What is the Hopfield neural network? What is a state transition diagram for Hopfield Neural Network? Explain how to derive it in Hopfield model.
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What is the Hopfield neural network? What is a state transition diagram for Hopfield Neural Network? Explain how to derive it in Hopfield model.
Explain the concept of associative learning in artificial neural networks. How is it related to pattern recognition?
Explain the architecture of Boltzmann machine.
Describe the Boltzmann machine and Boltzmann learning law. What are the limitations of the Boltzmann learning?
Write a short note on i) Stochastic Network ii) Simulated Annealing
Draw and explain Competitive learning Network.
Describe the self-organization map (SOM) algorithm and explain how it can be used for feature mapping.
Explain how ART can be used for character recognition task.
Explain briefly ART network. What are the features of ART network?
Describe the components of a competitive learning neural network and explain how they contribute to the network function.
What is vector quantization? How it is used for pattern clustering?
Explain the role of pooling layer in Convolution neural network.
Explain the concept of transfer learning and its importance in deep learning.
Explain Padding in neural network.
Explain Residual network in Convolution neural network.
Explain the concept of SoftMax regression and its significance in CNN models.
Explain how ANN can be used for the recognition of printed characters.
Describe the Neocognitron model and its significance in the recognition of handwritten characters.
Explain example of pattern recognition in everyday life.
Discuss the application of ANN in pattern classification and recognition of Olympic game symbols.
Explain texture classification and segmentation in ANN.
Discuss the application of ANN in the recognition of consonant vowel (CV) segments.
| Subject Name | Artificial Neural Network |
|---|---|
| Semester | II |
| Pattern Year | 2019 |
| Subject Code | 317531 |
| Max Marks | 70 |
| Total Questions | 8 |
| Duration | 2½ Hours |
| Paper Number | [6003]-544 |
| Academic Year | T.E. |
| Branch Name | Artificial Intelligence and Data Science |
| Exam Type | ENDSEM |
| Exam Session | 2023 May Jun Endsem |
| Watermark | ['CEGP013091', '49.248.216.238 26/06/2023 10:37:48 static-238'] |
How does Hopefield network work and state its limitations.
Exemplify stimulated annealing with its advantages and disadvantages.
Define: i) Pattern association ii) Pattern classification iii) Pattern mapping tasks
Explain in detail stochastic gradient approach.
State basic functional units of ANN for pattern recognition tasks.
What is catastrophic forgetting in neural network?
Why Kohonens network are called self organizing maps?
What is Adaptive Resonance Theory and its applications?
Define following: i) Learning vector quantization ii) Adaptive pattern classification
How to recognize character using ART network?
What is competitive learning in neural network and its limitations?
Explain SOM architecture and its uses.
Why do we prefer Convolution Neural Networks(CNN) Over Artificial Neural Networks(ANN) for image data as input?
Write short note on: i) AlexNET ii) VGG-16 iii) Residual networks
Explain the role of the flattening layer in CNN.
What exactly is a CNN and how does it work?
Define bias and variance. What is bias-variance trade-off?
What do we use a pooling layer in a CNN?
Explain automatic language translation with its three basic rules.
Exemplify recognition of Olympic Games symbols.
What is NET talk?
Exemplify pattern classification?
Write a short note on: i) Texture classification ii) Texture segmentation
Illustrate about Neocognitron?
| Subject Name | Artificial Neural Network |
|---|---|
| Semester | II |
| Pattern Year | 2019 |
| Subject Code | 317531 |
| Max Marks | 70 |
| Total Questions | 8 |
| Duration | 2½ Hours |
| Paper Number | [6262]-58 |
| Academic Year | T.E. |
| Branch Name | Artificial Intelligence and Data Science |
| Exam Type | ENDSEM |
| Exam Session | 2024 May Jun Endsem |
| Watermark | ['CEGP013091', '49.248.216.238 21/05/2024 09:46:31 static-238'] |
Explain the Boltzmann machine and Boltzmann learning law. What are the limitations of the Boltzmann learning?
