Deep learning : methods and applications / Li Deng, Dong Yu.
Material type: TextSeries: Publisher: Boston, [Massachusetts] : now, 2014Description: xi, 199 pages : illustrations (black and white) 24 cmContent type:- text
- unmediated
- volume
- 9789811052095
- 006.3 23
Item type | Current library | Collection | Call number | Copy number | Status | Date due | Barcode | |
---|---|---|---|---|---|---|---|---|
Text Books | UPM Female Campus Library FR | Computer and Cyber Sciences | 006.31 DLD (Browse shelf(Opens below)) | C.1 | Available | UPM0000005307 | ||
Text Books | UPM Female Campus Library FR | Computer and Cyber Sciences | 006.31 DLD (Browse shelf(Opens below)) | C.2 | Available | UPM0000005308 | ||
Text Books | UPM Male Campus Library FR | Computer and Cyber Sciences | 006.31 DLD (Browse shelf(Opens below)) | C.3 | Available | UPM0000005309 | ||
Text Books | UPM Male Campus Library FR | Computer and Cyber Sciences | 006.31 DLD (Browse shelf(Opens below)) | C.4 | Available | UPM0000005310 | ||
Text Books | UPM Male Campus Library FR | Computer and Cyber Sciences | 006.31 DLD (Browse shelf(Opens below)) | C.5 | Available | UPM0000005311 |
Browsing UPM Female Campus Library shelves, Shelving location: FR Close shelf browser (Hides shelf browser)
006.31 AEI Introduction to machine learning | 006.31 AEI Introduction to machine learning | 006.31 DLD Deep learning : methods and applications | 006.31 DLD Deep learning : methods and applications | 006.31 GAH Hands-on machine learning with Scikit-Learn and TensorFlow : concepts, tools, and techniques to build intelligent systems | 006.31 GID Deep learning | 006.31 GID Deep learning |
Includes bibliographical references.
Endorsement 1. Introduction 2. Some Historical Context of Deep Learning 3. Three Classes of Deep Learning Networks 4. Deep Autoencoders - Unsupervised Learning 5. Pre-Trained Deep Neural Networks - A Hybrid 6. Deep Stacking Networks and Variants - Supervised Learning 7. Selected Applications in Speech and Audio Processing 8. Selected Applications in Language Modeling and Natural Language Processing 9. Selected Applications in Information Retrieval 10. Selected Applications in Object Recognition and Computer Vision 11. Selected Applications in Multimodal and Multi-task Learning 12. Conclusion References
Provides an overview of general deep learning methodology and its applications to a variety of signal and information processing tasks. This is a timely and important book for researchers and students with an interest in deep learning methodology
1 3
There are no comments on this title.