Understanding Models Developed with AI: Including Applications with Python and MATLAB Code
Editat de Ömer Faruk Ertugrul, Tahir Çetin Akinci, Musa Yilmazen Limba Engleză Paperback – 28 mai 2026
As the primary issues with the adoption of AI/ML models are reliability, transparency, interpretation of results, and bias (data and algorithm) management, this resource give researchers and developers what they need to be able to not only implement AI models, but also interpret and explain them. This is crucial in industries where decision-making processes must be transparent and understandable.
- Covers the fundamental concepts needed to develop various types of Artificial Intelligence models
- Includes MATLAB and Python code, allowing readers to directly implement AI models and see their applications in real-world scenarios
- Each AI model is thoroughly explained, with a focus on making complex concepts accessible to both beginners and advanced users
- Presents case studies from various industries, demonstrating how AI models can be effectively applied and interpreted in different contexts
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Specificații
ISBN-13: 9780443441639
ISBN-10: 0443441634
Pagini: 322
Dimensiuni: 216 x 276 mm
Greutate: 0.45 kg
Editura: ELSEVIER SCIENCE
ISBN-10: 0443441634
Pagini: 322
Dimensiuni: 216 x 276 mm
Greutate: 0.45 kg
Editura: ELSEVIER SCIENCE
Cuprins
1. Introduction: Understanding AI Models: Overview of AI and the critical importance of model interpretability.
2. Techniques for Model Explanation: Various methods to enhance AI model transparency and interpretability.
3. Feature Selection and Data Augmentation: Techniques for choosing relevant features and enhancing data quality to improve AI models.
4. Understanding Performance Metrics: Key error metrics in AI and how to interpret them to evaluate model performance.
5. Interpreting Classification Models: Understanding and applying classification models with practical examples.
6. Interpreting Regression Models: Techniques for making sense of continuous predictions in regression models.
7. Interpreting Clustering Models: Discovering patterns with clustering techniques and interpreting results.
8. Interpreting Reinforcement Learning Models: Understanding decision-making processes in reinforcement learning.
9. Interpreting Artificial Neural Networks: Techniques for demystifying neural networks and explaining their workings.
10. Interpreting Deep Learning Models: Exploring advanced deep learning techniques with a focus on interpretability.
11. AI Ethics and Responsible Use: Ethical considerations in AI, focusing on the implications of model interpretability.
2. Techniques for Model Explanation: Various methods to enhance AI model transparency and interpretability.
3. Feature Selection and Data Augmentation: Techniques for choosing relevant features and enhancing data quality to improve AI models.
4. Understanding Performance Metrics: Key error metrics in AI and how to interpret them to evaluate model performance.
5. Interpreting Classification Models: Understanding and applying classification models with practical examples.
6. Interpreting Regression Models: Techniques for making sense of continuous predictions in regression models.
7. Interpreting Clustering Models: Discovering patterns with clustering techniques and interpreting results.
8. Interpreting Reinforcement Learning Models: Understanding decision-making processes in reinforcement learning.
9. Interpreting Artificial Neural Networks: Techniques for demystifying neural networks and explaining their workings.
10. Interpreting Deep Learning Models: Exploring advanced deep learning techniques with a focus on interpretability.
11. AI Ethics and Responsible Use: Ethical considerations in AI, focusing on the implications of model interpretability.