Explain the concept of associative learning and associative memory in artificial neural networks. How is it related to pattern recognition?
Write a short note on : i) Pattern Classification ii) Pattern mapping Task
What is simulated Annealing? Write and explain Simulated Annealing Algorithm.
Enlist and explain components of Competitive learning Network.
Describe the architecture of a Self-Organizing Map (SOM).Discuss the Competition, Cooperation, and synaptic adaptation process.
What is Vector Quantization. Explain linear vector quantization training algorithm.
State and explain Properties of feature map in detail. Enlist Applications SOM.
Draw and explain the architectures of Convolutional Neural Network.
Write a short note on following CNN Model: i) LeNet-5 ii) AlexNet
Explain the concept of Bias and Variance. Discuss the different combination of Bias and Variance.
Explain any four Deep Learning Framework in detail.
Explain the architecture of NET talk model. Discuss the application of to convert English text to speech.
Discuss the application of ANN in pattern classification and recognition of Olympic game symbols.
Describe the Neocognitron model and its significance in the recognition of handwritten characters.
Explain texture classification and segmentation in ANN.
| Subject Name | Artificial Neural Network |
|---|---|
| Semester | VI |
| Pattern Year | 2019 |
| Subject Code | 317531 |
| Max Marks | 70 |
| Total Questions | 8 |
| Duration | 2½ Hours |
| Paper Number | [6403]-58 |
| Academic Year | T.E. |
| Branch Name | Artificial Intelligence and Data Science |
| Exam Type | ENDSEM |
| Exam Session | 2025 May Jun Endsem |
| Watermark | ['CEGP013091', '49.248.216.237 30/05/2025 09:34:31 static-237'] |
What do you understand by associative memory? Also mention characteristics and applications for the same.
Write short Notes on the following. i) State transition diagram ii) False minima problem
Illustrate the architecture of Boltzmann machine and its learning also its applications.
Explain Boltzmann machine. How does it differ from Hopfield net?
How does simulated annealing algorithm work?
Write short notes on the following. i) Applications of Hopfield Network for Travelling sales man problem ii) Associative Memory
What is competitive learning in neural networks?
Consider an ART-I network with input vector [1,1,0,0], [0,0,1,0], [1,1,1,0] and [1,1,1,1], want to produce clustering with following data, number of inputs n =4, clusters to be formed m = 3 and vigilance parameter ρ = 0.5 , Compute the result of the first iteration and comment on clustering.
Draw the network architecture of ART network. Explain the algorithm for designing the weights of ART network.
Explain ART under the following headings : i) Architecture ii) Working iii) Training iv) Implementation
Draw the architecture of Kohonen Network and explain the algorithm for training the weights of the Network.
Define following : i) Learning vector quantization ii) Adaptive pattern classification
Illustrate with example convolution and max pooling?
What frameworks are used in deep learning? Define any seven.
Explain the softmax regression with respect to hypothesis and cost function and write down its properties.
Exemplify convolution over volume with convolution on RGB images. Also illustrate multiple filters used in it.
Consider a LeNet-5 a convolutional neural network, we want to perform the classification of digits, Write down the complete procedure followed in its architecture.
What is transfer learning models for image classification? What are the 5 types of transfer learning?
Which device recognize a pattern of handwritten or printed characters? And also illustrate it’s working.
Explain texture classification using convolution neural network.
Write short notes on the following: i) NET Talk ii) Texture classification iii) Pattern classification
You have been asked to develop a model of recognizing hand written digits. What are the chosen steps for activity? Explain each with detail.
What is automatic translation? How does it work? What are its benefits?
What is neocognitron neural network and how it is trained?
| Subject Name | Artificial Neural Network |
|---|---|
| Semester | II |
| Pattern Year | 2019 |
| Subject Code | 317531 |
| Max Marks | 70 |
| Total Questions | 8 |
| Duration | 2½ Hours |
| Paper Number | [6180]-70 |
| Academic Year | T.E. |
| Branch Name | Artificial Intelligence and Data Science |
| Exam Type | ENDSEM |
| Exam Session | 2023 Nov Dec Endsem |
| Watermark | ['CEGP013091', '49.248.216.238 14/12/2023 09:49:36 static-238'] |
What is a neural network activation function? State its Types?
