Table of contents : Cover Front Matter Data Science and Knowledge Discovery Using Machine Learning Methods Handling Missing Attribute Values Data Integration Process Automation Using Machine Learning: Issues and Solution Rule Induction Nearest-Neighbor Methods: A Modern Perspective Support Vector Machines Empowering Interpretable, Explainable Machine Learning Using Bayesian Network Classifiers Soft Decision Trees Quality Assessment and Evaluation Criteria in Supervised Learning Trajectory Clustering Analysis Clustering High-Dimensional Data Fuzzy C-Means Clustering: Advances and Challenges (Part II) Clustering in Streams Introduction to Deep Learning Graph Embedding Autoencoders Generative Adversarial Networks Spatial Data Science Multimedia Data Learning Web Mining Mining Temporal Data Cloud Big Data Mining and Analytics: Bringing Greenness and Acceleration in the Cloud Multi-Label Ranking: Mining Multi-Label and Label Ranking Data Reinforcement Learning for Data Science Adversarial Machine Learning Ensembled Transferred Embeddings Data Mining in Medicine Recommender Systems Activity Recognition Social Network Analysis for Disinformation Detection Online Propaganda Detection Interpretable Machine Learning forFinancial Applications Predictive Analytics for Targeting Decisions Machine Learning for the Geosciences Sentiment Analysis for Social Text Human Resources-Based Organizational Data Mining (HRODM): Themes, Trends, Focus, Future Algorithmic Fairness Privacy-Preserving Data Mining (PPDM) Explainable Machine Learning and Visual Knowledge Discovery Visual Analytics and Human Involvement in Machine Learning Explainable Artificial Intelligence (XAI): Motivation, Terminology, and Taxonomy