# loss

Regression error for Gaussian process regression model

## Description

## Examples

### Compute Regression Loss for Test Data

Load the sample data.

`load('gprdata.mat')`

The data has 8 predictor variables and contains 500 observations in training data and 100 observations in test data. This is simulated data.

Fit a GPR model using the squared exponential kernel function with separate length scales for each predictor. Standardize the predictor values in the training data. Use the exact method for fitting and prediction.

gprMdl = fitrgp(Xtrain,ytrain,'FitMethod','exact',... 'PredictMethod','exact','KernelFunction','ardsquaredexponential',... 'Standardize',1);

Compute the regression error for the test data.

L = loss(gprMdl,Xtest,ytest)

L = 0.6928

Predict the responses for test data.

ypredtest = predict(gprMdl,Xtest);

Plot the test response along with the predictions.

figure; plot(ytest,'r'); hold on; plot(ypredtest,'b'); legend('Data','Predictions','Location','Best');

Manually compute the regression loss.

L = (ytest - ypredtest)'*(ytest - ypredtest)/length(ytest)

L = 0.6928

### Specify Custom Loss Function

Load the sample data and store in a `table`

.

load fisheriris tbl = table(meas(:,1),meas(:,2),meas(:,3),meas(:,4),species,... 'VariableNames',{'meas1','meas2','meas3','meas4','species'});

Fit a GPR model using the first measurement as the response and the other variables as the predictors.

`mdl = fitrgp(tbl,'meas1');`

Predict the responses using the trained model.

ypred = predict(mdl,tbl);

Compute the mean absolute error.

```
n = height(tbl);
y = tbl.meas1;
fun = @(y,ypred,w) sum(abs(y-ypred))/n;
L = loss(mdl,tbl,'lossfun',fun)
```

L = 0.2345

## Input Arguments

`gprMdl`

— Gaussian process regression model

`RegressionGP`

object | `CompactRegressionGP`

object

Gaussian process regression model, specified as a `RegressionGP`

(full) or `CompactRegressionGP`

(compact) object.

`Xnew`

— New observed data

`table`

| *m*-by-*d* matrix

New data, specified as a `table`

or an
*n*-by-*d* matrix, where *m* is the
number of observations, and *d* is the number of predictor variables in
the training data.

If you trained `gprMdl`

on a `table`

, then
`Xnew`

must be a `table`

that contains all the
predictor variables used to train `gprMdl`

.

If `Xnew`

is a table, then it can also contain
`Ynew`

. And if it does, then you do not have to specify
`Ynew`

.

If you trained `gprMdl`

on a matrix, then
`Xnew`

must be a numeric matrix with *d* columns,
and can only contain values for the predictor variables.

**Data Types: **`single`

| `double`

| `table`

`Ynew`

— New response values

*n*-by-1 vector

New observed response values, that correspond to the predictor values in
`Xnew`

, specified as an *n*-by-1 vector.
*n* is the number of rows in `Xnew`

. Each entry in
`Ynew`

is the observed response based on the predictor data in the
corresponding row of `Xnew`

.

If `Xnew`

is a table containing new response values, you do not
have to specify `Ynew`

.

**Data Types: **`single`

| `double`

### Name-Value Arguments

Specify optional pairs of arguments as
`Name1=Value1,...,NameN=ValueN`

, where `Name`

is
the argument name and `Value`

is the corresponding value.
Name-value arguments must appear after other arguments, but the order of the
pairs does not matter.

*
Before R2021a, use commas to separate each name and value, and enclose*
`Name`

*in quotes.*

**Example: **`loss(grpMdl,Xnew,Ynew,"PredictionForMissingValue","omitted")`

specifies to omit observations with missing prediction values from the loss
computation.

`lossfun`

— Loss function

`'mse'`

(default) | function handle

Loss function, specified as `'mse'`

(mean squared error) or a
function handle.

If you pass a function handle, say `fun`

, `loss`

calls it as shown below: `fun(Y,Ypred,W)`

, where
`Y`

, `Ypred`

and `W`

are
numeric vectors of length *n*, and *n* is the number
of rows in `Xnew`

. `Y`

is the observed response,
`Ypred`

is the predicted response, and `W`

is
the observation weights.

**Example: **`'lossfun',Fct`

calls the loss function
`Fct`

.

**Data Types: **`char`

| `string`

| `function_handle`

`PredictionForMissingValue`

— Predicted response value to use for observations with missing predictor values

`"median"`

(default) | `"mean"`

| `"omitted"`

| numeric scalar

*Since R2023b*

Predicted response value to use for observations with missing predictor values,
specified as `"median"`

, `"mean"`

,
`"omitted"`

, or a numeric scalar.