Explain architecture of Artificial Neural Network with a neat diagram.
Explain Mc-Culloch & Pitts model with an example.
What are the main differences among the three models of artificial neuron, namely, McCulloch-Pitts, Perceptron and Adaline?
Explain the structure and working of Biological Neural Network?
Differentiate between Biological Neural Network and Artificial Neural Network.
Explain Perceptron Learning Algorithm with an example.
Explain the architecture of Multilayered neural network.
Write and explain the steps of Back Propagation Learning algorithm.
Draw the architecture of Back Propagation Network and explain in detail.
Differentiate between Feed forward and Feedback neural network.
What is Error Correction and how to minimize these errors?
| Subject Name | Artificial Neural Network |
|---|---|
| Semester | II |
| Pattern Year | 2019 |
| Subject Code | 317531 |
| Max Marks | 30 |
| Total Questions | 4 |
| Duration | 1 Hour |
| Paper Number | [6009]-426 |
| Academic Year | T.E. |
| Branch Name | Artificial Intelligence and Data Science |
| Exam Type | INSEM |
| Exam Session | 2023 Feb Insem |
| Watermark | ['CEGP013091', '49.248.216.238 06/04/2023 12:04:38 static-238'] |
What is the role of activation function in neural network? Explain bipolar Sigmoid function in detail.
Why is ReLU the most commonly used Activation Function?
Explain architecture of Artificial Neural Network with a neat diagram.
Draw the structure of the biological neuron and explain working of the same in brief.
Write an algorithm of ADALINE and focus on its upper bound with largest Eigen Value of its correlation matrix.
What is Error Correction and how to minimize these errors?
Explain the architecture of Multilayered neural network.
Define learning and memory. Explain learning algorithms in details.
What is the difference between Forward propagation and Backward Propagation in Neural Networks?
Explain the different types of Gradient Descent in detail.
Write down Perceptron Learning Algorithm for OR function along with calculation of each input vector.
| Subject Name | Artificial Neural Network |
|---|---|
| Semester | II |
| Pattern Year | 2019 |
| Subject Code | 317531 |
| Max Marks | 30 |
| Total Questions | 4 |
| Duration | 1 Hour |
| Paper Number | [6269]-326 |
| Academic Year | T.E. |
| Branch Name | Artificial Intelligence and Data Science |
| Exam Type | INSEM |
| Exam Session | 2024 March Insem |
| Watermark | ['CEGP013091', '49.248.216.238 22/03/2024 10:33:29 static-238'] |
What is neural network topology? Explain any three topologies in detail.
Explain briefly McCulloch Pitt’s (MP) artificial neuron model. Give its limitations.
Distinguish between Biological Neural Network and Artificial Neural Networks.
Discuss briefly the structure and function of a biological neuron.
Obtain the output of the neuron Y for the network shown in figure using activation function as Binary Sigmoidal and Bipolar Sigmoidal.
Write and explain Hebbian learning Algorithm.
What is error correction learning? Explain in detail with diagram.
Differentiate between Feed Forward and Feedback neural network.
Draw the architecture of multilayer feed forward networks. Explain input layer, hidden layer & output layer computations in multilayer feed forward networks.
Explain perceptron learning algorithm and implement OR function using Perceptron network.
| Subject Name | Artificial Neural Network |
|---|---|
| Semester | II |
| Pattern Year | 2019 |
| Subject Code | 317531 |
| Max Marks | 30 |
| Total Questions | 4 |
| Duration | 1 Hour |
| Paper Number | [6410]-426 |
| Academic Year | T.E. |
| Branch Name | Artificial Intelligence and Data Science |
| Exam Type | INSEM |
| Exam Session | 2025 March Insem |
| Watermark | ['CEGP013091', '49.248.216.237 12/03/2025 10:34:32 static-237'] |
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