Synthetic Data for Deep Learning: Generate Synthetic Data for Decision Making and Applications with Python and R
9781484285862, 9781484285879, 1484285867
Data is the indispensable fuel that drives the decision making of everything from governments, to major corporations, to
Table of contents : Table of Contents About the Authors About the Technical Reviewer Preface Introduction Chapter 1: An Introduction to Synthetic Data What Synthetic Data is? Why is Synthetic Data Important? Synthetic Data for Data Science and Artificial Intelligence Accuracy Problems The Lifecycle of Data Data Collection versus Privacy Data Privacy and Synthetic Data The Bottom Line Synthetic Data and Data Quality Aplications of Synthetic Data Financial Services Manufacturing Healthcare Automotive Robotics Security Social Media Marketing Natural Language Processing Computer Vision Understanding of Visual Scenes Segmentation Problem Summary References Chapter 2: Foundations of Synthetic data How to Generated Fair Synthetic Data? Generating Synthetic Data in A Simple Way Using Video Games to Create Synthetic Data The Synthetic-to-Real Domain Gap Bridging the Gap Domain Transfer Domain Adaptation Domain Randomization Is Real-World Experience Unavoidable? Pretraining Reinforcement Learning Self-Supervised Learning Summary References Chapter 3: Introduction to GANs GANs CTGAN SurfelGAN Cycle GANs SinGAN-Seg MedGAN DCGAN WGAN SeqGAN Conditional GAN BigGAN Summary References Chapter 4: Synthetic Data Generation with R Basic Functions Used in Generating Synthetic Data Creating a Value Vector from a Known Univariate Distribution Vector Generation from a Multi-Levels Categorical Variable Multivariate Multivariate (with correlation) Generating an Artificial Neural Network Using Package “nnet” in R Augmented Data Image Augmentation Using Torch Package Multivariate Imputation Via “mice” Package in R Generating Synthetic Data with the “conjurer” Package in R Creat a Customer Creat a Product Creating Transactions Generating Synthetic Data Generating Synthetic Data with “Synthpop” Package In R Copula t Copula Normal Copula Gaussian Copula Summary References Chapter 5: Synthetic Data Generation with Python Data Generation with Know Distribution Data with Date information Data with Internet information A more complex and comprehensive example Synthetic Data Generation in Regression Problem Gaussian Noise Apply to Regression Model Friedman Functions and Symbolic Regression Make 3d Plot Make3d Plot Synthetic data generation for Classification and Clustering Problems Classification Problems Clustering Problems Generation Tabular Synthetic Data by Applying GANs Synthetic data Generation Summary Reference Index