Value | Description |
---|---|

`"median"` | `loss` uses the median of the observed
response values in the training data as the predicted response value for
observations with missing predictor values. |

`"mean"` | `loss` uses the mean of the observed
response values in the training data as the predicted response value for
observations with missing predictor values. |

`"omitted"` | `loss` excludes observations with missing
predictor values from the loss computation. |

Numeric scalar | `loss` uses this value as the predicted
response value for observations with missing predictor values. |

If an observation is missing an observed response value or an observation weight, then
`loss`

does not use the observation in the loss
computation.

**Example: **`PredictionForMissingValue="omitted"`

**Data Types: **`single`

| `double`

| `char`

| `string`

`weights`

— Observation weights

vector of 1s (default) | *n*-by-1 vector

Observation weights, specified as *n*-by-1 vector, where
*n* is the number of rows in `Xnew`

. By default,
the weight of each observation is 1.

**Example: **`'weights',W`

uses the observation weights in vector
`W`

.

**Data Types: **`double`

| `single`

## Output Arguments

`L`

— Regression error

scalar value

Regression error for the trained Gaussian process regression model,
`gprMdl`

, returned as a scalar value.

## Alternatives

You can use `resubLoss`

to
compute the regression error for the trained GPR model at the observations in the training
data.

## Extended Capabilities

### Tall Arrays

Calculate with arrays that have more rows than fit in memory.

The
`loss`

function fully supports tall arrays. For more information,
see Tall Arrays.

## Version History

**Introduced in R2015b**

### R2023b: Specify predicted response value to use for observations with missing predictor values

Starting in R2023b, when you predict or compute the loss, some regression models allow you to specify the predicted response value for observations with missing predictor values. Specify the `PredictionForMissingValue`

name-value argument to use a numeric scalar, the training set median, or the training set mean as the predicted value. When computing the loss, you can also specify to omit observations with missing predictor values.

This table lists the object functions that support the
`PredictionForMissingValue`

name-value argument. By default, the
functions use the training set median as the predicted response value for observations with
missing predictor values.

Model Type | Model Objects | Object Functions |
---|---|---|

Gaussian process regression (GPR) model | `RegressionGP` , `CompactRegressionGP` | `loss` , `predict` , `resubLoss` , `resubPredict` |

`RegressionPartitionedGP` | `kfoldLoss` , `kfoldPredict` | |

Gaussian kernel regression model | `RegressionKernel` | `loss` , `predict` |

`RegressionPartitionedKernel` | `kfoldLoss` , `kfoldPredict` | |

Linear regression model | `RegressionLinear` | `loss` , `predict` |

`RegressionPartitionedLinear` | `kfoldLoss` , `kfoldPredict` | |

Neural network regression model | `RegressionNeuralNetwork` , `CompactRegressionNeuralNetwork` | `loss` , `predict` , `resubLoss` , `resubPredict` |

`RegressionPartitionedNeuralNetwork` | `kfoldLoss` , `kfoldPredict` | |

Support vector machine (SVM) regression model | `RegressionSVM` , `CompactRegressionSVM` | `loss` , `predict` , `resubLoss` , `resubPredict` |

`RegressionPartitionedSVM` | `kfoldLoss` , `kfoldPredict` |

In previous releases, the regression model `loss`

and `predict`

functions listed above used `NaN`

predicted response values for observations with missing predictor values. The software omitted observations with missing predictor values from the resubstitution ("resub") and cross-validation ("kfold") computations for prediction and loss.

### R2022a: `loss`

can return NaN for predictor data with missing values

The `loss`

function no longer omits an observation with a
NaN prediction when computing the weighted average regression loss. Therefore,
`loss`

can now return NaN when the predictor data
`Xnew`

contains any missing values. In most cases, if the test set
observations do not contain missing predictors, the `loss`

function does not return NaN.

This change improves the automatic selection of a regression model when you use
`fitrauto`

.
Before this change, the software might select a model (expected to best predict the
responses for new data) with few non-NaN predictors.

If `loss`

in your code returns NaN, you can update your code
to avoid this result. Remove or replace the missing values by using `rmmissing`

or `fillmissing`

, respectively.

The following table shows the regression models for which the
`loss`

object function might return NaN. For more details, see
the Compatibility Considerations for each `loss`

function.

Model Type | Full or Compact Model Object | `loss` Object Function |
---|---|---|

Gaussian process regression (GPR) model | `RegressionGP` , `CompactRegressionGP` | `loss` |

Gaussian kernel regression model | `RegressionKernel` | `loss` |

Linear regression model | `RegressionLinear` | `loss` |

Neural network regression model | `RegressionNeuralNetwork` , `CompactRegressionNeuralNetwork` | `loss` |

Support vector machine (SVM) regression model | `RegressionSVM` , `CompactRegressionSVM` | `loss` |

## See Also

`fitrgp`

| `RegressionGP`

| `CompactRegressionGP`

| `compact`

| `resubLoss`

| `predict`

## MATLAB 명령

다음 MATLAB 명령에 해당하는 링크를 클릭했습니다.

명령을 실행하려면 MATLAB 명령 창에 입력하십시오. 웹 브라우저는 MATLAB 명령을 지원하지 않습니다.

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