# fit

## Description

computes the Shapley values for the specified query points
(`newExplainer`

= fit(`explainer`

,`queryPoints`

)`queryPoints`

) and stores the computed Shapley values in the `Shapley`

property
of `newExplainer`

. The `shapley`

object
`explainer`

contains a machine learning model and the options for
computing Shapley values.

`fit`

uses the Shapley value computation options that you specify
when you create `explainer`

. You can change the options using the
name-value arguments of the `fit`

function. The function returns a
`shapley`

object `newExplainer`

that contains the newly
computed Shapley values.

specifies additional options using one or more name-value arguments. For example, specify
`newExplainer`

= fit(`explainer`

,`queryPoints`

,`Name=Value`

)`UseParallel=true`

to compute Shapley values in parallel.

## Examples

### Create `shapley`

Object and Compute Shapley Values Using `fit`

Train a regression model and create a `shapley`

object. When you create a `shapley`

object, if you do not specify query points, then the software does not compute Shapley values. Use the object function `fit`

to compute the Shapley values for a specified query point. Then create a bar graph of the Shapley values by using the object function `plot`

.

Load the `carbig`

data set, which contains measurements of cars made in the 1970s and early 1980s.

`load carbig`

Create a table containing the predictor variables `Acceleration`

, `Cylinders`

, and so on, as well as the response variable `MPG`

.

```
tbl = table(Acceleration,Cylinders,Displacement, ...
Horsepower,Model_Year,Weight,MPG);
```

Removing missing values in a training set can help reduce memory consumption and speed up training for the `fitrkernel`

function. Remove missing values in `tbl`

.

tbl = rmmissing(tbl);

Train a blackbox model of `MPG`

by using the `fitrkernel`

function. Specify the `Cylinders`

and `Model_Year`

variables as categorical predictors. Standardize the remaining predictors.

rng("default") % For reproducibility mdl = fitrkernel(tbl,"MPG",CategoricalPredictors=[2 5], ... Standardize=true);

Create a `shapley`

object. Specify the data set `tbl`

, because `mdl`

does not contain training data.

explainer = shapley(mdl,tbl)

explainer = BlackboxModel: [1×1 RegressionKernel] QueryPoints: [] BlackboxFitted: [] Shapley: [] X: [392×7 table] CategoricalPredictors: [2 5] Method: "interventional-kernel" Intercept: 23.2474 NumSubsets: 64

`explainer`

stores the training data `tbl`

in the `X`

property. By default, `shapley`

subsamples 100 observations from the data in `X`

and stores their indices in the `SampledObservationIndices`

property.

Compute the Shapley values of all predictor variables for the first observation in `tbl`

. The `fit`

object function uses the sampled observations rather than all of `X`

to compute the Shapley values.

queryPoint = tbl(1,:)

`queryPoint=`*1×7 table*
Acceleration Cylinders Displacement Horsepower Model_Year Weight MPG
____________ _________ ____________ __________ __________ ______ ___
12 8 307 130 70 3504 18

explainer = fit(explainer,queryPoint);

For a regression model, `fit`

computes Shapley values using the predicted response, and stores them in the `Shapley`

property of the `shapley`

object. Display the values in the `Shapley`

property.

explainer.Shapley

`ans=`*6×2 table*
Predictor Value
______________ ________
"Acceleration" -0.33821
"Cylinders" -0.97631
"Displacement" -1.1425
"Horsepower" -0.62927
"Model_Year" -0.17268
"Weight" -0.87595

Plot the Shapley values for the query point by using the `plot`

function.

plot(explainer)

The horizontal bar graph shows the Shapley values for all variables, sorted by their absolute values. Each Shapley value explains the deviation of the prediction for the query point from the average, due to the corresponding variable.

### Compute Shapley Values for Two Query Points

Train a classification model and create a `shapley`

object. Then compute the Shapley values for two query points.

Load the `CreditRating_Historical`

data set. The data set contains customer IDs and their financial ratios, industry labels, and credit ratings.

