The metrica
package was developed to
visualize and compute the level of agreement between observed
ground-truth values and model-derived (e.g., mechanistic or empirical)
predictions.
This package is intended to fit into the following workflow:
metrica
package is used to compute goodness of
fit and error metrics based on observed and predicted valuesmetrica
package is used to visualize model fit
and selected fit metricsThis vignette introduces the functionality of the
metrica
package applied to observed and
model-predicted values of wheat grain nitrogen (N) content (in grams of
N \(m^{-2}\)).
Let’s begin by loading the packages needed.
Now we load the wheat
data set included in the
metrica
package.
# Load
data(wheat)
# Printing first observations
head(wheat)
#> pred obs
#> 1 2.577314 2.544
#> 2 3.989590 4.831
#> 3 5.645253 6.121
#> 4 13.125101 10.960
#> 5 4.955917 5.767
#> 6 6.687800 8.222
This data set contains two columns:
The simplest way to visually assess agreement between observed and predicted values is with a scatterplot.
We can use the function scatter_plot()
from the
metrica package to create a scatterplot.
The function requires specifying at least:
data
argument)obs
argument)pred
argument)Besides a scatterplot, this function also adds to the plot the 1:1 line (solid line) and the linear regression line (dashed line).
The default behavior of scatter_plot()
places the
obs
column on the x axis and the pred
column
on the y axis (orientation = "PO"
). This can be inverted by
changing the argument orientation
to “OP”:
The output of the scatter_plot()
function is a
ggplot2
object that can be further customized:
The Bland-Altman plot is another way of visually assessing observed vs. predicted agreement. It plots the difference between observed and predicted values on the y axis, and the observed values on the x axis:
The metrica package contains functions for 41 metrics to assess agreement between observed and predicted values for continuous data (i.e., regression error).
A list with all the the metrics including their name, definition, details, formula, and function name, please check [here].
All of the metric functions take the same three arguments as the plotting functions:
data
argument)obs
argument)pred
argument)The user can choose to calculate a single metric, or to calculate all metrics at once.
To calculate a single metric, the metric function can be
called.
For example, to calculate \(R^{2}\), we
can use the R2()
function:
Similarly, to calculate root mean squared error, we can use the
RMSE()
function:
The user can also calculate all 41 metrics at once using the function
metrics_summary()
:
metrics_summary(data = wheat,
obs = obs,
pred = pred,
type = "regression")
#> Metric Score
#> 1 B0 0.11315564
#> 2 B1 0.95057797
#> 3 r 0.91953997
#> 4 R2 0.84555376
#> 5 Xa 0.99564191
#> 6 CCC 0.91553253
#> 7 MAE 1.32781184
#> 8 RMAE 0.15214665
#> 9 MAPE 17.51424366
#> 10 SMAPE 17.43518492
#> 11 RAE 0.37156585
#> 12 RSE 0.16128874
#> 13 MBE 0.31815953
#> 14 PBE 3.64561486
#> 15 PAB 3.64510277
#> 16 PPB 1.51438787
#> 17 MSE 2.77702701
#> 18 RMSE 1.66644142
#> 19 RRMSE 0.19094834
#> 20 RSR 0.09678632
#> 21 iqRMSE 0.25237725
#> 22 MLA 0.14328045
#> 23 MLP 2.63374656
#> 24 RMLA 0.14328045
#> 25 RMLP 2.63374656
#> 26 SB 0.10122549
#> 27 SDSD 0.04205496
#> 28 LCS 2.63374656
#> 29 PLA 5.15949064
#> 30 PLP 94.84050936
#> 31 Ue 94.84050936
#> 32 Uc 1.51438787
#> 33 Ub 3.64510277
#> 34 NSE 0.83871126
#> 35 E1 0.62843415
#> 36 Erel 0.77057561
#> 37 KGE 0.91064709
#> 38 d 0.95632264
#> 39 d1 0.80649196
#> 40 d1r 0.81421707
#> 41 RAC 0.95770115
#> 42 AC 0.84174217
#> 43 lambda 0.91553253
#> 44 dcorr 0.89747940
#> 45 MIC 0.78940412
If the user wants just specific metrics, within the same function
metrics_summary()
, user can pass a list of desired metrics
using the argument “metrics_list” as follows:
my.metrics <- c("R2","MBE", "RMSE", "RSR", "NSE", "KGE", "CCC")
metrics_summary(data = wheat,
obs = obs,
pred = pred,
type = "regression",
metrics_list = my.metrics)
#> Metric Score
#> 1 R2 0.84555376
#> 2 CCC 0.91553253
#> 3 MBE 0.31815953
#> 4 RMSE 1.66644142
#> 5 RSR 0.09678632
#> 6 NSE 0.83871126
#> 7 KGE 0.91064709
In some cases, we may count with time-series predictions
(e.g. cumulative values from daily simulations). For example, let’s say
that we evaluate the production of drymass during the season. For this
specific case, the Mean Absolute Scaled Error is a more solid metric
compared to conventional RMSE or similar metrics.
