 factor 2
Note: df_status
will be deprecated, please use
status
instead.
data_integrity
: Dataset health status (2nd
version)A handy function to return different vectors of variable names aimed to quickly filter NA, categorical (factor / character), numerical and other types (boolean, date, posix).
It also returns a vector of variables which have high cardinality.
It returns an ‘integrity’ object, which has: ‘status_now’ (comes from status function), and ‘results’ list, following elements can be found: vars_cat, vars_num, vars_num_with_NA, etc. Explore the object for more.
##
## ◌ {Numerical with NA} num_vessels_flour
## ◌ {Categorical with NA} thal
## $vars_num_with_NA
## variable q_na p_na
## num_vessels_flour num_vessels_flour 4 0.01320132
##
## $vars_cat_with_NA
## variable q_na p_na
## thal thal 2 0.00660066
##
## $vars_cat_high_card
## [1] variable unique
## <0 rows> (or 0-length row.names)
##
## $MAX_UNIQUE
## [1] 35
##
## $vars_one_value
## character(0)
##
## $vars_cat
## [1] "gender" "chest_pain" "fasting_blood_sugar"
## [4] "resting_electro" "thal" "exter_angina"
## [7] "has_heart_disease"
##
## $vars_num
## [1] "age" "resting_blood_pressure" "serum_cholestoral"
## [4] "max_heart_rate" "exer_angina" "oldpeak"
## [7] "slope" "num_vessels_flour" "heart_disease_severity"
##
## $vars_char
## character(0)
##
## $vars_factor
## [1] "gender" "chest_pain" "fasting_blood_sugar"
## [4] "resting_electro" "thal" "exter_angina"
## [7] "has_heart_disease"
##
## $vars_other
## character(0)
plot_num
: Plotting distributions for numerical
variablesPlots only numeric variables.
Notes:
bins
: Sets the number of bins (10 by default).path_out
indicates the path directory; if it has a
value, then the plot is exported in jpeg. To save in current directory
path must be dot: “.”profiling_num
: Calculating several statistics for
numerical variablesRetrieves several statistics for numerical variables.
## variable mean std_dev variation_coef p_01 p_05
## 1 age 54.4389439 9.0386624 0.1660330 35.00 40.0
## 2 resting_blood_pressure 131.6897690 17.5997477 0.1336455 100.00 108.0
## 3 serum_cholestoral 246.6930693 51.7769175 0.2098840 149.00 175.1
## 4 max_heart_rate 149.6072607 22.8750033 0.1529004 95.02 108.1
## 5 exer_angina 0.3267327 0.4697945 1.4378558 0.00 0.0
## 6 oldpeak 1.0396040 1.1610750 1.1168436 0.00 0.0
## 7 slope 1.6006601 0.6162261 0.3849825 1.00 1.0
## 8 num_vessels_flour 0.6722408 0.9374383 1.3944978 0.00 0.0
## 9 heart_disease_severity 0.9372937 1.2285357 1.3107265 0.00 0.0
## p_25 p_50 p_75 p_95 p_99 skewness kurtosis iqr range_98
## 1 48.0 56.0 61.0 68.0 71.00 -0.2080241 2.465477 13.0 [35, 71]
## 2 120.0 130.0 140.0 160.0 180.00 0.7025346 3.845881 20.0 [100, 180]
## 3 211.0 241.0 275.0 326.9 406.74 1.1298741 7.398208 64.0 [149, 406.74]
## 4 133.5 153.0 166.0 181.9 191.96 -0.5347844 2.927602 32.5 [95.02, 191.96]
## 5 0.0 0.0 1.0 1.0 1.00 0.7388506 1.545900 1.0 [0, 1]
## 6 0.0 0.8 1.6 3.4 4.20 1.2634255 4.530193 1.6 [0, 4.2]
## 7 1.0 2.0 2.0 3.0 3.00 0.5057957 2.363050 1.0 [1, 3]
## 8 0.0 0.0 1.0 3.0 3.00 1.1833771 3.234941 1.0 [0, 3]
## 9 0.0 0.0 2.0 3.0 4.00 1.0532483 2.843788 2.0 [0, 4]
## range_80
## 1 [42, 66]
## 2 [110, 152]
## 3 [188.8, 308.8]
## 4 [116, 176.6]
## 5 [0, 1]
## 6 [0, 2.8]
## 7 [1, 2]
## 8 [0, 2]
## 9 [0, 3]
Note:
plot_num
and profiling_num
automatically
exclude non-numeric variablesfreq
: Getting frequency distributions for categoric
variableslibrary(dplyr)
# Select only two variables for this example
heart_disease_2=heart_disease %>% select(chest_pain, thal)
# Frequency distribution
freq(heart_disease_2)
## chest_pain frequency percentage cumulative_perc
## 1 4 144 47.52 47.52
## 2 3 86 28.38 75.90
## 3 2 50 16.50 92.40
## 4 1 23 7.59 100.00
## thal frequency percentage cumulative_perc
## 1 3 166 54.79 54.79
## 2 7 117 38.61 93.40
## 3 6 18 5.94 99.34
## 4 <NA> 2 0.66 100.00
## [1] "Variables processed: chest_pain, thal"
Notes:
freq
only processes factor
and
character
, excluding non-categorical variables.input
is empty, then it runs for all categorical
variables.path_out
indicates the path directory; if it has a
value, then the plot is exported in jpeg. To save in current directory
path must be dot: “.”na.rm
indicates if NA
values should be
excluded (FALSE
by default).correlation_table
: Calculates R statisticRetrieves R metric (or Pearson coefficient) for all numeric variables, skipping the categoric ones.