`tbl = readtable("CreditRating_Historical.dat");`

Train a blackbox model of credit ratings by using the `fitcecoc`

function. Use the variables from the second through seventh columns in `tbl`

as the predictor variables.

blackbox = fitcecoc(tbl,"Rating", ... PredictorNames=tbl.Properties.VariableNames(2:7), ... CategoricalPredictors="Industry");

Create a `shapley`

object with the `blackbox`

model. Specify to sample 1000 observations from `tbl`

to compute the Shapley values. Specify to use the extension to the Kernel SHAP algorithm.

rng("default") % For reproducibility explainer = shapley(blackbox,tbl,Method="conditional", ... NumObservationsToSample=1000);

Find two query points whose true rating values are `AAA`

and `BB`

, respectively.

sampleTbl = explainer.X(explainer.SampledObservationIndices,:); queryPoints(1,:) = sampleTbl(find(strcmp(sampleTbl.Rating,"AAA"),1),:); queryPoints(2,:) = sampleTbl(find(strcmp(sampleTbl.Rating,"BB"),1),:)

`queryPoints=`*2×8 table*
ID WC_TA RE_TA EBIT_TA MVE_BVTD S_TA Industry Rating
_____ _____ _____ _______ ________ _____ ________ _______
39364 0.61 0.694 0.122 5.409 0.359 3 {'AAA'}
44610 0.254 0.226 0.064 0.779 0.254 5 {'BB' }

Compute and plot the Shapley values for the first query point.

explainer1 = fit(explainer,queryPoints(1,:)); plot(explainer1)

Compute and plot the Shapley values for the second query point.

explainer2 = fit(explainer,queryPoints(2,:)); plot(explainer2)

The true rating for the second query point is `BB`

, but the predicted rating is `BBB`

. The plot shows the Shapley values for the predicted rating.

`explainer1`

and `explainer2`

include the Shapley values for the first query point and second query point, respectively.

### Shapley Value Swarm Charts for Regression Model

Train a regression model and create a `shapley`

object. Use the object function `fit`

to compute the Shapley values for the specified query points. Then plot the Shapley values for multiple query points by using the `swarmchart`

object function.

Load the `carbig`

data set, which contains measurements of cars made in the 1970s and early 1980s.

`load carbig`

Create a table containing the predictor variables `Acceleration`

, `Cylinders`

, and so on, as well as the response variable `MPG`

.

```
tbl = table(Acceleration,Cylinders,Displacement, ...
Horsepower,Model_Year,Weight,MPG);
```

Removing missing values in a training set helps to reduce memory consumption and speed up training for the `fitrkernel`

function. Remove missing values in `tbl`

.

tbl = rmmissing(tbl);

Train a blackbox model of `MPG`

by using the `fitrkernel`

function. Specify the `Cylinders`

and `Model_Year`

variables as categorical predictors. Standardize the remaining predictors.

rng("default") % For reproducibility mdl = fitrkernel(tbl,"MPG",CategoricalPredictors=[2 5], ... Standardize=true);

Create a `shapley`

object. Because `mdl`

does not contain training data, specify the data set `tbl`

.

explainer = shapley(mdl,tbl)

explainer = BlackboxModel: [1×1 RegressionKernel] QueryPoints: [] BlackboxFitted: [] Shapley: [] X: [392×7 table] CategoricalPredictors: [2 5] Method: "interventional-kernel" Intercept: 23.2474 NumSubsets: 64

`explainer`

stores the training data `tbl`

in the `X`

property. By default, `shapley`

subsamples 100 observations from the data in `X`

and stores their indices in the `SampledObservationIndices`

property.

Compute the Shapley values for all observations in `tbl`

. To speed up computations, the `fit`

object function uses the sampled observations rather than all of `X`

to compute the Shapley values. Further reduce computational time by using the `UseParallel`

name-value argument, if you have a Parallel Computing Toolbox™ license.

explainer = fit(explainer,tbl,UseParallel=true);

For a regression model, `fit`

computes Shapley values using the predicted response, and stores them in the `Shapley`

property of the `shapley`

object. Because `explainer`

contains Shapley values for multiple query points, display the mean absolute Shapley values instead.

explainer.MeanAbsoluteShapley

`ans=`*6×2 table*
Predictor Value
______________ _______
"Acceleration" 0.5678
"Cylinders" 0.96799
"Displacement" 0.79668
"Horsepower" 0.78681
"Model_Year" 0.86258
"Weight" 0.987

For each predictor, the mean absolute Shapley value is the absolute value of the Shapley values, averaged across all query points. The `Cylinders`

predictor has the greatest mean absolute Shapley value, and the `Acceleration`

predictor has the smallest mean absolute Shapley value.

Visualize the Shapley values by using the `swarmchart`

object function. Specify to use the `"copper"`

colormap.

`swarmchart(explainer,ColorMap="copper")`

For each predictor, the function displays the Shapley values for the query points. The corresponding swarm chart shows the distribution of the Shapley values. The function determines the order of the predictors by using the mean absolute Shapley values.