Let’s suppose that we have predictions of wheat grain N over the
years on the same location for a series of 20 years from 2001 to 2020.
Thus, we may get a random sample from the wheat data set and assume they
represent the time series of interest. Therefore, we create a new
time
variable called Year
that will serve to
sort the observations.
set.seed(165)
wheat_time <- metrica::wheat %>% sample_n(., size = 20) %>%
mutate(Year = seq(2001,2020, by =1))
# Plot
wheat_time %>% ggplot2::ggplot(aes(x = Year))+
geom_point(aes(y = pred, fill = "Predicted", shape = "Predicted"))+
geom_point(aes(y = obs, fill = "Observed", shape = "Observed"))+
geom_line(aes(y = pred, col = "Predicted", linetype = "Predicted"), size = .75)+
geom_line(aes(y = obs, col = "Observed", linetype = "Observed"), size = .75)+
scale_fill_manual(name = "", values = c("dark red","steelblue"))+
scale_shape_manual(name = "", values = c(21,24))+
scale_color_manual(name = "", values = c("dark red","steelblue"))+
scale_linetype_manual(name = "", values = c(1,2))+
labs(x = "Year", y = "Wheat Grain N (g/m2)")+
theme_bw()+
theme(legend.position = "top")
#> Warning: Using `size` aesthetic for lines was deprecated in ggplot2 3.4.0.
#> ℹ Please use `linewidth` instead.
#> This warning is displayed once every 8 hours.
#> Call `lifecycle::last_lifecycle_warnings()` to see where this warning was
#> generated.
In the case of timeseries analysis, the Mean Absolute Scaled Error
(MASE, Hyndman & Koehler, 2006), a scaled error metric, is
preferable over other classic metrics such as the RMSE. With
metrica
, we can use the function MASE. Please, be aware
that MASE requires the obs
and pred
data along
with a third column corresponding to the temporal variable that sorts
the data (use the time
argument to specify it). The default
method to scale the MASE is the naive
forecast
(random-walk), which requires the user to define the size of the
naive_step
. Otherwise, an out-of-bag MAE can be specified
with the oob_mae
argument.
# MASE estimate, with naive approach (random-walk, i.e. using observation of t-1 as prediction)
metrica::MASE(data = wheat_time, obs = obs, pred = pred,
naive_step = 1, tidy = FALSE, time = "Year")
#> $MASE
#> [1] 0.2444194
metrica::MASE(data = wheat_time, obs = obs, pred = pred,
naive_step = 1, tidy = FALSE)
#> $MASE
#> [1] 0.2444194
# MASE estimate, with mae coming from an independent training set.
metrica::MASE(data = wheat_time, obs = obs, pred = pred,
naive_step = 1, tidy = FALSE, time = "Year", oob_mae = 6)
#> $MASE
#> [1] 0.2143599
The user can also create a scatter plot that includes not only the predicted vs. observed points, 1:1 line, and regression line, but also selected metrics and their values plus the SMA regression equation.
This is accomplished with the function
scatter_plot()
:
To print the metrics on the scatter_plot()
, just use
print.metrics. Warning: do not forget to specify your
‘metrics.list’:
my.metrica.plot <- scatter_plot(data = wheat,
obs = obs,
pred = pred,
print_metrics = TRUE, metrics_list = my.metrics)
my.metrica.plot
Also, as a ggplot element, outputs are flexible of further edition:
To export the metrics summary table, the user can simply write it to
file with the function write.csv()
:
metrics_summary(data = wheat,
obs = obs,
pred = pred,
type = "regression") %>%
write.csv("metrics_summary.csv")
Similarly, to export a plot, the user can simply write it to file
with the function ggsave()
: