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What is Quality of the Explanation

Advanced Methodologies and Technologies in Business Operations and Management
Can be judged by several criteria: accuracy (generalization ability), fidelity (how well the explanation reflects behavior of the model), consistency (similarity of behavior for different models trained on the same task), and comprehensibility (readability and size of the extracted knowledge).
Published in Chapter:
Comprehensible Explanation of Predictive Models
Marko Robnik-Šikonja (University of Ljubljana, Slovenia)
DOI: 10.4018/978-1-5225-7362-3.ch046
Abstract
The most successful prediction models (e.g., SVM, neural networks, or boosting) unfortunately do not provide explanations of their predictions. In many important applications of machine learning, the comprehension of the decision process is of utmost importance and dominates the classification accuracy (e.g., in business and medicine). This chapter introduces general explanation methods that are independent of the prediction model and can be used with all classification models that output probabilities. It explains how the methods work and graphically explains models' decisions for new unlabeled cases. The approach is put in the context of applications from medicine, business, and macro-economy.
Full Text Chapter Download: US $37.50 Add to Cart
More Results
Comprehensible Explanation of Predictive Models
Can be judged by several criteria: accuracy (generalization ability), fidelity (how well the explanation reflects behavior of the model), consistency (similarity of behavior for different models trained on the same task), and comprehensibility (readability and size of the extracted knowledge).
Full Text Chapter Download: US $37.50 Add to Cart
Explaining Predictive Model Decisions
Can be judged by several criteria: accuracy (generalization ability), fidelity (how well the explanation reflects behavior of the model), consistency (similarity of behavior for different models trained on the same task), and comprehensibility (readability and size of the extracted knowledge).
Full Text Chapter Download: US $37.50 Add to Cart
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