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ویرایش: نویسندگان: Hermans. Kris, Ltd. Cybellium سری: ناشر: Cybellium سال نشر: 2023 تعداد صفحات: 0 زبان: English فرمت فایل : EPUB (درصورت درخواست کاربر به PDF، EPUB یا AZW3 تبدیل می شود) حجم فایل: 4 مگابایت
در صورت تبدیل فایل کتاب Mastering Neural Networks: A Comprehensive Guide to Learn Neural Networks به فرمت های PDF، EPUB، AZW3، MOBI و یا DJVU می توانید به پشتیبان اطلاع دهید تا فایل مورد نظر را تبدیل نمایند.
توجه داشته باشید کتاب تسلط بر شبکه های عصبی: راهنمای جامع یادگیری شبکه های عصبی نسخه زبان اصلی می باشد و کتاب ترجمه شده به فارسی نمی باشد. وبسایت اینترنشنال لایبرری ارائه دهنده کتاب های زبان اصلی می باشد و هیچ گونه کتاب ترجمه شده یا نوشته شده به فارسی را ارائه نمی دهد.
1. Preface 1.1. Introduction 1.2. How to Use This Book 2. Introduction to Neural Networks 2.1. What Are Neural Networks? 2.2. Historical Background 2.3. Applications 3. Mathematical Basics 3.1. Linear Algebra 3.2. Calculus 3.3. Probability and Statistics 4. Programming Prerequisites 4.1. Python for Machine Learning 4.2. Libraries and Frameworks 4.3. Setting Up Your Development Environment 5. Fundamental Concepts 5.1 Nodes and Layers 5.2 Activation Functions 5.3 Loss Functions 5.4 Backpropagation 6. Data Representation 6.1 Vectors, Matrices, and Tensors: The Building Blocks of Data Representation 6.2 Data Preprocessing: The Unseen Hero of Machine Learning Pipelines 6.3 Feature Engineering: The Art of Extracting Signals from Data 7. Learning and Optimization 7.1 Gradient Descent 7.2 Learning Rate 7.3 Regularization Methods 8. Perceptrons 8.1 Single-layer Perceptrons 8.2 Multi-layer Perceptrons 9. Feedforward Neural Networks 9.1 Architecture of Feedforward Neural Networks 9.2 Training and Learning in Feedforward Neural Networks 9.3 Use-cases and Applications of Feedforward Neural Networks 10. Training Techniques 10.1 Batch and Online Learning 10.2 Adaptive Learning Rates 10.3 Early Stopping 11. Evaluation and Metrics 11.1. Accuracy, Precision, and Recall 11.2. Confusion Matrix 11.3. ROC and AUC 12.1 What is Deep Learning? 12.2 History and Milestones 13. Convolutional Neural Networks (CNNs) 13.1. Convolutional Layers 13.2. Pooling and Normalization 13.3. Applications in Computer Vision 14. Recurrent Neural Networks (RNNs) 14.1. LSTM and GRU Cells 14.2. Sequence-to-Sequence Models 14.3. Applications in Natural Language Processing 15. Generative Models 15.1 Autoencoders 15.2 Generative Adversarial Networks (GANs) 16. Transfer Learning 16.1. What is Transfer Learning? 16.2. Fine-tuning Pretrained Models 17. Attention Mechanisms 17.1. Understanding Attention 17.2. Transformers: The Pioneers of Attention in Modern Neural Networks 18. Graph Neural Networks: Learning from Irregular Structured Data 18.1 Basics of Graph Theory 18.2 Graph Convolution 19. Reinforcement Learning with Neural Networks 19.1. Markov Decision Processes: The Mathematical Backbone of Reinforcement Learning 19.2. Policy and Value Networks: Driving Decision-making in Reinforcement Learning 20. Hybrid Models: Bridging the Gap between Machine Learning Paradigms 20.1 Neuro-Fuzzy Systems: A Synergy of Neural Networks and Fuzzy Logic 20.2 Evolutionary Algorithms: Mimicking Nature\'s Ingenuity in Computation 21. Optimization Techniques 21.1 Momentum and RMSprop: Gearing Up Your Optimization Strategies 21.2 Adam and Nadam: A Deep Dive into Advanced Optimization Techniques 22. Scaling Neural Networks 22.1. Distributed Computing for Neural Networks 22.2 Hardware Acceleration in Neural Networks 23. Ethics in Neural Networks 23.1 Bias and Fairness in Neural Networks 23.2 Explainability and Transparency in Neural Networks 24. Future Trends in Neural Networks and Machine Learning 24.1 Quantum Neural Networks: The Fusion of Quantum Computing and Neural Networks 24.2 Neural Architecture Search: The Quest for Optimal Network Design 25. Industry Applications: Where Neural Networks Meet Real-World Challenges 25.1. Healthcare: Transforming Diagnosis, Treatment, and Monitoring Through Neural Networks 25.2. Finance: Revolutionizing Risk Management, Trading, and Customer Experience with Neural Networks 25.3. Autonomous Vehicles: Navigating the Future with Neural Networks 26. Appendices 26.1. Glossary of Terms 26.2. Frequently Asked Questions 26.3. Useful Libraries and Tools 26.4. Additional Resources and Readings 26.5. About the author