Subject Details
Dept     : AIDS
Sem      : 6
Regul    : 2019
Faculty : N.Ramya Devi
phone  : NIL
E-mail  : snsramyadevi@gmail.com
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Syllabus

UNIT
1
INTRODUCTION

Introduction to machine learning- Linear models (SVMs and Perceptrons, logistic regression)- Intro to Neural Nets: What a shallow network computes- Training a network: loss functions, back propagation and stochastic gradient descent- Neural networks as universal function approximates.

UNIT
2
DEEP NETWORKS

History of Deep Learning- A Probabilistic Theory of Deep Learning- Back propagation and regularization, batch normalization- VC Dimension and Neural Nets-Deep Vs Shallow Networks Convolutional Networks- Generative Adversarial Networks (GAN), Semi-supervised Learning.

UNIT
3
DIMENTIONALITY REDUCTION

Linear (PCA, LDA) and manifolds, metric learning - Auto encoders and dimensionality reduction in networks - Introduction to Convnet - Architectures – AlexNet, VGG, Inception, ResNet -Training a Convnet: weights initialization, batch normalization, hyperparameter optimization.

UNIT
4
OPTIMIZATION AND GENERALIZATION

Optimization in deep learning– Non-convex optimization for deep networks- Stochastic Optimization Generalization in neural networks- Spatial Transformer Networks- Recurrent networks, LSTM - Recurrent Neural Network Language Models- Word-Level RNNs & Deep Reinforcement Learning - Computational & Artificial Neuroscience

UNIT
5
CASE STUDY AND APPLICATIONS

Imagenet- Detection-Audio WaveNet-Natural Language Processing Word2Vec - Joint Detection- BioInformatics- Face Recognition- Scene Understanding- Gathering Image Captions.

Reference Book:

Ian Goodfellow, Yoshua Bengio, Aaron Courville, Deep Learning, MIT Press, 2016. Michael Nielsen, Neural Networks and Deep Learning, Determination Press, 2015.

Text Book:

Cosma Rohilla Shalizi, Advanced Data Analysis from an Elementary Point of View, 2015. Deng & Yu, Deep Learning: Methods and Applications, Now Publishers, 2013.

 

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