## Variable has_heart_disease
## 1 has_heart_disease 1.00
## 2 heart_disease_severity 0.83
## 3 num_vessels_flour 0.46
## 4 oldpeak 0.42
## 5 slope 0.34
## 6 age 0.23
## 7 resting_blood_pressure 0.15
## 8 serum_cholestoral 0.08
## 9 max_heart_rate -0.42
Notes:
var_rank_info
: Correlation based on information
theoryCalculates correlation based on several information theory metrics between all variables in a data frame and a target variable.
## Warning: `funs()` was deprecated in dplyr 0.8.0.
## ℹ Please use a list of either functions or lambdas:
##
## # Simple named list: list(mean = mean, median = median)
##
## # Auto named with `tibble::lst()`: tibble::lst(mean, median)
##
## # Using lambdas list(~ mean(., trim = .2), ~ median(., na.rm = TRUE))
## ℹ The deprecated feature was likely used in the funModeling package.
## Please report the issue at <https://github.com/pablo14/funModeling/issues>.
## This warning is displayed once every 8 hours.
## Call `lifecycle::last_lifecycle_warnings()` to see where this warning was
## generated.
## var en mi ig gr
## en13 heart_disease_severity 1.846 0.995 0.9950837595 0.5390655068
## en12 thal 2.032 0.209 0.2094550580 0.1680456709
## en8 exer_angina 1.767 0.139 0.1391389302 0.1526393841
## en14 exter_angina 1.767 0.139 0.1391389302 0.1526393841
## en2 chest_pain 2.527 0.205 0.2050188327 0.1180286190
## en11 num_vessels_flour 2.381 0.182 0.1815217813 0.1157736478
## en10 slope 2.177 0.112 0.1124219069 0.0868799615
## en4 serum_cholestoral 7.481 0.561 0.5605556771 0.0795557228
## en1 gender 1.842 0.057 0.0572537665 0.0632970555
## en9 oldpeak 4.874 0.249 0.2491668741 0.0603576874
## en7 max_heart_rate 6.832 0.334 0.3336174096 0.0540697329
## en3 resting_blood_pressure 5.567 0.143 0.1425548155 0.0302394591
## en age 5.928 0.137 0.1371752885 0.0270548944
## en6 resting_electro 2.059 0.024 0.0241482908 0.0221938072
## en5 fasting_blood_sugar 1.601 0.000 0.0004593775 0.0007579095
Note: It analyzes numerical and categorical variables. It is also
used with the numeric discretization method as before, just as
discretize_df
.
cross_plot
: Distribution plot between input and target
variableRetrieves the relative and absolute distribution between an input and target variable. Useful to explain and report if a variable is important or not.
## Plotting transformed variable 'age' with 'equal_freq', (too many values). Disable with 'auto_binning=FALSE'
## Plotting transformed variable 'oldpeak' with 'equal_freq', (too many values). Disable with 'auto_binning=FALSE'
Notes:
auto_binning
: TRUE
by default, shows the
numerical variable as categorical.path_out
indicates the path directory; if it has a
value, then the plot is exported in jpeg.input
can be numeric or categoric, and
target
must be a binary (two-class) variable.input
is empty, then it runs for all variables.plotar
: Boxplot and density histogram between input and
target variablesUseful to explain and report if a variable is important or not.
