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      代寫DTS101TC Introduction to Neural Networks Coursework

      時間:2024-03-01  來源:  作者: 我要糾錯


      Due: Sunday Apr.21th, 2024 @ 17:00

      Weight: 100%

      Overview

      This coursework is the sole assessment for DTS101TC and aims to evaluate your compre-hension of the module. It consists of three sections: 'Short Answer Question', 'Image Classification Programming', and 'Real-world Application Question'. Each question must be answered as per the instructions provided in the assignment paper. The programming task necessitates the use of Python with PyTorch within a Jupyter Notebook environment, with all output cells saved alongside the code.

      Learning Outcomes

      A.   Develop an understanding of neural networks  –  their architectures, applications  and limitations.

      B.   Demonstrate the ability to implement neural networks with a programming language

      C.   Demonstrate the  ability to provide critical analysis on real-world problems and design suitable solutions based on neural networks.

      Policy

      Please save your assignment in a PDF document, and package your code as a ZIP file. If there are any errors in the program, include debugging information. Submit both the answer sheet and the ZIP code file via Learning Mall Core to the appropriate drop box. Electronic submission is the only method accepted; no hard copies will be accepted.

      You must download your file and check that it is viewable after submission. Documents may become  corrupted  during  the  uploading  process  (e.g.  due  to  slow  internet  connections). However, students themselves are responsible for submitting a functional and correct file for assessments.

      Avoid Plagiarism

      .     Do NOT submit work from others.

      .     Do NOT share code/work with others.

      .     Do NOT copy and paste directly from sources without proper attribution.

      .     Do NOT use paid services to complete assignments for you.

      Q1. Short Answer Questions [40 marks]

      The questions test general knowledge and understanding of central concepts in the course. The answers should be short. Any calculations need to be presented.

      1.  (a.)  Explain the concept of linear separability. [2 marks]

      (b.)  Consider the following data points from two categories: [3 marks]

      X1  : (1, 1)    (2, 2)    (2, 0);

      X2  : (0, 0)    (1, 0)    (0, 1).

      Are they linearly separable? Make a sketch and explain your answer.

      2.  Derive the gradient descent update rule for a target function represented as

      od  = w0 + w1 x1 + ... + wnxn

      Define the squared error function first, considering a provided set of training examples D, where each training example d ∈ D is associated with the target output td. [5 marks]

      3.  (a.)  Draw a carefully labeled diagram of a 3-layer perceptron with 2 input nodes, 3 hidden nodes, 1 output node and bias nodes. [5 marks]

      (b.)  Assuming that the activation functions are simple threshold, f(y) = sign(y), write down the input- output functional form of the overall network in terms of the input-to-hidden weights, wab , and the hidden-to-output weights, ˜(w)bc. [5 marks]

      (c.)  How many distinct weights need to be trained in this network? [2 marks]

      (d.)  Show that it is not possible to train this network with backpropagation. Explain what modification is necessary to allow backpropagation to work. [3 marks]

      (e.)  After you modified the activation function, using the chain rule, calculate expressions for the fol- lowing derivatives

      (i.) ∂J/∂y / (ii.) ∂J/∂˜(w)bc

      where J is the squared error, and t is the target. [5 marks]

      4.  (a.)  Sketch a simple recurrent network, with input x, output y, and recurrent state h. Give the update equations for a simple RNN unit in terms of x, y, and h. Assume it usestanh activation. [5 marks]

      (b.)  Name one example that can be more naturally modeled with RNNs than with feedforward neural networks?  For a dataset X := (xt ,yt )1(k), show how information is propagated by drawing a feed-

      forward neural network that corresponds to the RNN from the figure you sketch for k = 3.  Recall that a feedforward neural network does not contain nodes with a persistent state. [5 marks]

      Q2. Image Classification Programming [40 marks]

      For this  question,  you  will  build your  own image  dataset  and  implement a neural network  by Pytorch.   The question is split in a number of steps.  Every  step  gives you some marks.  Answer the  questions for  each step and include the screenshot of code  outputs  in your answer sheet.

      - Language and Platform Python  (version  3.5  or  above)  with  Pytorch  (newest  version). You  may  use any libraries available on Python platform, such as numpy, scipy, matplotlib, etc.  You need to run the code in the jupyter notebook.

      - Code Submission All of your dataset,  code  (Python files and ipynb files) should be  a package in a single ZIP file,  with  a PDF of your IPython  notebook with  output cells. INCLUDE your dataset in the zip file.

      1. Dataset Build [10 marks]

      Create an image dataset for classification with 120 images ( ‘.jpg’  format), featuring at least two cate- gories. Resize or crop the images to a uniform size of 128 × 128 pixels.  briefly describe the dataset you constructed.

      2. Data Loading [10 marks]

      Load your dataset, randomly split the set into training set (80 images), validation set (20 images) and test set (20 images).

      For the training set, use python commands to display the number of data entries, the number of classes, the number of data entries for each classes, the shape of the image size.  Randomly plot 10 images in the training set with their corresponding labels.

      3. Convolutional Network Model Build [5 marks]

      //  pytorch .network

      class  Network(nn.Module):

      def  __init__ (self,  num_classes=?):

      super(Network,  self).__init__ ()

      self.conv1  =  nn.Conv2d(in_channels=3,  out_channels=5,  kernel_size=3,  padding=1) self.pool  =  nn.MaxPool2d(2,  2)

      self.conv2  =  nn.Conv2d(in_channels=5,  out_channels=10,  kernel_size=3,  padding=1) self.fc1  =  nn.Linear(10  *  5  *  5,  100)

      self.fc2  =  nn.Linear(100,  num_classes)

      def  forward(self,  x):

      x  =  self.pool(F.relu(self.conv1(x)))

      x  =  self.pool(F.relu(self.conv2(x)))

      x  =  x.view(-1,  10  *  5  *  5)

      x  =  self.fc1(x)

      x  =  self.fc2(x)

      return  x

      Implement Network, and complete the form below according to the provided Network. Utilize the symbol ‘-’ to represent sections that do not require completion. What is the difference between this model and AlexNet?

      Layer

      # Filters

      Kernel Size

      Stride

      Padding

      Size of

      Feature Map

      Activation Function

      Input

      Conv1


      ReLU

      MaxPool

      Conv2


      ReLU

      FC1


      -

      -

      -


      ReLU

      FC2


      -

      -

      -

      4. Training [10 marks]

      Train the above Network at least 50 epochs. Explain what the lost function is, which optimizer do you use, and other training parameters, e.g., learning rate, epoch number etc.  Plot the training history, e.g., produce two graphs (one for training and validation losses, one for training and validation accuracy) that each contains 2 curves. Have the model converged?

      5. Test [5 marks]

      Test the trained model on the test set.  Show the accuracy and confusion matrix using python commands.

      Q3. Real-world Application Questions [20 marks]

      Give ONE specific  real-world problem  that  can  be  solved  by  neural networks.   Answer  the  questions  below (answer to  each  question should not  exceed 200 words) .

      1.  Detail the issues raised by this real-world problem, and explain how neural networks maybe used to address these issues. [5 marks]

      2.  Choose an established neural network to tackle the problem.  Specify the chosen network and indicate the paper in which this model was published. Why you choose it? Explain. [5 marks]

      3.  How to collect your training data?  Do you need labeled data to train the network?  If your answer is yes, 請加QQ:99515681  郵箱:99515681@qq.com   WX:codehelp 

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