Neural Networks and Deep Learning for BE Anna University R21CBCS (Vertical I/VI/VII - CSE/IT, Vertical VI - AI&DS, Vertical IV - CS&BS - CCS355)

Neural Networks and Deep Learning for BE Anna University R21CBCS (Vertical I/VI/VII - CSE/IT, Vertical VI - AI&DS, Vertical IV - CS&BS - CCS355) (Paperback, I.A. Dhotre)

Share

Neural Networks and Deep Learning for BE Anna University R21CBCS (Vertical I/VI/VII - CSE/IT, Vertical VI - AI&DS, Vertical IV - CS&BS - CCS355)  (Paperback, I.A. Dhotre)

Be the first to Review this product
Special price
₹220
275
20% off
i
Available offers
  • Special PriceGet extra 20% off
    T&C
  • Bank Offer5% cashback on Axis Bank Flipkart Debit Card up to ₹750
    T&C
  • Bank Offer5% cashback on Flipkart SBI Credit Card upto ₹4,000 per calendar quarter
    T&C
  • Bank OfferFlat ₹50 off on Flipkart Bajaj Finserv Insta EMI Card. Min Booking Amount: ₹2,500
    T&C
  • Delivery
    Check
    Enter pincode
      Delivery by20 Dec, Saturday
      ?
    View Details
    Author
    Read More
    Highlights
    • Binding: Paperback
    • Publisher: TECHNICAL PUBLICATIONS
    • ISBN: 9789355854476, 9355854476
    • Edition: FIRST, 2023
    • Pages: 164
    Services
    • Cash on Delivery available
      ?
    Seller
    TechnicalPublications
    3.9
    • 7 Days Replacement Policy
      ?
  • See other sellers
  • Description
    Syllabus Neural Networks and Deep Learning - [CCS355] UNIT I INTRODUCTION Neural Networks-Application Scope of Neural Networks - Artificial Neural Network : An Introduction - Evolution of Neural Networks - Basic Models of Artificial Neural Network- Important Terminologies of ANNs - Supervised Learning Network. (Chapter - 1) UNIT II ASSOCIATIVE MEMORY AND UNSUPERVISED LEARNING NETWORKS Training Algorithms for Pattern Association-Autoassociative Memory Network-Heteroassociative Memory Network-Bidirectional Associative Memory (BAM) - Hopfield Networks - Iterative Autoassociative Memory Networks - Temporal Associative Memory Network-Fixed Weight Competitive Nets-Kohonen Self - Organizing Feature Maps-Learning Vector Quantization-Counter propagation Networks-Adaptive Resonance Theory Network. (Chapter - 2) UNIT III THIRD-GENERATION NEURAL NETWORKS Spiking Neural Networks - Convolutional Neural Networks-Deep Learning Neural Networks-Extreme Learning Machine Model - Convolutional Neural Networks : The Convolution Operation - Motivation - Pooling - Variants of the basic Convolution Function - Structured Outputs - Data Types - Efficient Convolution Algorithms - Neuroscientific Basis - Applications : Computer Vision, Image Generation, Image Compression. (Chapter - 3) UNIT IV DEEP FEEDFORWARD NETWORKS History of Deep Learning - A Probabilistic Theory of Deep Learning - Gradient Learning - Chain Rule and Backpropagation - Regularization : Dataset Augmentation - Noise Robustness - Early Stopping, Bagging and Dropout - batch normalization- VC Dimension and Neural Nets. (Chapter - 4) UNIT V RECURRENT NEURAL NETWORKS Recurrent Neural Networks : Introduction - Recursive Neural Networks - Bidirectional RNNs - Deep Recurrent Networks - Applications : Image Generation, Image Compression, Natural Language Processing. Complete Auto encoder, Regularized Autoencoder, Stochastic Encoders and Decoders, Contractive Encoders. (Chapter - 5)
    Read More
    Specifications
    Book Details
    Publication Year
    • 2023
    Book Type
    • TEXT BOOK
    Number of Pages
    • 164
    University Books Details
    Stream
    • ENGINEERING
    Degree/Diploma
    • DEGREE
    Additional Features
    Age Group
    • 18 TO 60 YEARS
    Frequently Bought Together
    Please add at least 1 add-on item to proceed
    Be the first to ask about this product
    Safe and Secure Payments.Easy returns.100% Authentic products.
    You might be interested in
    Medical And Nursing Books
    Min. 50% Off
    Shop Now
    Finance And Accounting Books
    Min. 50% Off
    Shop Now
    Language And Linguistic Books
    Min. 50% Off
    Shop Now
    Politics Books
    Min. 50% Off
    Shop Now
    Back to top