Boxplot:
plotar(data=heart_disease, input = c("age", "oldpeak"), target="has_heart_disease", plot_type="boxplot")
## Warning: The `fun.y` argument of `stat_summary()` is deprecated as of ggplot2 3.3.0.
## ℹ Please use the `fun` argument instead.
## ℹ The deprecated feature was likely used in the funModeling package.
## Please report the issue at <https://github.com/pablo14/funModeling/issues>.
## This warning is displayed once every 8 hours.
## Call `lifecycle::last_lifecycle_warnings()` to see where this warning was
## generated.
Density histograms:
## Warning: `summarise_()` was deprecated in dplyr 0.7.0.
## ℹ Please use `summarise()` instead.
## ℹ The deprecated feature was likely used in the funModeling package.
## Please report the issue at <https://github.com/pablo14/funModeling/issues>.
## This warning is displayed once every 8 hours.
## Call `lifecycle::last_lifecycle_warnings()` to see where this warning was
## generated.
## Warning: `group_by_()` was deprecated in dplyr 0.7.0.
## ℹ Please use `group_by()` instead.
## ℹ See vignette('programming') for more help
## ℹ The deprecated feature was likely used in the funModeling package.
## Please report the issue at <https://github.com/pablo14/funModeling/issues>.
## This warning is displayed once every 8 hours.
## Call `lifecycle::last_lifecycle_warnings()` to see where this warning was
## generated.
Notes:
path_out
indicates the path directory; if it has a
value, then the plot is exported in jpeg.input
is empty, then it runs for all numeric
variables (skipping the categorical ones).input
must be numeric and target must be
categoric.target
can be multi-class (not only binary).categ_analysis
: Quantitative analysis for binary
outcomeProfile a binary target based on a categorical input variable, the
representativeness (perc_rows
) and the accuracy
(perc_target
) for each value of the input variable; for
example, the rate of flu infection per country.
## country mean_target sum_target perc_target q_rows perc_rows
## 1 Malaysia 1.000 1 0.012 1 0.001
## 2 Mexico 0.667 2 0.024 3 0.003
## 3 Portugal 0.200 1 0.012 5 0.005
## 4 United Kingdom 0.178 8 0.096 45 0.049
## 5 Uruguay 0.175 11 0.133 63 0.069
## 6 Israel 0.167 1 0.012 6 0.007
Note:
input
variable must be categorical.target
variable must be binary (two-value).This function is used to analyze data when we need to reduce variable cardinality in predictive modeling.
discretize_get_bins
+ discretize_df
:
Convert numeric variables to categoricWe need two functions: discretize_get_bins
, which
returns the thresholds for each variable, and then
discretize_df
, which takes the result from the first
function and converts the desired variables. The binning criterion is
equal frequency.
Example converting only two variables from a dataset.
# Step 1: Getting the thresholds for the desired variables: "max_heart_rate" and "oldpeak"
d_bins=discretize_get_bins(data=heart_disease, input=c("max_heart_rate", "oldpeak"), n_bins=5)
## Variables processed: max_heart_rate, oldpeak
# Step 2: Applying the threshold to get the final processed data frame
heart_disease_discretized=discretize_df(data=heart_disease, data_bins=d_bins, stringsAsFactors=T)
## Variables processed: max_heart_rate, oldpeak
The following image illustrates the result. Please note that the variable name remains the same.
Notes:
-Inf
and
Inf
, respectively.funModeling
release (1.6.7) may
change the output in certain scenarios. Please check the results if you
were using version 1.6.6. More info about this change here.equal_freq
: Convert numeric variable to categoricConverts numeric vector into a factor using the equal frequency criterion.
## new_age
## n missing distinct
## 303 0 5
##
## Value [29,46) [46,54) [54,59) [59,63) [63,77]
## Frequency 63 64 71 45 60
## Proportion 0.208 0.211 0.234 0.149 0.198
Notes:
discretize_get_bins
, this function doesn’t
insert -Inf
and Inf
as the min and max value
respectively.discretize_rgr
: Variable discretization based on gain
ratio maximizationThis is a new method developed in funModeling
developed
improve the binning based on a binary target variable.
input=heart_disease$oldpeak
target=heart_disease$has_heart_disease
input2=discretize_rgr(input, target)
# checking:
summary(input2)
## [0.0,0.6) [0.6,1.0) [1.0,1.4) [1.4,1.9) [1.9,6.2]
## 135 31 34 39 64
Adjust max number of bins with: max_n_bins
;
5
as default. Control minimum sample size per bin with
min_perc_bins
; 0.1
(or 10%) as default)
range01
: Scales variable into the 0 to 1 rangeConvert a numeric vector into a scale from 0 to 1 with 0 as the minimum and 1 as the maximum.
