Ensemble machine learning combines the power of multiple machine learning approaches, working together to deliver models that are highly performant and highly accurate. Inside Ensemble Methods for Machine Learning you will find: β’ Methods for classification, regression, and recommendations β’ So
Ensemble Machine Learning: Methods and Applications
β Scribed by Robi Polikar (auth.), Cha Zhang, Yunqian Ma (eds.)
- Publisher
- Springer-Verlag New York
- Year
- 2012
- Tongue
- English
- Leaves
- 331
- Edition
- 1
- Category
- Library
No coin nor oath required. For personal study only.
β¦ Synopsis
It is common wisdom that gathering a variety of views and inputs improves the process of decision making, and, indeed, underpins a democratic society. Dubbed βensemble learningβ by researchers in computational intelligence and machine learning, it is known to improve a decision systemβs robustness and accuracy. Now, fresh developments are allowing researchers to unleash the power of ensemble learning in an increasing range of real-world applications. Ensemble learning algorithms such as βboostingβ and βrandom forestβ facilitate solutions to key computational issues such as face recognition and are now being applied in areas as diverse as object tracking and bioinformatics.
Responding to a shortage of literature dedicated to the topic, this volume offers comprehensive coverage of state-of-the-art ensemble learning techniques, including the random forest skeleton tracking algorithm in the Xbox Kinect sensor, which bypasses the need for game controllers. At once a solid theoretical study and a practical guide, the volume is a windfall for researchers and practitioners alike.
β¦ Table of Contents
Front Matter....Pages i-viii
Ensemble Learning....Pages 1-34
Boosting Algorithms: A Review of Methods, Theory, and Applications....Pages 35-85
Boosting Kernel Estimators....Pages 87-115
Targeted Learning....Pages 117-156
Random Forests....Pages 157-175
Ensemble Learning by Negative Correlation Learning....Pages 177-201
Ensemble NystrΓΆm....Pages 203-223
Object Detection....Pages 225-250
Classifier Boosting for Human Activity Recognition....Pages 251-272
Discriminative Learning for Anatomical Structure Detection and Segmentation....Pages 273-306
Random Forest for Bioinformatics....Pages 307-323
Back Matter....Pages 325-329
β¦ Subjects
Computational Intelligence; Data Mining and Knowledge Discovery; Computer Science, general
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