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9.2 Local Surrogate (LIME) | Interpretable Machine Learning
9 Local Interpretable Model-agnostic Explanations (LIME) | Explanatory Model Analysis
Applied Sciences | Free Full-Text | Specific-Input LIME Explanations for Tabular Data Based on Deep Learning Models
Local Model Interpretation: An Introduction
LIME: An ML model that estimates local variations of a prediction. Learn more here: https://TheAiEdge.io/ | Damien Benveniste, PhD posted on the topic | LinkedIn
Interpreting CNNs using LIME - YouTube
LIME explanations for a tabular dataset, based on "Adult Census" binary... | Download Scientific Diagram
What is LIME? | DataMiningApps
Interpretable Machine Learning
Everything You Need to Know about LIME - Analytics Vidhya
How to Use LIME to Interpret Predictions of ML Models [Python]?
How to Explain Machine Learning Models in Python LIME Library?
Explain Your Model with LIME. Compare SHAP and LIME | by Chris Kuo/Dr. Dataman | Dataman in AI | Medium
Applied Sciences | Free Full-Text | Specific-Input LIME Explanations for Tabular Data Based on Deep Learning Models
Demystifying LIME (XAI) through Leaps | by Analyttica Datalab | Medium
2.4. Black-box interpretation of models: LIME — Tutorial
Interpret Deep Network Predictions on Tabular Data Using LIME - MATLAB & Simulink
Applied Sciences | Free Full-Text | Specific-Input LIME Explanations for Tabular Data Based on Deep Learning Models
Exploring lime on the house prices dataset – verenapraher
Model Predictions with LIME | DataCamp
Decrypting your Machine Learning model using LIME | by Abhishek Sharma | Towards Data Science
Explaining Black-Box Machine Learning Models – Code Part 2: Text classification with LIME | R-bloggers
LIME: How to Interpret Machine Learning Models With Python | by Dario Radečić | Towards Data Science
Interpret Deep Network Predictions on Tabular Data Using LIME - MATLAB & Simulink - MathWorks Deutschland
11.4 Tool: Lime | Machine learning orientation
Interpretability part 3: opening the black box with LIME and SHAP - KDnuggets