## Min. 1st Qu. Median Mean 3rd Qu. Max.
## 0.0000 0.0000 0.1290 0.1677 0.2581 1.0000
hampel_outlier
and tukey_outlier
: Gets
outliers thresholdBoth functions retrieve a two-value vector that indicates the
thresholds for which the values are considered as outliers. The
functions tukey_outlier
and hampel_outlier
are
used internally in prep_outliers
.
Using Tukey’s method:
## bottom_threshold top_threshold
## 60 200
Using Hampel’s method:
## bottom_threshold top_threshold
## 85.522 174.478
prep_outliers
: Prepare outliers in a data frameTakes a data frame and returns the same data frame plus the
transformations specified in the input
parameter. It also
works with a single vector.
Example considering two variables as input:
## bottom_threshold top_threshold
## 86.283 219.717
# Apply function to stop outliers at the threshold values
data_prep=prep_outliers(data = heart_disease, input = c('max_heart_rate','resting_blood_pressure'), method = "hampel", type='stop')
Checking the before and after for variable
max_heart_rate
:
## [1] "Before transformation -> Min: 71; Max: 202"
## [1] "After transformation -> Min: 71; Max: 202"
The min value changed from 71 to 86.23, while the max value remained the same at 202.
Notes:
method
can be: bottom_top
,
tukey
or hampel
.type
can be: stop
or set_na
.
If stop
all values flagged as outliers will be set to the
threshold. If set_na
, then the flagged values will set to
NA
.gain_lift
: Gain and lift performance curveAfter computing the scores or probabilities for the class we want to
predict, we pass it to the gain_lift
function, which
returns a data frame with performance metrics.
# Create machine learning model and get its scores for positive case
fit_glm=glm(has_heart_disease ~ age + oldpeak, data=heart_disease, family = binomial)
heart_disease$score=predict(fit_glm, newdata=heart_disease, type='response')
# Calculate performance metrics
gain_lift(data=heart_disease, score='score', target='has_heart_disease')
## Warning: The `guide` argument in `scale_*()` cannot be `FALSE`. This was deprecated in
## ggplot2 3.3.4.
## ℹ Please use "none" instead.
## ℹ The deprecated feature was likely used in the funModeling package.
## Please report the issue at <https://github.com/pablo14/funModeling/issues>.
## This warning is displayed once every 8 hours.
## Call `lifecycle::last_lifecycle_warnings()` to see where this warning was
## generated.
## Population Gain Lift Score.Point
## 1 10 20.86 2.09 0.8185793
## 2 20 35.97 1.80 0.6967124
## 3 30 48.92 1.63 0.5657817
## 4 40 61.15 1.53 0.4901940
## 5 50 69.06 1.38 0.4033640
## 6 60 78.42 1.31 0.3344170
## 7 70 87.77 1.25 0.2939878
## 8 80 92.09 1.15 0.2473671
## 9 90 96.40 1.07 0.1980453
## 10 100 100.00 1.00 0.1195511
coord_plot
: Coordinate plot (clustering models)Useful when we want to profile cluster results in terms of its means.
Imagine cyl
can be the cluster number.
## Warning: `mutate_each_()` was deprecated in dplyr 0.7.0.
## ℹ Please use `across()` instead.
## ℹ The deprecated feature was likely used in the funModeling package.
## Please report the issue at <https://github.com/pablo14/funModeling/issues>.
## This warning is displayed once every 8 hours.
## Call `lifecycle::last_lifecycle_warnings()` to see where this warning was
## generated.
## Warning: `summarise_each_()` was deprecated in dplyr 0.7.0.
## ℹ Please use `across()` instead.
## ℹ The deprecated feature was likely used in the funModeling package.
## Please report the issue at <https://github.com/pablo14/funModeling/issues>.
## This warning is displayed once every 8 hours.
## Call `lifecycle::last_lifecycle_warnings()` to see where this warning was
## generated.
## cyl mpg disp hp drat wt qsec vs am gear carb
## 1 4 26.0 108.0 91.0 4.080 2.200 18.90 1 1 4 2.0
## 2 6 19.7 167.6 110.0 3.900 3.210 18.30 1 0 4 4.0
## 3 8 15.2 350.5 192.5 3.120 3.760 17.18 0 0 3 3.5
## 4 All_Data 19.2 196.3 123.0 3.695 3.325 17.71 0 0 4 2.0