
Introduction to Neural Networks
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Introduction to Neural Networks is a clear, hands-on guide that takes you from decision trees to fully functional neural networks. Written by Brega Joel Othniel and Drogba Ketoura under the supervision of Dr. Cyr Emile M'Lan, the book blends theory with real-world case studies you can reproduce today. Learn the core building blocks-neurons, layers, weights, biases, and activation functions (Sigmoid, Tanh, ReLU)-through intuitive explanations and LaTeX equations. Master training mechanics: forward/backward passes, cross-entropy and MSE loss, gradient descent, regularization, and early stopping....
Introduction to Neural Networks is a clear, hands-on guide that takes you from decision trees to fully functional neural networks. Written by Brega Joel Othniel and Drogba Ketoura under the supervision of Dr. Cyr Emile M'Lan, the book blends theory with real-world case studies you can reproduce today. Learn the core building blocks-neurons, layers, weights, biases, and activation functions (Sigmoid, Tanh, ReLU)-through intuitive explanations and LaTeX equations. Master training mechanics: forward/backward passes, cross-entropy and MSE loss, gradient descent, regularization, and early stopping. Five complete applications show the power of neural networks in action:LSTM-based predictive irrigation that cuts water use by 20-46 % while preserving crop yield. Hard-drive failure forecasting using SMART data and regression models. Mobile-banking adoption analysis in Bangladesh with sensitivity-ranked factors. House-price prediction in Singapore outperforming multiple regression (R² ¿ 0.966). Next-day AAPL stock closing price forecast (MAE $3.64, R² 0.985) using only five daily inputs. All examples include R code (quantmod, neuralnet, NeuralNetTools), datasets (Iris, AAPL 2020-2024), detailed figures, tables, and performance metrics. Whether you are a student, researcher, farmer, data engineer, or financial analyst, this book equips you to build, understand, and deploy neural networks that solve real problems.