Query points with low `Weight`

values seem to have large positive Shapley values. That is, for these query points, the `Weight`

predictor contributes to an increase in the `MPG`

predicted value from the average. Similarly, query points with high `Weight`

values seem to have large negative Shapley values. That is, for these query points, the `Weight`

predictor contributes to a decrease in the `MPG`

predicted value from the average. These results match the idea that car weights are inversely correlated with MPG values.

## Input Arguments

`explainer`

— Object explaining blackbox model

`shapley`

object

Object explaining the blackbox model, specified as a `shapley`

object.

`queryPoints`

— Query points

numeric matrix | table

Query points at which `fit`

explains predictions,
specified as a numeric matrix or a table. Each row of `queryPoints`

corresponds to one query point.

For a numeric matrix:

For a table:

If the predictor data

`explainer.X`

is a table, then all predictor variables in`queryPoints`

must have the same variable names and data types as those in`explainer.X`

. However, the column order of`queryPoints`

does not need to correspond to the column order of`explainer.X`

.If the predictor data

`explainer.X`

is a numeric matrix, then the predictor names in`explainer.BlackboxModel.PredictorNames`

and the corresponding predictor variable names in`queryPoints`

must be the same. To specify predictor names during training, use the`PredictorNames`

name-value argument. All predictor variables in`queryPoints`

must be numeric vectors.`queryPoints`

can contain additional variables (response variables, observation weights, and so on), but`fit`

ignores them.`fit`

does not support multicolumn variables or cell arrays other than cell arrays of character vectors.

If `queryPoints`

contains `NaN`

s for continuous
predictors and `Method`

is `"conditional"`

, then the
Shapley values (`Shapley`

) in
the returned object are `NaN`

s. If you use a regression model that is a
Gaussian process regression (GPR), kernel, linear, neural network, or support vector
machine (SVM) model, then `fit`

returns `NaN`

Shapley values for query points that contain missing predictor values or categories not
seen during training. For all other models, `fit`

handles
missing values in the same way as `explainer.BlackboxModel`

(that is,
the `predict`

object function of
`explainer.BlackboxModel`

or a function handle specified by
`blackbox`

).

*Before R2024a: You can specify only one query point using a
row vector of numeric values or a single-row table.*

**Example: **`explainer.X(1,:)`

specifies the query point as the first
observation of the predictor data `X`

in
`explainer`

.

**Data Types: **`single`

| `double`

| `table`

### 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.

**Example: **`fit(explainer,q,Method="conditional",UseParallel=true)`

computes the Shapley values for the query point `q`

using the extension to
the Kernel SHAP algorithm, and executes the computation in parallel.

`MaxNumSubsets`

— Maximum number of predictor subsets

`explainer.NumSubsets`

(default) | positive integer

Maximum number of predictor subsets to use for Shapley value computation, specified as a positive integer.

For details on how `fit`

chooses the subsets to use,
see Computational Cost.

This argument is valid when the `fit`

function uses the Kernel
SHAP algorithm or the extension to the Kernel SHAP algorithm. If you set the
`MaxNumSubsets`

argument when `Method`

is
`"interventional"`

, the software uses the Kernel SHAP algorithm.
For more information, see Algorithms.

**Example: **`MaxNumSubsets=100`

**Data Types: **`single`

| `double`

`Method`

— Shapley value computation algorithm

`"interventional"`

| `"conditional"`

Shapley value computation algorithm, specified as
`"interventional"`

or `"conditional"`

.

`"interventional"`

—`fit`

computes the Shapley values with an interventional value function.`fit`

offers three interventional algorithms: Kernel SHAP [1], Linear SHAP [1], and Tree SHAP [2]. For each query point, the software selects an algorithm based on the machine learning model

and other specified options. For details, see Interventional Algorithms.`explainer`

.BlackboxModel`"conditional"`

—`fit`

uses the extension to the Kernel SHAP algorithm [3] with a conditional value function.

The `Method`

property of `newExplainer`

stores the name of the selected
algorithm. For more information, see Algorithms.

By default, the `fit`

function uses the algorithm specified in
the `Method`

property of `explainer`

.

*Before R2023a: You can specify this argument as
"interventional-kernel" or
"conditional-kernel". fit supports
the Kernel SHAP algorithm and the extension of the Kernel SHAP algorithm.*

**Example: **`Method="conditional"`

**Data Types: **`char`

| `string`

`OutputFcn`

— Function called after each query point evaluation

`[]`

(default) | function handle

*Since R2024a*

Function called after each query point evaluation, specified as a function handle. An output function can perform various tasks, such as stopping Shapley value computations, creating variables, or plotting results. For details and examples on how to write your own output functions, see Shapley Output Functions.

