Enhancing LIME using Neural Decision Trees
arXiv cs.LG / 3/24/2026
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Key Points
- The paper addresses a key limitation of LIME on tabular data: traditional surrogate models like linear regression or decision trees may not faithfully represent complex, non-linear decision boundaries from black-box models.
- It proposes NDT-LIME, which replaces standard surrogates with Neural Decision Trees (NDTs) to better capture hierarchical, structured non-linearities in the local region around each prediction.
- The authors argue that NDTs can yield local explanations that are both more accurate and more meaningful by improving explanation fidelity.
- Experiments on multiple benchmark tabular datasets show consistent improvements in explanation fidelity compared with traditional LIME surrogate approaches.
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