Difference between revisions of "Performance measures"
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===Nash-Sutcliffe efficiency=== | ===Nash-Sutcliffe efficiency=== | ||
− | + | The [http://en.wikipedia.org/wiki/Nash-Sutcliffe_efficiency_coefficient Nash-Sutcliffe efficiency] is a widely used performance measure based on the error variance. It is implemented as ''NSeff()'' in the topmodel package. It takes two vectors, containing the simulated (Qsim) and observed (Qobs) discharge: | |
+ | Eff <- NSeff(Qobs,Qsim) | ||
− | NSeff <- function (Qobs, Qsim) | + | The underlying code is very simple: |
− | + | ||
+ | NSeff <- function (Qobs, Qsim){ | ||
Qsim <- Qsim[!is.na(Qobs)] | Qsim <- Qsim[!is.na(Qobs)] | ||
Qobs <- Qobs[!is.na(Qobs)] | Qobs <- Qobs[!is.na(Qobs)] | ||
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− | + | ===Coefficient of determination=== | |
+ | |||
+ | The [http://en.wikipedia.org/wiki/R-squared coefficient of determination] is the square of the Pearson's product-moment correlation coefficient. Note that the COD only evaluates linear relations between variables! | ||
+ | |||
+ | COD <- cor(Qobs, Qsim, use="complete.obs")^2 | ||
+ | |||
+ | |||
+ | ===Root mean squared error=== | ||
+ | |||
+ | As the name suggests, the root mean squared error is the square root of the [http://en.wikipedia.org/wiki/Mean_squared_error mean squared error]: | ||
+ | |||
+ | RMSE <- (mean((Qobs - Qsim)^2))^0.5 |
Latest revision as of 15:08, 15 September 2008
Introduction
Here is a selection of measures you can use for assessing the performance of your model.
Nash-Sutcliffe efficiency
The Nash-Sutcliffe efficiency is a widely used performance measure based on the error variance. It is implemented as NSeff() in the topmodel package. It takes two vectors, containing the simulated (Qsim) and observed (Qobs) discharge:
Eff <- NSeff(Qobs,Qsim)
The underlying code is very simple:
NSeff <- function (Qobs, Qsim){ Qsim <- Qsim[!is.na(Qobs)] Qobs <- Qobs[!is.na(Qobs)] Qobs <- Qobs[!is.na(Qsim)] Qsim <- Qsim[!is.na(Qsim)] NS <- 1 - (sum((Qobs - Qsim)^2)/sum((Qobs - mean(Qobs))^2)) return(NS) }
Coefficient of determination
The coefficient of determination is the square of the Pearson's product-moment correlation coefficient. Note that the COD only evaluates linear relations between variables!
COD <- cor(Qobs, Qsim, use="complete.obs")^2
Root mean squared error
As the name suggests, the root mean squared error is the square root of the mean squared error:
RMSE <- (mean((Qobs - Qsim)^2))^0.5