Buch, Englisch, 1335 Seiten, Format (B × H): 184 mm x 261 mm, Gewicht: 3655 g
ISBN: 978-1-4899-7685-7
Verlag: Springer Us
Zielgruppe
Research
Autoren/Hrsg.
Fachgebiete
Weitere Infos & Material
Abduction.- Adaptive Resonance Theory.- Anomaly Detection.- Bayes Rule.- Case-Based Reasoning.- Categorical Data Clustering.- Causality.- Clustering from Data Streams.- Complexity in Adaptive Systems.- Complexity of Inductive Inference.- Computational Complexity of Learning.- Confusion Matrix.- Connections Between Inductive Inference and Machine Learning.- Covariance Matrix.- Decision List.- Decision Lists and Decision Trees.- Decision Tree.- Deep Learning.- Density-Based Clustering.- Dimensionality Reduction.- Document Classification.- Dynamic Memory Model.- Empirical Risk Minimization.- Error Rate.- Event Extraction from Media Texts.- Evolutionary Clustering.- Evolutionary Computation in Economics.- Evolutionary Computation in Finance.- Evolutionary Computational Techniques in Marketing.- Evolutionary Feature Selection and Construction.- Evolutionary Kernel Learning.- Evolutionary Robotics.- Expectation Maximization Clustering.- Expectation Propagation.- Feature Construction in Text Mining.- Feature Selection.- Feature Selection in Text Mining.- Gaussian Distribution.- Gaussian Process.- Generative and Discriminative Learning.- Grammatical Inference.- Graphical Models.- Hidden Markov Models.- Inductive Inference.- Inductive Logic Programming.- Inductive Programming.- Inductive Transfer.- Inverse Reinforcement Learning.- Kernel Methods.- K-Means Clustering.- K-Medoids Clustering.- K-Way Spectral Clustering.- Learning Algorithm Evaluation.- Learning Graphical Models.- Learning Models of Biological Sequences.- Learning to Rank.- Learning Using Privileged Information.- Linear Discriminant.- Linear Regression.- Locally Weighted Regression for Control.- Machine Learning and Game Playing.- Manhattan Distance.- Maximum Entropy Models for Natural Language Processing.- Mean Shift.- Metalearning.- Minimum Description Length Principle.- Minimum Message Length.- Mixture Model.- Model Evaluation.- Model Trees.- Multi Label Learning.- Naïve Bayes.- Occam's Razor.- Online Controlled Experiments and A/B Testing.- Online Learning.- Opinion Stream Mining .- PAC Learning.- Partitional Clustering.- Phase Transitions in Machine Learning.