msle | R Documentation |
Measure to compare true observed response with predicted response in regression tasks.
msle(truth, response, sample_weights = NULL, na_value = NaN, ...)
truth |
( |
response |
( |
sample_weights |
( |
na_value |
( |
... |
( |
The Mean Squared Log Error is defined as
\frac{1}{n} \sum_{i=1}^n w_i \left( \ln (1 + t_i) - \ln (1 + r_i) \right)^2,
where w_i
are normalized sample weights.
This measure is undefined if any element of t
or r
is less than or equal to -1
.
Performance value as numeric(1)
.
Type: "regr"
Range: [0, \infty)
Minimize: TRUE
Required prediction: response
Other Regression Measures:
ae()
,
ape()
,
bias()
,
ktau()
,
linex()
,
mae()
,
mape()
,
maxae()
,
maxse()
,
medae()
,
medse()
,
mse()
,
pbias()
,
pinball()
,
rae()
,
rmse()
,
rmsle()
,
rrse()
,
rse()
,
rsq()
,
sae()
,
se()
,
sle()
,
smape()
,
srho()
,
sse()
set.seed(1)
truth = 1:10
response = truth + rnorm(10)
msle(truth, response)
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