This argument is valid only when the `fit`

function computes
Shapley values for multiple query points.

**Data Types: **`function_handle`

`UseParallel`

— Flag to run in parallel

`false`

(default) | `true`

Flag to run in parallel, specified as a numeric or logical
`1`

(`true`

) or `0`

(`false`

). If you specify `UseParallel=true`

, the
`fit`

function executes `for`

-loop iterations by
using `parfor`

. The loop runs in parallel when you
have Parallel Computing Toolbox™.

This argument is valid only when the `fit`

function computes
Shapley values for multiple query points, or computes Shapley values for one query
point by using the Tree SHAP algorithm for an ensemble of trees, the Kernel SHAP
algorithm, or the extension to the Kernel SHAP algorithm.

**Example: **`UseParallel=true`

**Data Types: **`logical`

## Output Arguments

`newExplainer`

— Object explaining blackbox model

`shapley`

object

## More About

### Shapley Values

In game theory, the Shapley value of a player is the average marginal contribution of the player in a cooperative game. In the context of machine learning prediction, the Shapley value of a feature for a query point explains the contribution of the feature to a prediction (response for regression or score of each class for classification) at the specified query point.

The Shapley value of a feature for a query point is the contribution of the feature to the deviation from the average prediction. For a query point, the sum of the Shapley values for all features corresponds to the total deviation of the prediction from the average. That is, the sum of the average prediction and the Shapley values for all features corresponds to the prediction for the query point.

For more details, see Shapley Values for Machine Learning Model.

## References

[1] Lundberg, Scott M., and
S. Lee. "A Unified Approach to Interpreting Model Predictions." *Advances in Neural
Information Processing Systems* 30 (2017): 4765–774.

[2] Lundberg, Scott M., G.
Erion, H. Chen, et al. "From Local Explanations to Global Understanding with Explainable AI for
Trees." *Nature Machine Intelligence* 2 (January 2020):
56–67.

[3] Aas, Kjersti, Martin Jullum,
and Anders Løland. "Explaining Individual Predictions When Features Are Dependent: More Accurate
Approximations to Shapley Values." *Artificial Intelligence* 298 (September
2021).

## Extended Capabilities

### Automatic Parallel Support

Accelerate code by automatically running computation in parallel using Parallel Computing Toolbox™.

To run in parallel, set the `UseParallel`

name-value argument to
`true`

in the call to this function.

For more general information about parallel computing, see Run MATLAB Functions with Automatic Parallel Support (Parallel Computing Toolbox).

## Version History

**Introduced in R2021a**

### R2024b: Speed up Shapley value computations

You can run Shapley value computations in parallel when using the `OutputFcn`

name-value argument by setting the `UseParallel`

value
to `true`

. To parallelize Shapley value computations, you must have
Parallel Computing Toolbox.

### R2024a: Compute Shapley values for multiple query points

You can now compute Shapley values for multiple query points by using the `queryPoints`

argument. When working with multiple query points, you can use an output function to perform
various tasks, such as stopping Shapley value computations, creating variables, or plotting
results. To do so, specify the `OutputFcn`

name-value argument.

### R2023b: Interventional Tree SHAP algorithm supports data with missing predictor values

When observations in the input predictor data (

) or values in the query point (`explainer`

.X`queryPoint`

)
contain missing values and the `Method`

value is
`"interventional"`

, the `fit`

function can use the
Tree SHAP algorithm for tree models and ensemble models of tree learners. In previous
releases, under these conditions, the `fit`

function always used the
Kernel SHAP algorithm for tree-based models. For more information, including cases where the
software still uses Kernel SHAP instead of Tree SHAP for tree-based models, see Interventional Algorithms.

### R2023a: `fit`

supports the Linear SHAP and Tree SHAP algorithms

`fit`

supports the Linear SHAP [1] algorithm for linear models and the Tree
SHAP [2] algorithm for tree models and ensemble
models of tree learners.

If you specify the `Method`

name-value argument as
`'interventional'`

, the `fit`

function selects an
algorithm based on the machine learning model type of `explainer`

. The
`Method`

property
of `newExplainer`

stores the name of the selected algorithm.

### R2023a: Values of the `Method`

name-value argument have changed

The supported values of the `Method`

name-value argument have changed
from `'interventional-kernel'`

and `'conditional-kernel'`

to `'interventional'`

and `'conditional'`

,
respectively.

## MATLAB 명령

다음 MATLAB 명령에 해당하는 링크를 클릭했습니다.

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

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