Interpretable and Explainable Machine Learning for Materials Science and Chemistry
Microsoft (United States) · Massachusetts Institute of Technology · +2 more institutions
Abstract
While the uptake of data-driven approaches for materials science and chemistry is at an exciting, early stage, to realise the true potential of machine learning models for successful scientific discovery, they must have qualities beyond purely predictive power. The predictions and inner workings of models should provide a certain degree of explainability by human experts, permitting the identification of potential model issues or limitations, building trust on model predictions and unveiling unexpected correlations that may lead to scientific insights. In this work, we summarize applications of interpretability and explainability techniques for materials science and chemistry and discuss how these techniques…
Citation impact
- FWCI
- 19.06
- Percentile
- 100%
- References
- 62
Authors
4Topics & keywords
- Interpretability
- Identification (biology)
- Artificial intelligence
- Causation
- Computer science
- Generalization
- Predictive power
- Machine learning