Interpretation of machine learning models using shapley values: application to compound potency and multi-target activity predictions
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Abstract
Difficulties in interpreting machine learning (ML) models and their predictions limit the practical applicability of and confidence in ML in pharmaceutical research. There is a need for agnostic approaches aiding in the interpretation of ML models regardless of their complexity that is also applicable to deep neural network (DNN) architectures and model ensembles. To these ends, the SHapley Additive exPlanations (SHAP) methodology has recently been introduced. The SHAP approach enables the identification and prioritization of features that determine compound classification and activity prediction using any ML model. Herein, we further extend the evaluation of the SHAP methodology by investigating a variant for…
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Authors
2Topics & keywords
Keywords
- Interpretation (philosophy)
- Shapley value
- Computer science
- Artificial intelligence
- Artificial neural network
- Machine learning
- Decision tree
- Limit (mathematics)
UN Sustainable Development Goals
- Peace, Justice and strong institutions
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