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I referred to http://savvastjortjoglou.com/intrepretable-machine-learning-nfl-combine.html#Joint-Feature-Contributionsthis this beautiful document to research about joint feature contibutions. But this works only for RandomForest algorithms because of treeinterpreter (does not work with xgboost). Is there a similar way out for XGBoost as well?

Basically what I want to achieve is to find out the joint contributions of all the combination of features towards the prediction. For example if I have a, b and c as my features, I want to know what is the effect of ab, bc and ca towards the prediction result. It is very similar to shap and lime, but for combinations of features.

I referred to http://savvastjortjoglou.com/intrepretable-machine-learning-nfl-combine.html#Joint-Feature-Contributions this beautiful document to research about joint feature contibutions. But this works only for RandomForest algorithms because of treeinterpreter (does not work with xgboost). Is there a similar way out for XGBoost as well?

Basically what I want to achieve is to find out the joint contributions of all the combination of features towards the prediction. For example if I have a, b and c as my features, I want to know what is the effect of ab, bc and ca towards the prediction result. It is very similar to shap and lime, but for combinations of features.

I referred to this beautiful document to research about joint feature contibutions. But this works only for RandomForest algorithms because of treeinterpreter (does not work with xgboost). Is there a similar way out for XGBoost as well?

Basically what I want to achieve is to find out the joint contributions of all the combination of features towards the prediction. For example if I have a, b and c as my features, I want to know what is the effect of ab, bc and ca towards the prediction result. It is very similar to shap and lime, but for combinations of features.

I referred to http://savvastjortjoglou.com/intrepretable-machine-learning-nfl-combine.html#Joint-Feature-Contributions this beautiful document to research about joint feature contibutions. But this works only for RandomForest algorithms because of treeinterpreter treeinterpreter (does not work with xgboostxgboost). Is there a similar way out for XGBoost as well?

Basically what I want to achieve is to find out the joint contributions of all the combination of features towards the prediction. For example if I have aa, bb and cc as my features, I want to know what is the effect of abab, bcbc and caca towards the prediction result. It is very similar to shapshap and limelime, but for combinationcombinations of features.

I referred to http://savvastjortjoglou.com/intrepretable-machine-learning-nfl-combine.html#Joint-Feature-Contributions this beautiful document to research about joint feature contibutions. But this works only for RandomForest algorithms because of treeinterpreter (does not work with xgboost). Is there a similar way out for XGBoost as well?

Basically what I want to achieve is to find out the joint contributions of all the combination of features towards the prediction. For example if I have a, b and c as my features, I want to know what is the effect of ab, bc and ca towards the prediction result. It is very similar to shap and lime but for combination of features.

I referred to http://savvastjortjoglou.com/intrepretable-machine-learning-nfl-combine.html#Joint-Feature-Contributions this beautiful document to research about joint feature contibutions. But this works only for RandomForest algorithms because of treeinterpreter (does not work with xgboost). Is there a similar way out for XGBoost as well?

Basically what I want to achieve is to find out the joint contributions of all the combination of features towards the prediction. For example if I have a, b and c as my features, I want to know what is the effect of ab, bc and ca towards the prediction result. It is very similar to shap and lime, but for combinations of features.

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How to calculate joint feature contribution for XGBoost Classifier in python?

I referred to http://savvastjortjoglou.com/intrepretable-machine-learning-nfl-combine.html#Joint-Feature-Contributions this beautiful document to research about joint feature contibutions. But this works only for RandomForest algorithms because of treeinterpreter (does not work with xgboost). Is there a similar way out for XGBoost as well?

Basically what I want to achieve is to find out the joint contributions of all the combination of features towards the prediction. For example if I have a, b and c as my features, I want to know what is the effect of ab, bc and ca towards the prediction result. It is very similar to shap and lime but for combination of features.